CPAP adherence varies by age, geographic location, study finds

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Continuous positive airway pressure (CPAP) adherence varies by age, sex, and date of setup, results from an analysis of national data showed.

Courtesy Dr. Krishna Sundar

However, whether the sources of variability stem from patient factors such as disease severity and socioeconomic status, provider factors, environmental factors, or selection biases in those who are diagnosed with obstructive sleep apnea and treated with CPAP remains to be understood, lead study author Sanjay R. Patel, MD, said at the annual meeting of the Associated Professional Sleep Societies.

In 2015, the American Academy of Sleep Medicine (AASM) endorsed CPAP adherence as a process measure, and the Centers for Medicare and Medicaid Services has used CPAP adherence as an outcome measure to limit long-term coverage of the therapy. It defines CPAP adherence as 4 or more hours of use on greater than 70% of nights in a consecutive 30-day period within the first 90 days. “Strengths of CPAP adherence as an outcome measure include the fact that it is easy to measure and it predicts improvement in sleepiness, quality of life, and blood pressure control,” said Dr. Patel, who directs the University of Pittsburgh’s Center for Sleep and Cardiovascular Outcomes Research. “One issue as to whether we should use CPAP adherence as an outcome-based quality of care measure is, does variability reflect performance at the provider and/or health care system?”

In an effort to describe CPAP adherence rates in general clinical practice as well as sources of variability, Dr. Patel and colleagues evaluated telemonitoring data maintained by Philips Respironics. The study population consisted of 714,270 patients initiated on CPAP therapy between November 2015 and August 2018 who had at least one usage session of CPAP or APAP.

Overall, 90-day adherence to CPAP was 72.5%. Age, sex, and state of residence were all significantly associated with adherence rates (P less than .05). Specifically, adherence rates ranged from 54.8% among those 18-30 years of age to 79.1% among those 61-70 years of age. “There was a plateauing of adherence rates among those in their 70s, and men tended to have a higher adherence level than women across all age groups (73.3% vs. 71.4%, respectively),” he said. “Also, people who got started on CPAP in January had a higher level of adherence than people who got started in May. The differences are relatively small compared to the large age differences, but there was a consistent trend.”


When the researchers carried out age- and sex-adjusted analyses, they observed that adherence rates were lowest in the Northeast and Southwest and highest in the Upper Midwest and Mountain West. Adherence rates ranged from 50.8% in the District of Columbia and 60.5% in New York up to 81.2% in Idaho and 81.9% in South Dakota.

“The question is, is this variability explained by quality measures?” Dr. Patel asked. “We tried to answer this question by seeing whether the variability in adherence by location correlated with other metrics of health care quality.” To accomplish this, they used Dartmouth Atlas, a project that uses Medicare data to understand drivers of health care spending and quality. To understand geographic variability in CPAP adherence, they mapped ZIP codes onto hospital referral regions (HRRs), which are regional health care markets for tertiary medical care. Each HRR has at least one hospital that performs major cardiovascular procedures and neurosurgery. ZIP codes were mapped to 306 HRRs where the majority of residents get their tertiary care.

The researchers observed that Medicare enrollees who saw a primary care physician in the past 12 months had higher rates of adherence, compared with those who did not. “Twenty-three percent of the variance in CPAP adherence across the country can be explained by this measure of having a primary care doctor,” Dr. Patel said. In addition, patients who received care from HRRs located in the middle of the United States had high adherence rates. Top performers were facilities located in Madison, Wis.; Wausau, Wis.; Dubuque, Iowa; and Bloomington, Ill. Poor performers included facilities located in the boroughs of Manhattan and the Bronx, in New York; Muskegon, Mich.; Miami; and Buffalo, N.Y.

Dr. Sanjay R. Patel

“Some of the geographical variability may be due to patient factors such as race, income, and education level,” Dr. Patel said. “That will need to be appropriately addressed in developing a quality of care measure. Nevertheless, some of the geographic variability appears to be related to health care system and provider factors. This variability could be potentially reduced through implementation of a CPAP adherence quality outcome measure.”

Dr. Patel disclosed that he has received grant/research support from Bayer Pharmaceuticals and Philips Respironics, and has served as a consultant to the American Academy of Sleep Medicine.

SOURCE: Patel SR et al. SLEEP 2019, Abstract 0513.

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Continuous positive airway pressure (CPAP) adherence varies by age, sex, and date of setup, results from an analysis of national data showed.

Courtesy Dr. Krishna Sundar

However, whether the sources of variability stem from patient factors such as disease severity and socioeconomic status, provider factors, environmental factors, or selection biases in those who are diagnosed with obstructive sleep apnea and treated with CPAP remains to be understood, lead study author Sanjay R. Patel, MD, said at the annual meeting of the Associated Professional Sleep Societies.

In 2015, the American Academy of Sleep Medicine (AASM) endorsed CPAP adherence as a process measure, and the Centers for Medicare and Medicaid Services has used CPAP adherence as an outcome measure to limit long-term coverage of the therapy. It defines CPAP adherence as 4 or more hours of use on greater than 70% of nights in a consecutive 30-day period within the first 90 days. “Strengths of CPAP adherence as an outcome measure include the fact that it is easy to measure and it predicts improvement in sleepiness, quality of life, and blood pressure control,” said Dr. Patel, who directs the University of Pittsburgh’s Center for Sleep and Cardiovascular Outcomes Research. “One issue as to whether we should use CPAP adherence as an outcome-based quality of care measure is, does variability reflect performance at the provider and/or health care system?”

In an effort to describe CPAP adherence rates in general clinical practice as well as sources of variability, Dr. Patel and colleagues evaluated telemonitoring data maintained by Philips Respironics. The study population consisted of 714,270 patients initiated on CPAP therapy between November 2015 and August 2018 who had at least one usage session of CPAP or APAP.

Overall, 90-day adherence to CPAP was 72.5%. Age, sex, and state of residence were all significantly associated with adherence rates (P less than .05). Specifically, adherence rates ranged from 54.8% among those 18-30 years of age to 79.1% among those 61-70 years of age. “There was a plateauing of adherence rates among those in their 70s, and men tended to have a higher adherence level than women across all age groups (73.3% vs. 71.4%, respectively),” he said. “Also, people who got started on CPAP in January had a higher level of adherence than people who got started in May. The differences are relatively small compared to the large age differences, but there was a consistent trend.”


When the researchers carried out age- and sex-adjusted analyses, they observed that adherence rates were lowest in the Northeast and Southwest and highest in the Upper Midwest and Mountain West. Adherence rates ranged from 50.8% in the District of Columbia and 60.5% in New York up to 81.2% in Idaho and 81.9% in South Dakota.

“The question is, is this variability explained by quality measures?” Dr. Patel asked. “We tried to answer this question by seeing whether the variability in adherence by location correlated with other metrics of health care quality.” To accomplish this, they used Dartmouth Atlas, a project that uses Medicare data to understand drivers of health care spending and quality. To understand geographic variability in CPAP adherence, they mapped ZIP codes onto hospital referral regions (HRRs), which are regional health care markets for tertiary medical care. Each HRR has at least one hospital that performs major cardiovascular procedures and neurosurgery. ZIP codes were mapped to 306 HRRs where the majority of residents get their tertiary care.

The researchers observed that Medicare enrollees who saw a primary care physician in the past 12 months had higher rates of adherence, compared with those who did not. “Twenty-three percent of the variance in CPAP adherence across the country can be explained by this measure of having a primary care doctor,” Dr. Patel said. In addition, patients who received care from HRRs located in the middle of the United States had high adherence rates. Top performers were facilities located in Madison, Wis.; Wausau, Wis.; Dubuque, Iowa; and Bloomington, Ill. Poor performers included facilities located in the boroughs of Manhattan and the Bronx, in New York; Muskegon, Mich.; Miami; and Buffalo, N.Y.

Dr. Sanjay R. Patel

“Some of the geographical variability may be due to patient factors such as race, income, and education level,” Dr. Patel said. “That will need to be appropriately addressed in developing a quality of care measure. Nevertheless, some of the geographic variability appears to be related to health care system and provider factors. This variability could be potentially reduced through implementation of a CPAP adherence quality outcome measure.”

Dr. Patel disclosed that he has received grant/research support from Bayer Pharmaceuticals and Philips Respironics, and has served as a consultant to the American Academy of Sleep Medicine.

SOURCE: Patel SR et al. SLEEP 2019, Abstract 0513.

Continuous positive airway pressure (CPAP) adherence varies by age, sex, and date of setup, results from an analysis of national data showed.

Courtesy Dr. Krishna Sundar

However, whether the sources of variability stem from patient factors such as disease severity and socioeconomic status, provider factors, environmental factors, or selection biases in those who are diagnosed with obstructive sleep apnea and treated with CPAP remains to be understood, lead study author Sanjay R. Patel, MD, said at the annual meeting of the Associated Professional Sleep Societies.

In 2015, the American Academy of Sleep Medicine (AASM) endorsed CPAP adherence as a process measure, and the Centers for Medicare and Medicaid Services has used CPAP adherence as an outcome measure to limit long-term coverage of the therapy. It defines CPAP adherence as 4 or more hours of use on greater than 70% of nights in a consecutive 30-day period within the first 90 days. “Strengths of CPAP adherence as an outcome measure include the fact that it is easy to measure and it predicts improvement in sleepiness, quality of life, and blood pressure control,” said Dr. Patel, who directs the University of Pittsburgh’s Center for Sleep and Cardiovascular Outcomes Research. “One issue as to whether we should use CPAP adherence as an outcome-based quality of care measure is, does variability reflect performance at the provider and/or health care system?”

In an effort to describe CPAP adherence rates in general clinical practice as well as sources of variability, Dr. Patel and colleagues evaluated telemonitoring data maintained by Philips Respironics. The study population consisted of 714,270 patients initiated on CPAP therapy between November 2015 and August 2018 who had at least one usage session of CPAP or APAP.

Overall, 90-day adherence to CPAP was 72.5%. Age, sex, and state of residence were all significantly associated with adherence rates (P less than .05). Specifically, adherence rates ranged from 54.8% among those 18-30 years of age to 79.1% among those 61-70 years of age. “There was a plateauing of adherence rates among those in their 70s, and men tended to have a higher adherence level than women across all age groups (73.3% vs. 71.4%, respectively),” he said. “Also, people who got started on CPAP in January had a higher level of adherence than people who got started in May. The differences are relatively small compared to the large age differences, but there was a consistent trend.”


When the researchers carried out age- and sex-adjusted analyses, they observed that adherence rates were lowest in the Northeast and Southwest and highest in the Upper Midwest and Mountain West. Adherence rates ranged from 50.8% in the District of Columbia and 60.5% in New York up to 81.2% in Idaho and 81.9% in South Dakota.

“The question is, is this variability explained by quality measures?” Dr. Patel asked. “We tried to answer this question by seeing whether the variability in adherence by location correlated with other metrics of health care quality.” To accomplish this, they used Dartmouth Atlas, a project that uses Medicare data to understand drivers of health care spending and quality. To understand geographic variability in CPAP adherence, they mapped ZIP codes onto hospital referral regions (HRRs), which are regional health care markets for tertiary medical care. Each HRR has at least one hospital that performs major cardiovascular procedures and neurosurgery. ZIP codes were mapped to 306 HRRs where the majority of residents get their tertiary care.

The researchers observed that Medicare enrollees who saw a primary care physician in the past 12 months had higher rates of adherence, compared with those who did not. “Twenty-three percent of the variance in CPAP adherence across the country can be explained by this measure of having a primary care doctor,” Dr. Patel said. In addition, patients who received care from HRRs located in the middle of the United States had high adherence rates. Top performers were facilities located in Madison, Wis.; Wausau, Wis.; Dubuque, Iowa; and Bloomington, Ill. Poor performers included facilities located in the boroughs of Manhattan and the Bronx, in New York; Muskegon, Mich.; Miami; and Buffalo, N.Y.

Dr. Sanjay R. Patel

“Some of the geographical variability may be due to patient factors such as race, income, and education level,” Dr. Patel said. “That will need to be appropriately addressed in developing a quality of care measure. Nevertheless, some of the geographic variability appears to be related to health care system and provider factors. This variability could be potentially reduced through implementation of a CPAP adherence quality outcome measure.”

Dr. Patel disclosed that he has received grant/research support from Bayer Pharmaceuticals and Philips Respironics, and has served as a consultant to the American Academy of Sleep Medicine.

SOURCE: Patel SR et al. SLEEP 2019, Abstract 0513.

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AASM hypopnea definition best for detecting OSA cases, study finds

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Wed, 05/06/2020 - 12:27

 

– The prevalence of obstructive sleep apnea (OSA) is substantially lower using the Centers for Medicare & Medicaid Services apnea-hypopnea index definition of OSA than using the one recommended by the American Academy of Sleep Medicine.

Doug Brunk/MDedge News
Dr. Stuart F. Quan

In addition, among individuals who did not have OSA using the CMS definition but met criteria using the AASM definition of OSA, an apnea-hypopnea index (AHI) of five events or greater per hour was associated with a greater likelihood of having hypertension.

The findings come from an analysis which set out to assess the relationship between OSA and hypertension using the AASM-recommended definition and the 2018 American Heart Association/American College of Cardiology blood pressure guidelines, and to determine if there is an association between hypertension and OSA among individuals who did not meet the CMS definition of OSA.

“Given the substantial morbidity associated with hypertension, these results suggest that universal adoption of the AASM AHI definition would be a reasonable step in ensuring appropriate diagnosis and treatment of OSA,” lead study author Stuart F. Quan, MD, said at the annual meeting of the Associated Professional Sleep Societies.

Dr. Quan, of the division of sleep and circadian disorders at Brigham and Women’s Hospital in Boston, noted that a number of studies have demonstrated that OSA is a risk factor for hypertension and a variety of other medical conditions. “Rightly or wrongly, the most important metric for determining whether OSA is present and determining its severity, is the apnea-hypopnea index,” he said. “It’s the most common metric used for determining OSA severity, and mostly importantly, Medicare and some other insurers use this metric to determine whether a person is eligible for treatment. If a person falls above the line, they can get continuous positive airway pressure, for example. If they’re below the line, that’s too bad; they don’t have OSA insofar as the insurance company is concerned.”

There is no controversy as to what constitutes apnea, he continued, but some disagreement exists on the definition of hypopnea. The AASM recommends using a 3% oxygen desaturation or an arousal, while Medicare uses a definition of hypopnea requiring only a 4% oxygen desaturation. Hypertension definitions have changed recently as well. Before 2018, the definition of hypertension was greater than 140/90 mm Hg for people younger than age 65 years and 150/80 mm Hg for people age 65 years and older. In 2018, the AHA and ACC changed the hypertension guidelines, defining normal as less than 120/80 mm Hg.

“Previous studies linking OSA and hypertension used older definitions, but to my knowledge there are no current studies examining the association between OSA and hypertension using new definitions,” Dr. Quan said.



He reported on results from an analysis of 6,307 participants in the Sleep Heart Health Study who underwent home polysomnography. Their AHI defined by a 3% oxygen desaturation or an arousal was classified into four categories of OSA severity: fewer than 5 events per hour (normal sleep), 5-14 events per hour (mild sleep apnea), 15-29 events per hour (moderate sleep apnea), and 30 or more events per hour (severe sleep apnea).

The researchers used three definitions of dichotomous BP elevation: elevated (greater than 120/80 mm Hg or use of hypertension medications [meds]), stage 1 (greater than 130/80 mm Hg or meds), or stage 2 (greater than 140/90 mm Hg or meds). They used logistic regression to assess the association between elevated BP and/or hypertension and OSA severity, controlling for demographics and body mass index. Additional analyses utilized multiple linear regression to determine the relationship between natural log AHI and systolic and diastolic BP, controlling for the same covariates.

For all definitions of elevated BP, increasing OSA severity was associated with greater likelihood of an elevated or hypertensive status in fully adjusted models. Specifically, the odds ratios among those with elevated BP was 1.30 (95% confidence interval, 1.10-1.54), 1.41 (95% CI, 1.15-1.72), and 1.69 (95% CI, 1.32-2.17) for mild, moderate, and severe sleep apnea, respectively. The ORs among those with stage 1 BP was 1.27 (95% CI, 1.09-1.49), 1.36 (95% CI, 1.13-1.63), 1.58 (95% CI, 1.27-1.97) for mild, moderate, and severe sleep apnea, while the OR among those with stage 2 BP was 1.07 (95% CI, 0.92-1.26), 1.22 (95% CI, 1.02-1.45), 1.38 (95% CI, 1.12-1.69) for mild, moderate, and severe sleep apnea. Linear regression found that AHI was associated with both systolic and diastolic BP in fully adjusted models.

“Using the AASM and CMS AHI definitions, increasing severity of AHI is associated with greater likelihood of having an elevated blood pressure or hypertension,” Dr. Quan concluded. “However, the prevalence of OSA was substantially lower using the CMS definition of OSA. In fact, 218 of these individuals had moderate to severe OSA when the AASM definition was applied.”

He characterized the study as “a practical analysis, a way to help identify patients who might benefit from treatment. This is not the issue of whether the science of 3% AHI is better than 4%.”

The Sleep Heart Health Study was supported by the National Heart, Lung, and Blood Institute. Dr. Quan reported that he helped draft the AASM AHI recommendations but had no other relevant disclosures.

SOURCE: Quan SF et al. SLEEP 2019, Abstract 0501.

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– The prevalence of obstructive sleep apnea (OSA) is substantially lower using the Centers for Medicare & Medicaid Services apnea-hypopnea index definition of OSA than using the one recommended by the American Academy of Sleep Medicine.

Doug Brunk/MDedge News
Dr. Stuart F. Quan

In addition, among individuals who did not have OSA using the CMS definition but met criteria using the AASM definition of OSA, an apnea-hypopnea index (AHI) of five events or greater per hour was associated with a greater likelihood of having hypertension.

The findings come from an analysis which set out to assess the relationship between OSA and hypertension using the AASM-recommended definition and the 2018 American Heart Association/American College of Cardiology blood pressure guidelines, and to determine if there is an association between hypertension and OSA among individuals who did not meet the CMS definition of OSA.

“Given the substantial morbidity associated with hypertension, these results suggest that universal adoption of the AASM AHI definition would be a reasonable step in ensuring appropriate diagnosis and treatment of OSA,” lead study author Stuart F. Quan, MD, said at the annual meeting of the Associated Professional Sleep Societies.

Dr. Quan, of the division of sleep and circadian disorders at Brigham and Women’s Hospital in Boston, noted that a number of studies have demonstrated that OSA is a risk factor for hypertension and a variety of other medical conditions. “Rightly or wrongly, the most important metric for determining whether OSA is present and determining its severity, is the apnea-hypopnea index,” he said. “It’s the most common metric used for determining OSA severity, and mostly importantly, Medicare and some other insurers use this metric to determine whether a person is eligible for treatment. If a person falls above the line, they can get continuous positive airway pressure, for example. If they’re below the line, that’s too bad; they don’t have OSA insofar as the insurance company is concerned.”

There is no controversy as to what constitutes apnea, he continued, but some disagreement exists on the definition of hypopnea. The AASM recommends using a 3% oxygen desaturation or an arousal, while Medicare uses a definition of hypopnea requiring only a 4% oxygen desaturation. Hypertension definitions have changed recently as well. Before 2018, the definition of hypertension was greater than 140/90 mm Hg for people younger than age 65 years and 150/80 mm Hg for people age 65 years and older. In 2018, the AHA and ACC changed the hypertension guidelines, defining normal as less than 120/80 mm Hg.

“Previous studies linking OSA and hypertension used older definitions, but to my knowledge there are no current studies examining the association between OSA and hypertension using new definitions,” Dr. Quan said.



He reported on results from an analysis of 6,307 participants in the Sleep Heart Health Study who underwent home polysomnography. Their AHI defined by a 3% oxygen desaturation or an arousal was classified into four categories of OSA severity: fewer than 5 events per hour (normal sleep), 5-14 events per hour (mild sleep apnea), 15-29 events per hour (moderate sleep apnea), and 30 or more events per hour (severe sleep apnea).

The researchers used three definitions of dichotomous BP elevation: elevated (greater than 120/80 mm Hg or use of hypertension medications [meds]), stage 1 (greater than 130/80 mm Hg or meds), or stage 2 (greater than 140/90 mm Hg or meds). They used logistic regression to assess the association between elevated BP and/or hypertension and OSA severity, controlling for demographics and body mass index. Additional analyses utilized multiple linear regression to determine the relationship between natural log AHI and systolic and diastolic BP, controlling for the same covariates.

For all definitions of elevated BP, increasing OSA severity was associated with greater likelihood of an elevated or hypertensive status in fully adjusted models. Specifically, the odds ratios among those with elevated BP was 1.30 (95% confidence interval, 1.10-1.54), 1.41 (95% CI, 1.15-1.72), and 1.69 (95% CI, 1.32-2.17) for mild, moderate, and severe sleep apnea, respectively. The ORs among those with stage 1 BP was 1.27 (95% CI, 1.09-1.49), 1.36 (95% CI, 1.13-1.63), 1.58 (95% CI, 1.27-1.97) for mild, moderate, and severe sleep apnea, while the OR among those with stage 2 BP was 1.07 (95% CI, 0.92-1.26), 1.22 (95% CI, 1.02-1.45), 1.38 (95% CI, 1.12-1.69) for mild, moderate, and severe sleep apnea. Linear regression found that AHI was associated with both systolic and diastolic BP in fully adjusted models.

“Using the AASM and CMS AHI definitions, increasing severity of AHI is associated with greater likelihood of having an elevated blood pressure or hypertension,” Dr. Quan concluded. “However, the prevalence of OSA was substantially lower using the CMS definition of OSA. In fact, 218 of these individuals had moderate to severe OSA when the AASM definition was applied.”

He characterized the study as “a practical analysis, a way to help identify patients who might benefit from treatment. This is not the issue of whether the science of 3% AHI is better than 4%.”

The Sleep Heart Health Study was supported by the National Heart, Lung, and Blood Institute. Dr. Quan reported that he helped draft the AASM AHI recommendations but had no other relevant disclosures.

SOURCE: Quan SF et al. SLEEP 2019, Abstract 0501.

 

– The prevalence of obstructive sleep apnea (OSA) is substantially lower using the Centers for Medicare & Medicaid Services apnea-hypopnea index definition of OSA than using the one recommended by the American Academy of Sleep Medicine.

Doug Brunk/MDedge News
Dr. Stuart F. Quan

In addition, among individuals who did not have OSA using the CMS definition but met criteria using the AASM definition of OSA, an apnea-hypopnea index (AHI) of five events or greater per hour was associated with a greater likelihood of having hypertension.

The findings come from an analysis which set out to assess the relationship between OSA and hypertension using the AASM-recommended definition and the 2018 American Heart Association/American College of Cardiology blood pressure guidelines, and to determine if there is an association between hypertension and OSA among individuals who did not meet the CMS definition of OSA.

“Given the substantial morbidity associated with hypertension, these results suggest that universal adoption of the AASM AHI definition would be a reasonable step in ensuring appropriate diagnosis and treatment of OSA,” lead study author Stuart F. Quan, MD, said at the annual meeting of the Associated Professional Sleep Societies.

Dr. Quan, of the division of sleep and circadian disorders at Brigham and Women’s Hospital in Boston, noted that a number of studies have demonstrated that OSA is a risk factor for hypertension and a variety of other medical conditions. “Rightly or wrongly, the most important metric for determining whether OSA is present and determining its severity, is the apnea-hypopnea index,” he said. “It’s the most common metric used for determining OSA severity, and mostly importantly, Medicare and some other insurers use this metric to determine whether a person is eligible for treatment. If a person falls above the line, they can get continuous positive airway pressure, for example. If they’re below the line, that’s too bad; they don’t have OSA insofar as the insurance company is concerned.”

There is no controversy as to what constitutes apnea, he continued, but some disagreement exists on the definition of hypopnea. The AASM recommends using a 3% oxygen desaturation or an arousal, while Medicare uses a definition of hypopnea requiring only a 4% oxygen desaturation. Hypertension definitions have changed recently as well. Before 2018, the definition of hypertension was greater than 140/90 mm Hg for people younger than age 65 years and 150/80 mm Hg for people age 65 years and older. In 2018, the AHA and ACC changed the hypertension guidelines, defining normal as less than 120/80 mm Hg.

“Previous studies linking OSA and hypertension used older definitions, but to my knowledge there are no current studies examining the association between OSA and hypertension using new definitions,” Dr. Quan said.



He reported on results from an analysis of 6,307 participants in the Sleep Heart Health Study who underwent home polysomnography. Their AHI defined by a 3% oxygen desaturation or an arousal was classified into four categories of OSA severity: fewer than 5 events per hour (normal sleep), 5-14 events per hour (mild sleep apnea), 15-29 events per hour (moderate sleep apnea), and 30 or more events per hour (severe sleep apnea).

The researchers used three definitions of dichotomous BP elevation: elevated (greater than 120/80 mm Hg or use of hypertension medications [meds]), stage 1 (greater than 130/80 mm Hg or meds), or stage 2 (greater than 140/90 mm Hg or meds). They used logistic regression to assess the association between elevated BP and/or hypertension and OSA severity, controlling for demographics and body mass index. Additional analyses utilized multiple linear regression to determine the relationship between natural log AHI and systolic and diastolic BP, controlling for the same covariates.

For all definitions of elevated BP, increasing OSA severity was associated with greater likelihood of an elevated or hypertensive status in fully adjusted models. Specifically, the odds ratios among those with elevated BP was 1.30 (95% confidence interval, 1.10-1.54), 1.41 (95% CI, 1.15-1.72), and 1.69 (95% CI, 1.32-2.17) for mild, moderate, and severe sleep apnea, respectively. The ORs among those with stage 1 BP was 1.27 (95% CI, 1.09-1.49), 1.36 (95% CI, 1.13-1.63), 1.58 (95% CI, 1.27-1.97) for mild, moderate, and severe sleep apnea, while the OR among those with stage 2 BP was 1.07 (95% CI, 0.92-1.26), 1.22 (95% CI, 1.02-1.45), 1.38 (95% CI, 1.12-1.69) for mild, moderate, and severe sleep apnea. Linear regression found that AHI was associated with both systolic and diastolic BP in fully adjusted models.

“Using the AASM and CMS AHI definitions, increasing severity of AHI is associated with greater likelihood of having an elevated blood pressure or hypertension,” Dr. Quan concluded. “However, the prevalence of OSA was substantially lower using the CMS definition of OSA. In fact, 218 of these individuals had moderate to severe OSA when the AASM definition was applied.”

He characterized the study as “a practical analysis, a way to help identify patients who might benefit from treatment. This is not the issue of whether the science of 3% AHI is better than 4%.”

The Sleep Heart Health Study was supported by the National Heart, Lung, and Blood Institute. Dr. Quan reported that he helped draft the AASM AHI recommendations but had no other relevant disclosures.

SOURCE: Quan SF et al. SLEEP 2019, Abstract 0501.

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Sleepiest OSA patients have worse CV outcomes

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– Patients with obstructive sleep apnea who complain of feeling tired when they wake up, being sleepy during the day, and have a high score on the Epworth Sleepiness Scale face an increased risk for cardiovascular disease, results from a population-based analysis suggest.

Doug Brunk/MDedge News
Dr. Diego R. Mazzotti

“OSA is a highly heterogeneous disease, with multiple clinical presentations and consequences,” the study’s first author, Diego R. Mazzotti, PhD, said at the annual meeting of the Associated Professional Sleep Societies. “These patients also have diverse comorbidities, and there are arbitrary severity definitions and variable therapeutic responses. It’s difficult to lump these patients together.”

Symptom subtypes of OSA were originally described in the Icelandic Sleep Apnea Cohort, and defined as excessively sleepy, minimally symptomatic, and disturbed sleep (Eur Respir J. 2014; 44[6]:1600-7). These distinct clusters were identified based on symptom experiences and the existence of major comorbidities. “This concept is more popular today, trying to identify symptom clusters, or groups of individuals, that share similar polysomnographic data, and then compare differences in prevalence or incidence of cardiovascular disease,” said Dr. Mazzotti, a research associate at the University of Pennsylvania, Philadelphia. “That’s a concept that needs to be moving forward.”

Dr. Mazzotti and colleagues set out to determine if OSA symptom subtypes are present in the Sleep Heart Health Study, a multicenter, prospective, community-based cohort of individuals aged 40 years and older designed to assess the cardiovascular (CV) consequences of OSA. They also wanted to know if there is additional evidence of the relevance of OSA symptom subtypes, particularly with respect to cardiovascular disease .

Participant-reported symptoms, such as difficulty falling and staying asleep, snoring, fatigue, drowsy driving and daytime sleepiness, and responses to the Epworth Sleepiness Scale were used to determine the patient’s subtype. Assessments including questionnaires and in-home polysomnography were conducted at baseline (between 1995 and 1998) and follow-up (between 2001 and 2003), while CV outcomes were assessed until the end of follow-up (between 2008 and 2011).

In all, 1,207 patients from the Sleep Heart Health Study met criteria for moderate to severe OSA (apnea-hypopnea index, or AHI, of 15 or greater) and were included in the final analysis. They were followed for a mean of 12 years. Based on the clustering of symptoms, the researchers identified four OSA symptom subtypes: disturbed sleep (12%), minimally symptomatic (33%), excessively sleepy (17%), and moderately sleepy (38%) – proportions that were similar to those observed in prior studies.



The disturbed sleep subtype presented with increased prevalence of “insomnialike” symptoms, such as difficulty initiating or maintaining sleep, according to Dr. Mazzotti. “On the other hand, the excessively sleepy subtype presented with a very high prevalence of several symptoms related to excessive daytime sleepiness, while the moderately sleepy showed a moderately high prevalence of such symptoms, but not as much when compared to the excessively sleepy subtype,” he explained. “Finally, the minimally symptomatic subtype was found to have the lowest prevalence of all investigated symptoms, suggesting that these patients have low symptom burden. They do not complain as much, even though they have moderate-to-severe OSA.”

Next, Dr. Mazzotti and colleagues used Kaplan-Meier survival analysis and Cox proportional hazards models to evaluate whether subtypes were associated with incident coronary heart disease (CHD), heart failure, and CV disease, including CV mortality. Similar analyses were performed comparing each symptom subtype with 2,830 individuals without OSA (AHI less than 5).

Compared with other subtypes, the excessively sleepy group had a more than threefold increased odds of prevalent heart failure, after adjustment for other CV risk factors. They also had a 1.7- to 2.3-fold increased risk for incident CV disease (P less than .001), CHD (P = .015) and heart failure (P = 0.018), after adjustment for other CV risk factors.

“Compared to individuals without OSA, the excessively sleepy subtype is the only subtype with increased risk of incident CV disease and CHD,” Dr. Mazzotti said. “It is possible that excessively sleepy OSA patients are more likely to benefit from CPAP therapy in preventing CV disease.” These results were published online earlier this year (Am J Respir Crit Care Med. 2019 Feb 15. doi: 10.1164/rccm.201808-1509OC).

Dr. Mazzotti reported having no financial disclosures.

SOURCE: Mazzotti D et al. SLEEP 2019, Abstract 0586.

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– Patients with obstructive sleep apnea who complain of feeling tired when they wake up, being sleepy during the day, and have a high score on the Epworth Sleepiness Scale face an increased risk for cardiovascular disease, results from a population-based analysis suggest.

Doug Brunk/MDedge News
Dr. Diego R. Mazzotti

“OSA is a highly heterogeneous disease, with multiple clinical presentations and consequences,” the study’s first author, Diego R. Mazzotti, PhD, said at the annual meeting of the Associated Professional Sleep Societies. “These patients also have diverse comorbidities, and there are arbitrary severity definitions and variable therapeutic responses. It’s difficult to lump these patients together.”

Symptom subtypes of OSA were originally described in the Icelandic Sleep Apnea Cohort, and defined as excessively sleepy, minimally symptomatic, and disturbed sleep (Eur Respir J. 2014; 44[6]:1600-7). These distinct clusters were identified based on symptom experiences and the existence of major comorbidities. “This concept is more popular today, trying to identify symptom clusters, or groups of individuals, that share similar polysomnographic data, and then compare differences in prevalence or incidence of cardiovascular disease,” said Dr. Mazzotti, a research associate at the University of Pennsylvania, Philadelphia. “That’s a concept that needs to be moving forward.”

Dr. Mazzotti and colleagues set out to determine if OSA symptom subtypes are present in the Sleep Heart Health Study, a multicenter, prospective, community-based cohort of individuals aged 40 years and older designed to assess the cardiovascular (CV) consequences of OSA. They also wanted to know if there is additional evidence of the relevance of OSA symptom subtypes, particularly with respect to cardiovascular disease .

Participant-reported symptoms, such as difficulty falling and staying asleep, snoring, fatigue, drowsy driving and daytime sleepiness, and responses to the Epworth Sleepiness Scale were used to determine the patient’s subtype. Assessments including questionnaires and in-home polysomnography were conducted at baseline (between 1995 and 1998) and follow-up (between 2001 and 2003), while CV outcomes were assessed until the end of follow-up (between 2008 and 2011).

In all, 1,207 patients from the Sleep Heart Health Study met criteria for moderate to severe OSA (apnea-hypopnea index, or AHI, of 15 or greater) and were included in the final analysis. They were followed for a mean of 12 years. Based on the clustering of symptoms, the researchers identified four OSA symptom subtypes: disturbed sleep (12%), minimally symptomatic (33%), excessively sleepy (17%), and moderately sleepy (38%) – proportions that were similar to those observed in prior studies.



The disturbed sleep subtype presented with increased prevalence of “insomnialike” symptoms, such as difficulty initiating or maintaining sleep, according to Dr. Mazzotti. “On the other hand, the excessively sleepy subtype presented with a very high prevalence of several symptoms related to excessive daytime sleepiness, while the moderately sleepy showed a moderately high prevalence of such symptoms, but not as much when compared to the excessively sleepy subtype,” he explained. “Finally, the minimally symptomatic subtype was found to have the lowest prevalence of all investigated symptoms, suggesting that these patients have low symptom burden. They do not complain as much, even though they have moderate-to-severe OSA.”

Next, Dr. Mazzotti and colleagues used Kaplan-Meier survival analysis and Cox proportional hazards models to evaluate whether subtypes were associated with incident coronary heart disease (CHD), heart failure, and CV disease, including CV mortality. Similar analyses were performed comparing each symptom subtype with 2,830 individuals without OSA (AHI less than 5).

Compared with other subtypes, the excessively sleepy group had a more than threefold increased odds of prevalent heart failure, after adjustment for other CV risk factors. They also had a 1.7- to 2.3-fold increased risk for incident CV disease (P less than .001), CHD (P = .015) and heart failure (P = 0.018), after adjustment for other CV risk factors.

“Compared to individuals without OSA, the excessively sleepy subtype is the only subtype with increased risk of incident CV disease and CHD,” Dr. Mazzotti said. “It is possible that excessively sleepy OSA patients are more likely to benefit from CPAP therapy in preventing CV disease.” These results were published online earlier this year (Am J Respir Crit Care Med. 2019 Feb 15. doi: 10.1164/rccm.201808-1509OC).

Dr. Mazzotti reported having no financial disclosures.

SOURCE: Mazzotti D et al. SLEEP 2019, Abstract 0586.

 

– Patients with obstructive sleep apnea who complain of feeling tired when they wake up, being sleepy during the day, and have a high score on the Epworth Sleepiness Scale face an increased risk for cardiovascular disease, results from a population-based analysis suggest.

Doug Brunk/MDedge News
Dr. Diego R. Mazzotti

“OSA is a highly heterogeneous disease, with multiple clinical presentations and consequences,” the study’s first author, Diego R. Mazzotti, PhD, said at the annual meeting of the Associated Professional Sleep Societies. “These patients also have diverse comorbidities, and there are arbitrary severity definitions and variable therapeutic responses. It’s difficult to lump these patients together.”

Symptom subtypes of OSA were originally described in the Icelandic Sleep Apnea Cohort, and defined as excessively sleepy, minimally symptomatic, and disturbed sleep (Eur Respir J. 2014; 44[6]:1600-7). These distinct clusters were identified based on symptom experiences and the existence of major comorbidities. “This concept is more popular today, trying to identify symptom clusters, or groups of individuals, that share similar polysomnographic data, and then compare differences in prevalence or incidence of cardiovascular disease,” said Dr. Mazzotti, a research associate at the University of Pennsylvania, Philadelphia. “That’s a concept that needs to be moving forward.”

Dr. Mazzotti and colleagues set out to determine if OSA symptom subtypes are present in the Sleep Heart Health Study, a multicenter, prospective, community-based cohort of individuals aged 40 years and older designed to assess the cardiovascular (CV) consequences of OSA. They also wanted to know if there is additional evidence of the relevance of OSA symptom subtypes, particularly with respect to cardiovascular disease .

Participant-reported symptoms, such as difficulty falling and staying asleep, snoring, fatigue, drowsy driving and daytime sleepiness, and responses to the Epworth Sleepiness Scale were used to determine the patient’s subtype. Assessments including questionnaires and in-home polysomnography were conducted at baseline (between 1995 and 1998) and follow-up (between 2001 and 2003), while CV outcomes were assessed until the end of follow-up (between 2008 and 2011).

In all, 1,207 patients from the Sleep Heart Health Study met criteria for moderate to severe OSA (apnea-hypopnea index, or AHI, of 15 or greater) and were included in the final analysis. They were followed for a mean of 12 years. Based on the clustering of symptoms, the researchers identified four OSA symptom subtypes: disturbed sleep (12%), minimally symptomatic (33%), excessively sleepy (17%), and moderately sleepy (38%) – proportions that were similar to those observed in prior studies.



The disturbed sleep subtype presented with increased prevalence of “insomnialike” symptoms, such as difficulty initiating or maintaining sleep, according to Dr. Mazzotti. “On the other hand, the excessively sleepy subtype presented with a very high prevalence of several symptoms related to excessive daytime sleepiness, while the moderately sleepy showed a moderately high prevalence of such symptoms, but not as much when compared to the excessively sleepy subtype,” he explained. “Finally, the minimally symptomatic subtype was found to have the lowest prevalence of all investigated symptoms, suggesting that these patients have low symptom burden. They do not complain as much, even though they have moderate-to-severe OSA.”

Next, Dr. Mazzotti and colleagues used Kaplan-Meier survival analysis and Cox proportional hazards models to evaluate whether subtypes were associated with incident coronary heart disease (CHD), heart failure, and CV disease, including CV mortality. Similar analyses were performed comparing each symptom subtype with 2,830 individuals without OSA (AHI less than 5).

Compared with other subtypes, the excessively sleepy group had a more than threefold increased odds of prevalent heart failure, after adjustment for other CV risk factors. They also had a 1.7- to 2.3-fold increased risk for incident CV disease (P less than .001), CHD (P = .015) and heart failure (P = 0.018), after adjustment for other CV risk factors.

“Compared to individuals without OSA, the excessively sleepy subtype is the only subtype with increased risk of incident CV disease and CHD,” Dr. Mazzotti said. “It is possible that excessively sleepy OSA patients are more likely to benefit from CPAP therapy in preventing CV disease.” These results were published online earlier this year (Am J Respir Crit Care Med. 2019 Feb 15. doi: 10.1164/rccm.201808-1509OC).

Dr. Mazzotti reported having no financial disclosures.

SOURCE: Mazzotti D et al. SLEEP 2019, Abstract 0586.

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Study eyes narcolepsy’s impact on patient quality of life

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– Narcolepsy adversely impacts one’s health-related quality of life in a variety of ways, from elevated levels of depression to negative social stigma, results from a mixed methods study suggest.

Doug Brunk/MDedge News
Dr. Jason C. Ong

“Despite established pharmacological treatments to reduce narcolepsy symptoms, health-related quality of life remains poor,” the study’s first author, Jason C. Ong, PhD, said at the annual meeting of the Associated Professional Sleep Societies. “The impact these symptoms have on functioning, the disease burden, and psychosocial functioning in particular is very important. Psychosocial functioning is particularly poor.”

Previous research has shown that people with narcolepsy have two- to four times the rate of psychiatric comorbidities and that health-related stigma is a predictor of depression and poor functioning, said Dr. Ong, a psychologist with the Center for Circadian and Sleep Medicine at the Northwestern University Feinberg School of Medicine, Chicago. In an effort to assess current practices for addressing the psychosocial needs of persons with narcolepsy and to identify potential strategies that could be used to develop a psychosocial intervention, he and his associates conducted a mixed methods study to examine how narcolepsy symptoms impact health-related quality of life and the appropriateness of different health-related quality of life measures for the disorder. “Our long-term goal is to see if we can use this information to help inform the feasibility of a psychosocial intervention to improve health-related quality of life,” he said.

For the study, 29 adults with an established diagnosis of narcolepsy completed online versions of the Patient Health Questionnaire-9 (PHQ-9), the Patient Reported Outcomes Measurement Information System (PROMIS), the 36-item Short Form Survey (SF-36), and the Epworth Sleepiness Scale (ESS). They also participated in a focus group, which consisted of questions pertaining to quality of life for persons with narcolepsy, current practices for addressing psychosocial health of affected individuals, and suggestions for developing a psychosocial intervention. The researchers used thematic analysis to reduce the qualitative data to key themes.

Most of the study participants (93%) were female, 90% were white, their mean age was 31, and their mean time since narcolepsy diagnosis was 4.3 years. Clinically significant elevations on the PROMIS scale, defined as a t-score of greater than 60, were reported for depression (t-score of 64.8), anxiety (66.3), fatigue (68.3), and sleep impairment (66.9). Elevations in depressive symptoms were reported on the PHQ-9 (a mean of 15.79), “which corresponds to moderately severe levels,” Dr. Ong said. “The ESS was highly elevated and fit well with the scales for sleep impairment as well as fatigue on the PROMIS. Overall, there was nice congruence across these measures.”

On the SF-36, the researchers observed that there were deficits in physical and emotional aspects of role limitations, and in energy/fatigue. “One thing we did find was a significant difference in general functioning, where patients with type 1 narcolepsy were worse off than those with type 2 narcolepsy (P less than .05).”


Qualitative data from focus groups revealed several key themes, including the perception that narcolepsy is poorly understood by the public and health care providers.

“People have the perception that if you have narcolepsy, you just feel fine and then you fall asleep,” Dr. Ong said. “They don’t understand that it’s a constant thing. Negative social stigma was also common. As a result, we found a lot of negative impact on self-esteem and self-efficacy. People talked about being hesitant to tell other people about their diagnosis, feeling that they’re ashamed of having narcolepsy. They felt less capable. One person said, ‘I get tired trying to explain why I’m tired.’”

Another common theme that emerged was the challenge of optimal treatment for their narcolepsy. Most patients met with sleep doctors or clinics every 3-6 months. “They said that this was generally good for discussing medications and symptom management, but there didn’t seem to be much time to talk about psychosocial aspects,” Dr. Ong said. “That seemed to be one area of need. There was also a strong dissatisfaction with mental health providers. People talked about how their mental health provider really didn’t understand narcolepsy. It did seem to reduce rapport and the ability to trust their therapist. Some talked about the challenges of accessibility. In some cases, people said their narcolepsy symptoms created challenges with appointment attendance.”

In terms of preferences for a psychosocial intervention, respondents generally “preferred some kind of online or Internet delivery,” he said. “They prefer a team approach with a clinician who’s knowledgeable about both sleep and mental health.”

Dr. Ong acknowledged certain limitations of the study, including its small sample size and the fact that it was not adequately powered to detect differences between type 1 and type 2 narcolepsy.

The study was funded by a grant from Wake Up Narcolepsy. Dr. Ong reported having no relevant financial disclosures.

SOURCE: Ong J et al., SLEEP 2019, abstract 0624.

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– Narcolepsy adversely impacts one’s health-related quality of life in a variety of ways, from elevated levels of depression to negative social stigma, results from a mixed methods study suggest.

Doug Brunk/MDedge News
Dr. Jason C. Ong

“Despite established pharmacological treatments to reduce narcolepsy symptoms, health-related quality of life remains poor,” the study’s first author, Jason C. Ong, PhD, said at the annual meeting of the Associated Professional Sleep Societies. “The impact these symptoms have on functioning, the disease burden, and psychosocial functioning in particular is very important. Psychosocial functioning is particularly poor.”

Previous research has shown that people with narcolepsy have two- to four times the rate of psychiatric comorbidities and that health-related stigma is a predictor of depression and poor functioning, said Dr. Ong, a psychologist with the Center for Circadian and Sleep Medicine at the Northwestern University Feinberg School of Medicine, Chicago. In an effort to assess current practices for addressing the psychosocial needs of persons with narcolepsy and to identify potential strategies that could be used to develop a psychosocial intervention, he and his associates conducted a mixed methods study to examine how narcolepsy symptoms impact health-related quality of life and the appropriateness of different health-related quality of life measures for the disorder. “Our long-term goal is to see if we can use this information to help inform the feasibility of a psychosocial intervention to improve health-related quality of life,” he said.

For the study, 29 adults with an established diagnosis of narcolepsy completed online versions of the Patient Health Questionnaire-9 (PHQ-9), the Patient Reported Outcomes Measurement Information System (PROMIS), the 36-item Short Form Survey (SF-36), and the Epworth Sleepiness Scale (ESS). They also participated in a focus group, which consisted of questions pertaining to quality of life for persons with narcolepsy, current practices for addressing psychosocial health of affected individuals, and suggestions for developing a psychosocial intervention. The researchers used thematic analysis to reduce the qualitative data to key themes.

Most of the study participants (93%) were female, 90% were white, their mean age was 31, and their mean time since narcolepsy diagnosis was 4.3 years. Clinically significant elevations on the PROMIS scale, defined as a t-score of greater than 60, were reported for depression (t-score of 64.8), anxiety (66.3), fatigue (68.3), and sleep impairment (66.9). Elevations in depressive symptoms were reported on the PHQ-9 (a mean of 15.79), “which corresponds to moderately severe levels,” Dr. Ong said. “The ESS was highly elevated and fit well with the scales for sleep impairment as well as fatigue on the PROMIS. Overall, there was nice congruence across these measures.”

On the SF-36, the researchers observed that there were deficits in physical and emotional aspects of role limitations, and in energy/fatigue. “One thing we did find was a significant difference in general functioning, where patients with type 1 narcolepsy were worse off than those with type 2 narcolepsy (P less than .05).”


Qualitative data from focus groups revealed several key themes, including the perception that narcolepsy is poorly understood by the public and health care providers.

“People have the perception that if you have narcolepsy, you just feel fine and then you fall asleep,” Dr. Ong said. “They don’t understand that it’s a constant thing. Negative social stigma was also common. As a result, we found a lot of negative impact on self-esteem and self-efficacy. People talked about being hesitant to tell other people about their diagnosis, feeling that they’re ashamed of having narcolepsy. They felt less capable. One person said, ‘I get tired trying to explain why I’m tired.’”

Another common theme that emerged was the challenge of optimal treatment for their narcolepsy. Most patients met with sleep doctors or clinics every 3-6 months. “They said that this was generally good for discussing medications and symptom management, but there didn’t seem to be much time to talk about psychosocial aspects,” Dr. Ong said. “That seemed to be one area of need. There was also a strong dissatisfaction with mental health providers. People talked about how their mental health provider really didn’t understand narcolepsy. It did seem to reduce rapport and the ability to trust their therapist. Some talked about the challenges of accessibility. In some cases, people said their narcolepsy symptoms created challenges with appointment attendance.”

In terms of preferences for a psychosocial intervention, respondents generally “preferred some kind of online or Internet delivery,” he said. “They prefer a team approach with a clinician who’s knowledgeable about both sleep and mental health.”

Dr. Ong acknowledged certain limitations of the study, including its small sample size and the fact that it was not adequately powered to detect differences between type 1 and type 2 narcolepsy.

The study was funded by a grant from Wake Up Narcolepsy. Dr. Ong reported having no relevant financial disclosures.

SOURCE: Ong J et al., SLEEP 2019, abstract 0624.

– Narcolepsy adversely impacts one’s health-related quality of life in a variety of ways, from elevated levels of depression to negative social stigma, results from a mixed methods study suggest.

Doug Brunk/MDedge News
Dr. Jason C. Ong

“Despite established pharmacological treatments to reduce narcolepsy symptoms, health-related quality of life remains poor,” the study’s first author, Jason C. Ong, PhD, said at the annual meeting of the Associated Professional Sleep Societies. “The impact these symptoms have on functioning, the disease burden, and psychosocial functioning in particular is very important. Psychosocial functioning is particularly poor.”

Previous research has shown that people with narcolepsy have two- to four times the rate of psychiatric comorbidities and that health-related stigma is a predictor of depression and poor functioning, said Dr. Ong, a psychologist with the Center for Circadian and Sleep Medicine at the Northwestern University Feinberg School of Medicine, Chicago. In an effort to assess current practices for addressing the psychosocial needs of persons with narcolepsy and to identify potential strategies that could be used to develop a psychosocial intervention, he and his associates conducted a mixed methods study to examine how narcolepsy symptoms impact health-related quality of life and the appropriateness of different health-related quality of life measures for the disorder. “Our long-term goal is to see if we can use this information to help inform the feasibility of a psychosocial intervention to improve health-related quality of life,” he said.

For the study, 29 adults with an established diagnosis of narcolepsy completed online versions of the Patient Health Questionnaire-9 (PHQ-9), the Patient Reported Outcomes Measurement Information System (PROMIS), the 36-item Short Form Survey (SF-36), and the Epworth Sleepiness Scale (ESS). They also participated in a focus group, which consisted of questions pertaining to quality of life for persons with narcolepsy, current practices for addressing psychosocial health of affected individuals, and suggestions for developing a psychosocial intervention. The researchers used thematic analysis to reduce the qualitative data to key themes.

Most of the study participants (93%) were female, 90% were white, their mean age was 31, and their mean time since narcolepsy diagnosis was 4.3 years. Clinically significant elevations on the PROMIS scale, defined as a t-score of greater than 60, were reported for depression (t-score of 64.8), anxiety (66.3), fatigue (68.3), and sleep impairment (66.9). Elevations in depressive symptoms were reported on the PHQ-9 (a mean of 15.79), “which corresponds to moderately severe levels,” Dr. Ong said. “The ESS was highly elevated and fit well with the scales for sleep impairment as well as fatigue on the PROMIS. Overall, there was nice congruence across these measures.”

On the SF-36, the researchers observed that there were deficits in physical and emotional aspects of role limitations, and in energy/fatigue. “One thing we did find was a significant difference in general functioning, where patients with type 1 narcolepsy were worse off than those with type 2 narcolepsy (P less than .05).”


Qualitative data from focus groups revealed several key themes, including the perception that narcolepsy is poorly understood by the public and health care providers.

“People have the perception that if you have narcolepsy, you just feel fine and then you fall asleep,” Dr. Ong said. “They don’t understand that it’s a constant thing. Negative social stigma was also common. As a result, we found a lot of negative impact on self-esteem and self-efficacy. People talked about being hesitant to tell other people about their diagnosis, feeling that they’re ashamed of having narcolepsy. They felt less capable. One person said, ‘I get tired trying to explain why I’m tired.’”

Another common theme that emerged was the challenge of optimal treatment for their narcolepsy. Most patients met with sleep doctors or clinics every 3-6 months. “They said that this was generally good for discussing medications and symptom management, but there didn’t seem to be much time to talk about psychosocial aspects,” Dr. Ong said. “That seemed to be one area of need. There was also a strong dissatisfaction with mental health providers. People talked about how their mental health provider really didn’t understand narcolepsy. It did seem to reduce rapport and the ability to trust their therapist. Some talked about the challenges of accessibility. In some cases, people said their narcolepsy symptoms created challenges with appointment attendance.”

In terms of preferences for a psychosocial intervention, respondents generally “preferred some kind of online or Internet delivery,” he said. “They prefer a team approach with a clinician who’s knowledgeable about both sleep and mental health.”

Dr. Ong acknowledged certain limitations of the study, including its small sample size and the fact that it was not adequately powered to detect differences between type 1 and type 2 narcolepsy.

The study was funded by a grant from Wake Up Narcolepsy. Dr. Ong reported having no relevant financial disclosures.

SOURCE: Ong J et al., SLEEP 2019, abstract 0624.

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Subset of patients benefits from in-hospital sleep apnea screening

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Mon, 07/01/2019 - 10:53

– In the clinical opinion of Richard J. Schwab, MD, any hospitalized patient with a body mass index of 35 kg/m2 or greater should undergo overnight pulse oximetry testing.

Courtesy Dr. Krishna Sundar

“Many diseases are adversely affected by sleep apnea, including myocardial infarction, hypertension, a cerebrovascular accident, pulmonary hypertension, atrial fibrillation, diabetes, and congestive heart failure,” Dr. Schwab, interim chief of the University of Pennsylvania Perelman School of Medicine’s Division of Sleep Medicine, said at the annual meeting of the Associated Professional Sleep Societies.

“Continuous positive airway pressure [CPAP] may help heart failure patients and reduce 30-day readmission rates, which has important financial implications in the University of Pennsylvania Health system. CPAP may also decrease the rapid responses and cardiac arrests at night,” he said.

A few years ago, Dr. Schwab and his associates set out to determine whether PAP adherence in cardiac patients with sleep-disordered breathing reduced readmission rates 30 days after discharge (J Clin Sleep Med. 2014;10:1051-59). They evaluated 104 consecutive cardiovascular hospitalized patients reporting symptoms of sleep-disordered breathing (SDB) between January of 2012 and March of 2013, and collected demographic data, SDB type, PAP adherence, and data regarding 30-day hospital readmission/ED visits. Apnea was scored when there was a 90% or greater cessation of airflow detected through the nasal pressure sensor. Hypopnea was scored when there was at least a 50% reduction in airflow with an associated 3% or greater oxyhemoglobin desaturation. Central apnea (CSA) was scored when there was a 90% or greater cessation of airflow detected through the nasal pressure sensor and no effort in the thorax and abdomen. If more than 50% of the apneas were central, the SDB was classified as CSA. If more than 50% of apneas were obstructive in nature, it was considered obstructive sleep apnea (OSA).

The mean age of the patients was 59 years, 63% were male, their mean body mass index was 34 kg/m2, 87% had heart failure, and 82% had hypertension. Of the 104 patients, 81 had SDB and 23 did not. The 30-day readmission rate was 29% in patients who did not use PAP, 30% in partial users, and 0% in full users (P = .0246).

The researchers found that 81 patients (78%) had sleep disordered breathing. Of these, 65 (80%) had OSA while 16 (20%) had CSA. The study demonstrated that performing inpatient sleep studies was feasible. “Our study indicated that SDB is common in hospitalized cardiac patients, with the majority of patients manifesting OSA,” said Dr. Schwab, medical director of the Penn Sleep Centers. “The data suggest that hospital readmission and ED visits 30 days after discharge were significantly lower in patients with cardiac disease and SDB who adhere to PAP treatment than those who are not adherent.”

Dr. Schwab is part of a research team conducting a longer study with ResMed to examine 30-, 60-, and 90-day readmission rates in cardiac inpatients newly diagnosed with OSA and started on auto-PAP (APAP). They plan to evaluate the ejection fraction during hospitalization and in follow-up, as well as the effect of an in-laboratory sleep study at 1 month. The long-term follow-up is planned for 3 years.

Launching an inpatient sleep apnea consult service in the hospital makes sense, Dr. Schwab continued, because home sleep studies are approved for the diagnosis of sleep apnea, APAP can determine optimal CPAP settings, insurance will cover CPAP with a home or inpatient sleep study, and patients can get CPAP/APAP at or before discharge. “Sleep techs or respiratory therapists can perform these sleep studies,” he said. At Penn, a nurse practitioner (NP) runs this service using the Alice NightOne home sleep testing device and the WatchPAT portable sleep apnea diagnostic device.


The notion of performing in-hospital sleep studies should be an easy sell to cardiologists and hospital administrators, Dr. Schwab said, because the program will decrease hospital readmissions, “which is going to save the hospital a lot of money. In addition, these patients can come back for in-laboratory sleep studies. There is also increased revenue from the consults and progress notes, and the professional fee for sleep study interpretation. The most challenging part of the inpatient sleep consult service is trying to get these patients to follow up in the sleep center with the NP.”

Dr. Schwab is an investigator for the recently launched Penn Medicine Nudge Unit Project, which is funded by the National Institutes of Health. The project includes a multidisciplinary team of providers from the Hospital of the University of Pennsylvania, Penn Presbyterian Medical Center, and Penn Medicine Risk Management. If an inpatient has a BMI of 35 kg/m2 or greater, the clinician will be “nudged” via an enterprise messaging system (EMS) prompt to order an inpatient sleep oximetry. “They have to respond to that nudge,” Dr. Schwab said. “If the oximetry is consistent for sleep apnea, there will be another nudge to consult with the sleep medicine team. If the oximetry is negative, they will be nudged to get an outpatient consult with the sleep medicine team.” For patients undergoing preadmission testing for any type of surgery who score 4 or more on the STOP-Bang questionnaire (Chest 2016;149:631-38), the clinician is “nudged” to order an outpatient sleep consultation.

Benefits to such an approach, he said, include a decrease in resource allocation, shorter hospital stays, patient perceived improvement in quality of sleep, improved patient survey scores, and the fact that apnea treatment may decrease the need for rapid response. “It also reduces medical-legal concerns, improves patient outcomes, decreases readmissions, and generates revenue from inpatient and outpatient sleep studies,” Dr. Schwab said. Barriers to such an approach include the fact that there is no defined pathway at many institutions for recognizing and referring suspected OSA patients. “There is often a lack of care coordination between primary providers and sleep medicine, and sleep is viewed as ambulatory care, not as a part of inpatient care,” he said.

Last year, Dr. Schwab and his colleagues at UPenn conducted a pilot study to develop and test a pathway for identifying OSA in high-risk inpatient and preadmission patient populations. Of 389 patients admitted between Aug. 20 and Sept. 20 of 2018, 43 had a BMI of 35 kg/m2 or greater. Of these, 10 were screened with oximetry and 8 were positive for severe apnea. Of these eight cases, five inpatient consults were ordered, one outpatient consult was ordered, one patient had no consult ordered, and one patient was discharged before the consult was ordered.

Dr. Schwab also performed a pilot study in patients undergoing preoperative testing with the STOP-Bang questionnaire. “When we piloted this, there were over 200 patients who could have been sent to the outpatient sleep consult service, and we referred none,” Dr. Schwab said. “We are just starting to implement a program to screen them. We can treat these people for their sleep apnea and prevent chronic adverse sequelae associated with this disease.”

Both the inpatient and outpatient screening programs for sleep apnea are built within their electronic medical record. “Building this within your EMR requires effort, but it’s doable,” he said.

Dr. Schwab disclosed that he has received grants from the National Institutes of Health, ResMed, and Inspire Medical Systems.

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– In the clinical opinion of Richard J. Schwab, MD, any hospitalized patient with a body mass index of 35 kg/m2 or greater should undergo overnight pulse oximetry testing.

Courtesy Dr. Krishna Sundar

“Many diseases are adversely affected by sleep apnea, including myocardial infarction, hypertension, a cerebrovascular accident, pulmonary hypertension, atrial fibrillation, diabetes, and congestive heart failure,” Dr. Schwab, interim chief of the University of Pennsylvania Perelman School of Medicine’s Division of Sleep Medicine, said at the annual meeting of the Associated Professional Sleep Societies.

“Continuous positive airway pressure [CPAP] may help heart failure patients and reduce 30-day readmission rates, which has important financial implications in the University of Pennsylvania Health system. CPAP may also decrease the rapid responses and cardiac arrests at night,” he said.

A few years ago, Dr. Schwab and his associates set out to determine whether PAP adherence in cardiac patients with sleep-disordered breathing reduced readmission rates 30 days after discharge (J Clin Sleep Med. 2014;10:1051-59). They evaluated 104 consecutive cardiovascular hospitalized patients reporting symptoms of sleep-disordered breathing (SDB) between January of 2012 and March of 2013, and collected demographic data, SDB type, PAP adherence, and data regarding 30-day hospital readmission/ED visits. Apnea was scored when there was a 90% or greater cessation of airflow detected through the nasal pressure sensor. Hypopnea was scored when there was at least a 50% reduction in airflow with an associated 3% or greater oxyhemoglobin desaturation. Central apnea (CSA) was scored when there was a 90% or greater cessation of airflow detected through the nasal pressure sensor and no effort in the thorax and abdomen. If more than 50% of the apneas were central, the SDB was classified as CSA. If more than 50% of apneas were obstructive in nature, it was considered obstructive sleep apnea (OSA).

The mean age of the patients was 59 years, 63% were male, their mean body mass index was 34 kg/m2, 87% had heart failure, and 82% had hypertension. Of the 104 patients, 81 had SDB and 23 did not. The 30-day readmission rate was 29% in patients who did not use PAP, 30% in partial users, and 0% in full users (P = .0246).

The researchers found that 81 patients (78%) had sleep disordered breathing. Of these, 65 (80%) had OSA while 16 (20%) had CSA. The study demonstrated that performing inpatient sleep studies was feasible. “Our study indicated that SDB is common in hospitalized cardiac patients, with the majority of patients manifesting OSA,” said Dr. Schwab, medical director of the Penn Sleep Centers. “The data suggest that hospital readmission and ED visits 30 days after discharge were significantly lower in patients with cardiac disease and SDB who adhere to PAP treatment than those who are not adherent.”

Dr. Schwab is part of a research team conducting a longer study with ResMed to examine 30-, 60-, and 90-day readmission rates in cardiac inpatients newly diagnosed with OSA and started on auto-PAP (APAP). They plan to evaluate the ejection fraction during hospitalization and in follow-up, as well as the effect of an in-laboratory sleep study at 1 month. The long-term follow-up is planned for 3 years.

Launching an inpatient sleep apnea consult service in the hospital makes sense, Dr. Schwab continued, because home sleep studies are approved for the diagnosis of sleep apnea, APAP can determine optimal CPAP settings, insurance will cover CPAP with a home or inpatient sleep study, and patients can get CPAP/APAP at or before discharge. “Sleep techs or respiratory therapists can perform these sleep studies,” he said. At Penn, a nurse practitioner (NP) runs this service using the Alice NightOne home sleep testing device and the WatchPAT portable sleep apnea diagnostic device.


The notion of performing in-hospital sleep studies should be an easy sell to cardiologists and hospital administrators, Dr. Schwab said, because the program will decrease hospital readmissions, “which is going to save the hospital a lot of money. In addition, these patients can come back for in-laboratory sleep studies. There is also increased revenue from the consults and progress notes, and the professional fee for sleep study interpretation. The most challenging part of the inpatient sleep consult service is trying to get these patients to follow up in the sleep center with the NP.”

Dr. Schwab is an investigator for the recently launched Penn Medicine Nudge Unit Project, which is funded by the National Institutes of Health. The project includes a multidisciplinary team of providers from the Hospital of the University of Pennsylvania, Penn Presbyterian Medical Center, and Penn Medicine Risk Management. If an inpatient has a BMI of 35 kg/m2 or greater, the clinician will be “nudged” via an enterprise messaging system (EMS) prompt to order an inpatient sleep oximetry. “They have to respond to that nudge,” Dr. Schwab said. “If the oximetry is consistent for sleep apnea, there will be another nudge to consult with the sleep medicine team. If the oximetry is negative, they will be nudged to get an outpatient consult with the sleep medicine team.” For patients undergoing preadmission testing for any type of surgery who score 4 or more on the STOP-Bang questionnaire (Chest 2016;149:631-38), the clinician is “nudged” to order an outpatient sleep consultation.

Benefits to such an approach, he said, include a decrease in resource allocation, shorter hospital stays, patient perceived improvement in quality of sleep, improved patient survey scores, and the fact that apnea treatment may decrease the need for rapid response. “It also reduces medical-legal concerns, improves patient outcomes, decreases readmissions, and generates revenue from inpatient and outpatient sleep studies,” Dr. Schwab said. Barriers to such an approach include the fact that there is no defined pathway at many institutions for recognizing and referring suspected OSA patients. “There is often a lack of care coordination between primary providers and sleep medicine, and sleep is viewed as ambulatory care, not as a part of inpatient care,” he said.

Last year, Dr. Schwab and his colleagues at UPenn conducted a pilot study to develop and test a pathway for identifying OSA in high-risk inpatient and preadmission patient populations. Of 389 patients admitted between Aug. 20 and Sept. 20 of 2018, 43 had a BMI of 35 kg/m2 or greater. Of these, 10 were screened with oximetry and 8 were positive for severe apnea. Of these eight cases, five inpatient consults were ordered, one outpatient consult was ordered, one patient had no consult ordered, and one patient was discharged before the consult was ordered.

Dr. Schwab also performed a pilot study in patients undergoing preoperative testing with the STOP-Bang questionnaire. “When we piloted this, there were over 200 patients who could have been sent to the outpatient sleep consult service, and we referred none,” Dr. Schwab said. “We are just starting to implement a program to screen them. We can treat these people for their sleep apnea and prevent chronic adverse sequelae associated with this disease.”

Both the inpatient and outpatient screening programs for sleep apnea are built within their electronic medical record. “Building this within your EMR requires effort, but it’s doable,” he said.

Dr. Schwab disclosed that he has received grants from the National Institutes of Health, ResMed, and Inspire Medical Systems.

– In the clinical opinion of Richard J. Schwab, MD, any hospitalized patient with a body mass index of 35 kg/m2 or greater should undergo overnight pulse oximetry testing.

Courtesy Dr. Krishna Sundar

“Many diseases are adversely affected by sleep apnea, including myocardial infarction, hypertension, a cerebrovascular accident, pulmonary hypertension, atrial fibrillation, diabetes, and congestive heart failure,” Dr. Schwab, interim chief of the University of Pennsylvania Perelman School of Medicine’s Division of Sleep Medicine, said at the annual meeting of the Associated Professional Sleep Societies.

“Continuous positive airway pressure [CPAP] may help heart failure patients and reduce 30-day readmission rates, which has important financial implications in the University of Pennsylvania Health system. CPAP may also decrease the rapid responses and cardiac arrests at night,” he said.

A few years ago, Dr. Schwab and his associates set out to determine whether PAP adherence in cardiac patients with sleep-disordered breathing reduced readmission rates 30 days after discharge (J Clin Sleep Med. 2014;10:1051-59). They evaluated 104 consecutive cardiovascular hospitalized patients reporting symptoms of sleep-disordered breathing (SDB) between January of 2012 and March of 2013, and collected demographic data, SDB type, PAP adherence, and data regarding 30-day hospital readmission/ED visits. Apnea was scored when there was a 90% or greater cessation of airflow detected through the nasal pressure sensor. Hypopnea was scored when there was at least a 50% reduction in airflow with an associated 3% or greater oxyhemoglobin desaturation. Central apnea (CSA) was scored when there was a 90% or greater cessation of airflow detected through the nasal pressure sensor and no effort in the thorax and abdomen. If more than 50% of the apneas were central, the SDB was classified as CSA. If more than 50% of apneas were obstructive in nature, it was considered obstructive sleep apnea (OSA).

The mean age of the patients was 59 years, 63% were male, their mean body mass index was 34 kg/m2, 87% had heart failure, and 82% had hypertension. Of the 104 patients, 81 had SDB and 23 did not. The 30-day readmission rate was 29% in patients who did not use PAP, 30% in partial users, and 0% in full users (P = .0246).

The researchers found that 81 patients (78%) had sleep disordered breathing. Of these, 65 (80%) had OSA while 16 (20%) had CSA. The study demonstrated that performing inpatient sleep studies was feasible. “Our study indicated that SDB is common in hospitalized cardiac patients, with the majority of patients manifesting OSA,” said Dr. Schwab, medical director of the Penn Sleep Centers. “The data suggest that hospital readmission and ED visits 30 days after discharge were significantly lower in patients with cardiac disease and SDB who adhere to PAP treatment than those who are not adherent.”

Dr. Schwab is part of a research team conducting a longer study with ResMed to examine 30-, 60-, and 90-day readmission rates in cardiac inpatients newly diagnosed with OSA and started on auto-PAP (APAP). They plan to evaluate the ejection fraction during hospitalization and in follow-up, as well as the effect of an in-laboratory sleep study at 1 month. The long-term follow-up is planned for 3 years.

Launching an inpatient sleep apnea consult service in the hospital makes sense, Dr. Schwab continued, because home sleep studies are approved for the diagnosis of sleep apnea, APAP can determine optimal CPAP settings, insurance will cover CPAP with a home or inpatient sleep study, and patients can get CPAP/APAP at or before discharge. “Sleep techs or respiratory therapists can perform these sleep studies,” he said. At Penn, a nurse practitioner (NP) runs this service using the Alice NightOne home sleep testing device and the WatchPAT portable sleep apnea diagnostic device.


The notion of performing in-hospital sleep studies should be an easy sell to cardiologists and hospital administrators, Dr. Schwab said, because the program will decrease hospital readmissions, “which is going to save the hospital a lot of money. In addition, these patients can come back for in-laboratory sleep studies. There is also increased revenue from the consults and progress notes, and the professional fee for sleep study interpretation. The most challenging part of the inpatient sleep consult service is trying to get these patients to follow up in the sleep center with the NP.”

Dr. Schwab is an investigator for the recently launched Penn Medicine Nudge Unit Project, which is funded by the National Institutes of Health. The project includes a multidisciplinary team of providers from the Hospital of the University of Pennsylvania, Penn Presbyterian Medical Center, and Penn Medicine Risk Management. If an inpatient has a BMI of 35 kg/m2 or greater, the clinician will be “nudged” via an enterprise messaging system (EMS) prompt to order an inpatient sleep oximetry. “They have to respond to that nudge,” Dr. Schwab said. “If the oximetry is consistent for sleep apnea, there will be another nudge to consult with the sleep medicine team. If the oximetry is negative, they will be nudged to get an outpatient consult with the sleep medicine team.” For patients undergoing preadmission testing for any type of surgery who score 4 or more on the STOP-Bang questionnaire (Chest 2016;149:631-38), the clinician is “nudged” to order an outpatient sleep consultation.

Benefits to such an approach, he said, include a decrease in resource allocation, shorter hospital stays, patient perceived improvement in quality of sleep, improved patient survey scores, and the fact that apnea treatment may decrease the need for rapid response. “It also reduces medical-legal concerns, improves patient outcomes, decreases readmissions, and generates revenue from inpatient and outpatient sleep studies,” Dr. Schwab said. Barriers to such an approach include the fact that there is no defined pathway at many institutions for recognizing and referring suspected OSA patients. “There is often a lack of care coordination between primary providers and sleep medicine, and sleep is viewed as ambulatory care, not as a part of inpatient care,” he said.

Last year, Dr. Schwab and his colleagues at UPenn conducted a pilot study to develop and test a pathway for identifying OSA in high-risk inpatient and preadmission patient populations. Of 389 patients admitted between Aug. 20 and Sept. 20 of 2018, 43 had a BMI of 35 kg/m2 or greater. Of these, 10 were screened with oximetry and 8 were positive for severe apnea. Of these eight cases, five inpatient consults were ordered, one outpatient consult was ordered, one patient had no consult ordered, and one patient was discharged before the consult was ordered.

Dr. Schwab also performed a pilot study in patients undergoing preoperative testing with the STOP-Bang questionnaire. “When we piloted this, there were over 200 patients who could have been sent to the outpatient sleep consult service, and we referred none,” Dr. Schwab said. “We are just starting to implement a program to screen them. We can treat these people for their sleep apnea and prevent chronic adverse sequelae associated with this disease.”

Both the inpatient and outpatient screening programs for sleep apnea are built within their electronic medical record. “Building this within your EMR requires effort, but it’s doable,” he said.

Dr. Schwab disclosed that he has received grants from the National Institutes of Health, ResMed, and Inspire Medical Systems.

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Briefest flash of light can alter the human circadian system

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Wed, 05/06/2020 - 12:25

The human circadian system can be phase shifted by flashes of dim light that last as little as 10 microseconds, results from a novel study showed.

Doug Brunk/MDedge News
Dr. Jamie M. Zeitzer

“This becomes a complementary way to help people with various kinds of circadian phase disorders,” the study’s first author, Jamie M. Zeitzer, PhD, said during an interview at the annual meeting of the Associated Professional Sleep Societies. “Right now under ideal laboratory circumstances, you can change someone’s circadian timing by about 3 hours. That’s not happening in the real world; that’s what you do in a lab. That’s with very bright light for 6 hours and very dim light the rest of the time.”

In an effort to build on previous literature related to circadian phase shifting and continuous light exposure in rodents and in humans, Dr. Zeitzer, of the department of psychiatry and behavioral sciences at Stanford (Calif.) University, and colleagues enrolled 56 healthy young men and women in their 20s and 30s to take part in two parallel 16-day studies. For the first 14 days, study participants maintained a regular sleep/wake cycle at home as confirmed through actigraphy and sleep logs. They spent the final 2 days in a specialized time-isolation laboratory, during which the phase of the circadian pacemaker (salivary melatonin onset) was determined in constant routine conditions on evening one and two; light exposure occurred between these two phase determinations on night one.

Light exposure consisted of 1 hour of a sequence of light flashes delivered through a pair of modified welding goggles during enforced wake starting 2 hours after habitual bedtime. Flashes were presented every 15 seconds and varied either by duration (from 10 microseconds to 10 seconds at a fixed intensity of 2,200 lux) or intensity (a range between 3 and 9,500 lux, with a duration fixed at 2 milliseconds).


Dr. Zeitzer and colleagues observed no significant difference in the phase shift created between flashes that were given at 10 microseconds and flashes that were given at 10 seconds. “That’s a six-log unit variation,” he said during a presentation of the results at the meeting. “There are a million times more photons given in 10-second flashes over the hour than there are in the 10-microsecond flashes. Despite the fact that there are a million more photons, you get the exact same phase shift in both of these conditions. You need very little light in order to generate these phase shifts. You’re talking about less than 1 second of light stretched out over 1 hour.”

 

 


The researchers also observed that flash intensity showed a sigmoidal relationship with phase shifting, with a half-maximal shift observed at 8 lux and 90% of the maximal shift occurring after exposure to flashes as dim as 50 lux. None of the flash sequences caused acute suppression of melatonin.

“We did not anticipate the invariance, that anything from 10 microseconds to 10 seconds gives us no difference [in phase shifting],” Dr. Zeitzer said. “That was surprising. I thought that more light would be slightly less effective in terms of photons but still give a bigger [phase] shift, but that didn’t happen. In the intensity response, we see things are more sensitive to light flashes than they are to continuous light, which is also surprising. It implies that a different part of the eye is responding to light flashes than it is to continuous light. It provides more information about how to minimize the amount of light we’re using and maximize the amount of shift.”

Which photoreceptors underlie the responses remains unclear, he continued, “but given the characteristics of photoreceptors, our hypothesis is that flashes are being mediated through a cone cell response, while the response to continuous light is being primarily mediated through a melanopsin response. A future question we plan to investigate is, can selective sequential simultaneous activation of different photoreceptors create enhanced phase shifts?”

The study was supported by the Department of Defense. Dr. Zeitzer reported having no financial disclosures.
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The human circadian system can be phase shifted by flashes of dim light that last as little as 10 microseconds, results from a novel study showed.

Doug Brunk/MDedge News
Dr. Jamie M. Zeitzer

“This becomes a complementary way to help people with various kinds of circadian phase disorders,” the study’s first author, Jamie M. Zeitzer, PhD, said during an interview at the annual meeting of the Associated Professional Sleep Societies. “Right now under ideal laboratory circumstances, you can change someone’s circadian timing by about 3 hours. That’s not happening in the real world; that’s what you do in a lab. That’s with very bright light for 6 hours and very dim light the rest of the time.”

In an effort to build on previous literature related to circadian phase shifting and continuous light exposure in rodents and in humans, Dr. Zeitzer, of the department of psychiatry and behavioral sciences at Stanford (Calif.) University, and colleagues enrolled 56 healthy young men and women in their 20s and 30s to take part in two parallel 16-day studies. For the first 14 days, study participants maintained a regular sleep/wake cycle at home as confirmed through actigraphy and sleep logs. They spent the final 2 days in a specialized time-isolation laboratory, during which the phase of the circadian pacemaker (salivary melatonin onset) was determined in constant routine conditions on evening one and two; light exposure occurred between these two phase determinations on night one.

Light exposure consisted of 1 hour of a sequence of light flashes delivered through a pair of modified welding goggles during enforced wake starting 2 hours after habitual bedtime. Flashes were presented every 15 seconds and varied either by duration (from 10 microseconds to 10 seconds at a fixed intensity of 2,200 lux) or intensity (a range between 3 and 9,500 lux, with a duration fixed at 2 milliseconds).


Dr. Zeitzer and colleagues observed no significant difference in the phase shift created between flashes that were given at 10 microseconds and flashes that were given at 10 seconds. “That’s a six-log unit variation,” he said during a presentation of the results at the meeting. “There are a million times more photons given in 10-second flashes over the hour than there are in the 10-microsecond flashes. Despite the fact that there are a million more photons, you get the exact same phase shift in both of these conditions. You need very little light in order to generate these phase shifts. You’re talking about less than 1 second of light stretched out over 1 hour.”

 

 


The researchers also observed that flash intensity showed a sigmoidal relationship with phase shifting, with a half-maximal shift observed at 8 lux and 90% of the maximal shift occurring after exposure to flashes as dim as 50 lux. None of the flash sequences caused acute suppression of melatonin.

“We did not anticipate the invariance, that anything from 10 microseconds to 10 seconds gives us no difference [in phase shifting],” Dr. Zeitzer said. “That was surprising. I thought that more light would be slightly less effective in terms of photons but still give a bigger [phase] shift, but that didn’t happen. In the intensity response, we see things are more sensitive to light flashes than they are to continuous light, which is also surprising. It implies that a different part of the eye is responding to light flashes than it is to continuous light. It provides more information about how to minimize the amount of light we’re using and maximize the amount of shift.”

Which photoreceptors underlie the responses remains unclear, he continued, “but given the characteristics of photoreceptors, our hypothesis is that flashes are being mediated through a cone cell response, while the response to continuous light is being primarily mediated through a melanopsin response. A future question we plan to investigate is, can selective sequential simultaneous activation of different photoreceptors create enhanced phase shifts?”

The study was supported by the Department of Defense. Dr. Zeitzer reported having no financial disclosures.

The human circadian system can be phase shifted by flashes of dim light that last as little as 10 microseconds, results from a novel study showed.

Doug Brunk/MDedge News
Dr. Jamie M. Zeitzer

“This becomes a complementary way to help people with various kinds of circadian phase disorders,” the study’s first author, Jamie M. Zeitzer, PhD, said during an interview at the annual meeting of the Associated Professional Sleep Societies. “Right now under ideal laboratory circumstances, you can change someone’s circadian timing by about 3 hours. That’s not happening in the real world; that’s what you do in a lab. That’s with very bright light for 6 hours and very dim light the rest of the time.”

In an effort to build on previous literature related to circadian phase shifting and continuous light exposure in rodents and in humans, Dr. Zeitzer, of the department of psychiatry and behavioral sciences at Stanford (Calif.) University, and colleagues enrolled 56 healthy young men and women in their 20s and 30s to take part in two parallel 16-day studies. For the first 14 days, study participants maintained a regular sleep/wake cycle at home as confirmed through actigraphy and sleep logs. They spent the final 2 days in a specialized time-isolation laboratory, during which the phase of the circadian pacemaker (salivary melatonin onset) was determined in constant routine conditions on evening one and two; light exposure occurred between these two phase determinations on night one.

Light exposure consisted of 1 hour of a sequence of light flashes delivered through a pair of modified welding goggles during enforced wake starting 2 hours after habitual bedtime. Flashes were presented every 15 seconds and varied either by duration (from 10 microseconds to 10 seconds at a fixed intensity of 2,200 lux) or intensity (a range between 3 and 9,500 lux, with a duration fixed at 2 milliseconds).


Dr. Zeitzer and colleagues observed no significant difference in the phase shift created between flashes that were given at 10 microseconds and flashes that were given at 10 seconds. “That’s a six-log unit variation,” he said during a presentation of the results at the meeting. “There are a million times more photons given in 10-second flashes over the hour than there are in the 10-microsecond flashes. Despite the fact that there are a million more photons, you get the exact same phase shift in both of these conditions. You need very little light in order to generate these phase shifts. You’re talking about less than 1 second of light stretched out over 1 hour.”

 

 


The researchers also observed that flash intensity showed a sigmoidal relationship with phase shifting, with a half-maximal shift observed at 8 lux and 90% of the maximal shift occurring after exposure to flashes as dim as 50 lux. None of the flash sequences caused acute suppression of melatonin.

“We did not anticipate the invariance, that anything from 10 microseconds to 10 seconds gives us no difference [in phase shifting],” Dr. Zeitzer said. “That was surprising. I thought that more light would be slightly less effective in terms of photons but still give a bigger [phase] shift, but that didn’t happen. In the intensity response, we see things are more sensitive to light flashes than they are to continuous light, which is also surprising. It implies that a different part of the eye is responding to light flashes than it is to continuous light. It provides more information about how to minimize the amount of light we’re using and maximize the amount of shift.”

Which photoreceptors underlie the responses remains unclear, he continued, “but given the characteristics of photoreceptors, our hypothesis is that flashes are being mediated through a cone cell response, while the response to continuous light is being primarily mediated through a melanopsin response. A future question we plan to investigate is, can selective sequential simultaneous activation of different photoreceptors create enhanced phase shifts?”

The study was supported by the Department of Defense. Dr. Zeitzer reported having no financial disclosures.
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Key clinical point: When distributed as flashes, the human circadian system can be phase shifted by extraordinarily brief and dim light.

Major finding: The researchers observed no significant difference in the phase shift created between flashes that were given at 10 microseconds and flashes that were given at 10 seconds.

Study details: Two parallel 16-day studies involving 56 healthy men and women in their 20s and 30s.

Disclosures: The study was supported by the Department of Defense. Dr. Zeitzer reported having no financial disclosures.

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Sleep quality linked to gut microbiome biodiversity

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Mon, 06/24/2019 - 13:51

Better sleep quality and less sleepiness, but not sleep duration, are significantly associated with greater species richness and diversity of the gut microbiota, according to results from a population sample of adults.

Doug Brunk/MDedge News
Dr. Erika W. Hagen

“These findings are preliminary and very early in the growth of this field,” lead study author Erika W. Hagen, PhD, said during an interview at the annual meeting of the Associated Professional Sleep Societies

According to Dr. Hagen, an epidemiologist at the University of Wisconsin–Madison, experimental studies in mice have shown that disturbed sleep is associated with gut microbiota composition, and a few small experimental studies in humans have found associations between curtailed sleep and measures of gut microbiota richness and diversity.

In an effort to examine associations of subjectively and objectively assessed sleep metrics with indices of gut microbiome richness and diversity, Dr. Hagen and colleagues assessed 482 individuals who participated in the Survey of the Health of Wisconsin and completed in-home study visits in 2016. They provided fecal samples, participated in a week-long wrist actigraphy protocol to measure sleep, and completed questionnaires about sleep, diet, and other health and sociodemographic factors, and an assessment of physical activity by waist-worn actigraphy.



Metrics of species richness included the Chao1 and the ACE, which estimate the number of species. Metrics of the diversity of the gut microbiome included the Inverse Simpson index and the Shannon index. All metrics were regressed on self-reported sleep duration, extreme daytime sleepiness, the Epworth Sleepiness Scale (ESS), and actigraphy-measured sleep duration and wake after sleep onset (WASO). Next, the researchers estimated associations between each of the sleep and diversity measures separately, adjusting for age and sex and then additionally adjusting for body mass index, moderate-vigorous physical activity, and dietary fat and fiber.

 

 


The mean age of the 482 subjects was 56 years, 57% were female, and the mean body mass index was 30 kg/m2. After the researchers adjusted for gender and age, they found that greater WASO was statistically significantly associated with lower richness and alpha diversity (P less than .05). These associations remained significant on the Chao1 measure and borderline significant on the ACE and Shannon measures after further adjustment for BMI, physical activity, and dietary fiber and fat. For example, 60 minutes greater WASO was associated with an approximate 26% population standard deviation reduction in microbial richness as measured by Chao1. In fully-adjusted models, greater daytime sleepiness was associated with lower richness and diversity on all indices (P = .01-.06). The ESS and sleep duration were not associated with microbiota richness or diversity.

“Our results suggest that sleep quality is associated with gut microbiome richness and diversity,” Dr. Hagen said. “Our results are in line with other research on this topic. What’s interesting is how your sleep over a period of time is affecting these measures of your microbiome. That’s something people can do something about with [eating] habits over time. What would be great is to collect longitudinal data so that you could characterize sleep over a longer period of time, but also so you could measure the microbiome at different time points to see what’s changing with changes in sleep. That would be interesting to untangle.”

She acknowledged certain limitations of the study, including the small sample size and the cross-sectional design. The study was supported by the University of Wisconsin School of Medicine and Public Health through the Wisconsin Partnership Program.

SOURCE: Hagen EW et al. SLEEP 2019, Abstract 0106.

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Better sleep quality and less sleepiness, but not sleep duration, are significantly associated with greater species richness and diversity of the gut microbiota, according to results from a population sample of adults.

Doug Brunk/MDedge News
Dr. Erika W. Hagen

“These findings are preliminary and very early in the growth of this field,” lead study author Erika W. Hagen, PhD, said during an interview at the annual meeting of the Associated Professional Sleep Societies

According to Dr. Hagen, an epidemiologist at the University of Wisconsin–Madison, experimental studies in mice have shown that disturbed sleep is associated with gut microbiota composition, and a few small experimental studies in humans have found associations between curtailed sleep and measures of gut microbiota richness and diversity.

In an effort to examine associations of subjectively and objectively assessed sleep metrics with indices of gut microbiome richness and diversity, Dr. Hagen and colleagues assessed 482 individuals who participated in the Survey of the Health of Wisconsin and completed in-home study visits in 2016. They provided fecal samples, participated in a week-long wrist actigraphy protocol to measure sleep, and completed questionnaires about sleep, diet, and other health and sociodemographic factors, and an assessment of physical activity by waist-worn actigraphy.



Metrics of species richness included the Chao1 and the ACE, which estimate the number of species. Metrics of the diversity of the gut microbiome included the Inverse Simpson index and the Shannon index. All metrics were regressed on self-reported sleep duration, extreme daytime sleepiness, the Epworth Sleepiness Scale (ESS), and actigraphy-measured sleep duration and wake after sleep onset (WASO). Next, the researchers estimated associations between each of the sleep and diversity measures separately, adjusting for age and sex and then additionally adjusting for body mass index, moderate-vigorous physical activity, and dietary fat and fiber.

 

 


The mean age of the 482 subjects was 56 years, 57% were female, and the mean body mass index was 30 kg/m2. After the researchers adjusted for gender and age, they found that greater WASO was statistically significantly associated with lower richness and alpha diversity (P less than .05). These associations remained significant on the Chao1 measure and borderline significant on the ACE and Shannon measures after further adjustment for BMI, physical activity, and dietary fiber and fat. For example, 60 minutes greater WASO was associated with an approximate 26% population standard deviation reduction in microbial richness as measured by Chao1. In fully-adjusted models, greater daytime sleepiness was associated with lower richness and diversity on all indices (P = .01-.06). The ESS and sleep duration were not associated with microbiota richness or diversity.

“Our results suggest that sleep quality is associated with gut microbiome richness and diversity,” Dr. Hagen said. “Our results are in line with other research on this topic. What’s interesting is how your sleep over a period of time is affecting these measures of your microbiome. That’s something people can do something about with [eating] habits over time. What would be great is to collect longitudinal data so that you could characterize sleep over a longer period of time, but also so you could measure the microbiome at different time points to see what’s changing with changes in sleep. That would be interesting to untangle.”

She acknowledged certain limitations of the study, including the small sample size and the cross-sectional design. The study was supported by the University of Wisconsin School of Medicine and Public Health through the Wisconsin Partnership Program.

SOURCE: Hagen EW et al. SLEEP 2019, Abstract 0106.

Better sleep quality and less sleepiness, but not sleep duration, are significantly associated with greater species richness and diversity of the gut microbiota, according to results from a population sample of adults.

Doug Brunk/MDedge News
Dr. Erika W. Hagen

“These findings are preliminary and very early in the growth of this field,” lead study author Erika W. Hagen, PhD, said during an interview at the annual meeting of the Associated Professional Sleep Societies

According to Dr. Hagen, an epidemiologist at the University of Wisconsin–Madison, experimental studies in mice have shown that disturbed sleep is associated with gut microbiota composition, and a few small experimental studies in humans have found associations between curtailed sleep and measures of gut microbiota richness and diversity.

In an effort to examine associations of subjectively and objectively assessed sleep metrics with indices of gut microbiome richness and diversity, Dr. Hagen and colleagues assessed 482 individuals who participated in the Survey of the Health of Wisconsin and completed in-home study visits in 2016. They provided fecal samples, participated in a week-long wrist actigraphy protocol to measure sleep, and completed questionnaires about sleep, diet, and other health and sociodemographic factors, and an assessment of physical activity by waist-worn actigraphy.



Metrics of species richness included the Chao1 and the ACE, which estimate the number of species. Metrics of the diversity of the gut microbiome included the Inverse Simpson index and the Shannon index. All metrics were regressed on self-reported sleep duration, extreme daytime sleepiness, the Epworth Sleepiness Scale (ESS), and actigraphy-measured sleep duration and wake after sleep onset (WASO). Next, the researchers estimated associations between each of the sleep and diversity measures separately, adjusting for age and sex and then additionally adjusting for body mass index, moderate-vigorous physical activity, and dietary fat and fiber.

 

 


The mean age of the 482 subjects was 56 years, 57% were female, and the mean body mass index was 30 kg/m2. After the researchers adjusted for gender and age, they found that greater WASO was statistically significantly associated with lower richness and alpha diversity (P less than .05). These associations remained significant on the Chao1 measure and borderline significant on the ACE and Shannon measures after further adjustment for BMI, physical activity, and dietary fiber and fat. For example, 60 minutes greater WASO was associated with an approximate 26% population standard deviation reduction in microbial richness as measured by Chao1. In fully-adjusted models, greater daytime sleepiness was associated with lower richness and diversity on all indices (P = .01-.06). The ESS and sleep duration were not associated with microbiota richness or diversity.

“Our results suggest that sleep quality is associated with gut microbiome richness and diversity,” Dr. Hagen said. “Our results are in line with other research on this topic. What’s interesting is how your sleep over a period of time is affecting these measures of your microbiome. That’s something people can do something about with [eating] habits over time. What would be great is to collect longitudinal data so that you could characterize sleep over a longer period of time, but also so you could measure the microbiome at different time points to see what’s changing with changes in sleep. That would be interesting to untangle.”

She acknowledged certain limitations of the study, including the small sample size and the cross-sectional design. The study was supported by the University of Wisconsin School of Medicine and Public Health through the Wisconsin Partnership Program.

SOURCE: Hagen EW et al. SLEEP 2019, Abstract 0106.

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Key clinical point: Better quality of sleep, but not duration of sleep, was associated with greater species richness and diversity of the gut microbiome.

Major finding: In fully adjusted models, greater daytime sleepiness was associated with lower richness and diversity of the gut microbiome on all indices (P = .01-.06).

Study details: An assessment of 482 individuals who participated in the Survey of the Health of Wisconsin.

Disclosures: The study was supported by the University of Wisconsin School of Medicine and Public Health through the Wisconsin Partnership Program.

Source: Hagen EW et al. SLEEP 2019, Abstract 0106.

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Mortality risk from mild to moderate OSA modified by age

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Mon, 06/24/2019 - 13:52

Mortality risk associated with mild to moderate sleep apnea is modified by age, results from a large longitudinal analysis showed.

Dr. Alexandros N. Vgontzas

“The association between severe OSA and significant morbidity and mortality – particularly cardiovascular in nature – is well established,” the study’s first author, Alexandros N. Vgontzas, MD, said at the annual meeting of the Associated Professional Sleep Societies. “In contrast, mild to moderate OSA is highly prevalent in the general population but its association with morbidity and mortality is not well established.”

In an effort to examine the association between mild to moderate OSA and all-cause mortality, Dr. Vgontzas and colleagues drew from the Penn State Adult Cohort, a random general population sample of 1,741 men and women who were studied in the sleep lab with an 8-hour polysomnography at baseline and followed for a mean of 19.2 years for all-cause mortality.

The researchers retrieved mortality data from the Centers for Disease Control and Prevention’s National Death Index and defined mild OSA as an apnea/hypopnea index (AHI) of 5-14.9 events per hour, while moderate OSA was defined as an AHI of 15-29.9 events per hour. They used Cox proportional hazards regression to estimate all-cause mortality and adjusted for race, sex, body mass index, smoking, hypertension, diabetes, heart problems, and stroke.

Dr. Vgontzas, of the Sleep Research and Treatment Center at Penn State University, Hershey, Pa., reported that 596 individuals have died since the study began. On adjusted analysis, patients with an AHI between 5 and 29 were 1.28 times as likely to die overall (P = .019). The researchers found that the association with mortality was stronger among patients younger than age 60, compared with those aged 60 and older. The hazard ratio was 1.44 for study participants younger than age 60 (P = .027), and 1.14 for those aged 60 and older (P = .34).



“Mild to moderate sleep apnea is associated with significant all-cause mortality risk, but the strength of the association decreases markedly with age,” Dr. Vgontzas concluded. “These findings are in line with previous findings that the association of mild to moderate OSA with cardiometabolic risk is modified by age and suggests that OSA in older adults is a distinctly different phenotype than in the young and middle-aged.”

The explanation for the association remains unclear. “Is it because the people of older age have some kind of genetic protection, or is because their sleep apnea is milder?” he asked. “We don’t have the data to tell.”

Dr. Vgontzas reported having no financial disclosures.

SOURCE: Vgontzas A et al. SLEEP 2019, abstract 0504.

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Mortality risk associated with mild to moderate sleep apnea is modified by age, results from a large longitudinal analysis showed.

Dr. Alexandros N. Vgontzas

“The association between severe OSA and significant morbidity and mortality – particularly cardiovascular in nature – is well established,” the study’s first author, Alexandros N. Vgontzas, MD, said at the annual meeting of the Associated Professional Sleep Societies. “In contrast, mild to moderate OSA is highly prevalent in the general population but its association with morbidity and mortality is not well established.”

In an effort to examine the association between mild to moderate OSA and all-cause mortality, Dr. Vgontzas and colleagues drew from the Penn State Adult Cohort, a random general population sample of 1,741 men and women who were studied in the sleep lab with an 8-hour polysomnography at baseline and followed for a mean of 19.2 years for all-cause mortality.

The researchers retrieved mortality data from the Centers for Disease Control and Prevention’s National Death Index and defined mild OSA as an apnea/hypopnea index (AHI) of 5-14.9 events per hour, while moderate OSA was defined as an AHI of 15-29.9 events per hour. They used Cox proportional hazards regression to estimate all-cause mortality and adjusted for race, sex, body mass index, smoking, hypertension, diabetes, heart problems, and stroke.

Dr. Vgontzas, of the Sleep Research and Treatment Center at Penn State University, Hershey, Pa., reported that 596 individuals have died since the study began. On adjusted analysis, patients with an AHI between 5 and 29 were 1.28 times as likely to die overall (P = .019). The researchers found that the association with mortality was stronger among patients younger than age 60, compared with those aged 60 and older. The hazard ratio was 1.44 for study participants younger than age 60 (P = .027), and 1.14 for those aged 60 and older (P = .34).



“Mild to moderate sleep apnea is associated with significant all-cause mortality risk, but the strength of the association decreases markedly with age,” Dr. Vgontzas concluded. “These findings are in line with previous findings that the association of mild to moderate OSA with cardiometabolic risk is modified by age and suggests that OSA in older adults is a distinctly different phenotype than in the young and middle-aged.”

The explanation for the association remains unclear. “Is it because the people of older age have some kind of genetic protection, or is because their sleep apnea is milder?” he asked. “We don’t have the data to tell.”

Dr. Vgontzas reported having no financial disclosures.

SOURCE: Vgontzas A et al. SLEEP 2019, abstract 0504.

Mortality risk associated with mild to moderate sleep apnea is modified by age, results from a large longitudinal analysis showed.

Dr. Alexandros N. Vgontzas

“The association between severe OSA and significant morbidity and mortality – particularly cardiovascular in nature – is well established,” the study’s first author, Alexandros N. Vgontzas, MD, said at the annual meeting of the Associated Professional Sleep Societies. “In contrast, mild to moderate OSA is highly prevalent in the general population but its association with morbidity and mortality is not well established.”

In an effort to examine the association between mild to moderate OSA and all-cause mortality, Dr. Vgontzas and colleagues drew from the Penn State Adult Cohort, a random general population sample of 1,741 men and women who were studied in the sleep lab with an 8-hour polysomnography at baseline and followed for a mean of 19.2 years for all-cause mortality.

The researchers retrieved mortality data from the Centers for Disease Control and Prevention’s National Death Index and defined mild OSA as an apnea/hypopnea index (AHI) of 5-14.9 events per hour, while moderate OSA was defined as an AHI of 15-29.9 events per hour. They used Cox proportional hazards regression to estimate all-cause mortality and adjusted for race, sex, body mass index, smoking, hypertension, diabetes, heart problems, and stroke.

Dr. Vgontzas, of the Sleep Research and Treatment Center at Penn State University, Hershey, Pa., reported that 596 individuals have died since the study began. On adjusted analysis, patients with an AHI between 5 and 29 were 1.28 times as likely to die overall (P = .019). The researchers found that the association with mortality was stronger among patients younger than age 60, compared with those aged 60 and older. The hazard ratio was 1.44 for study participants younger than age 60 (P = .027), and 1.14 for those aged 60 and older (P = .34).



“Mild to moderate sleep apnea is associated with significant all-cause mortality risk, but the strength of the association decreases markedly with age,” Dr. Vgontzas concluded. “These findings are in line with previous findings that the association of mild to moderate OSA with cardiometabolic risk is modified by age and suggests that OSA in older adults is a distinctly different phenotype than in the young and middle-aged.”

The explanation for the association remains unclear. “Is it because the people of older age have some kind of genetic protection, or is because their sleep apnea is milder?” he asked. “We don’t have the data to tell.”

Dr. Vgontzas reported having no financial disclosures.

SOURCE: Vgontzas A et al. SLEEP 2019, abstract 0504.

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Key clinical point: Among adults with mild to moderate obstructive sleep apnea, the risk of mortality is highest among those younger than age 60.

Major finding: The hazard ratio for mortality was 1.44 for study participants younger than age 60 (P = .027), and 1.14 for those aged 60 and older (P = .34).

Study details: An analysis of 1,741 men and women from the Penn State Adult Cohort.

Disclosures: Dr. Vgontzas reported having no financial disclosures.

Source: Vgontzas A et al. SLEEP 2019, Abstract 0504.

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Daytime eating schedule found to help with weight management

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– In adults of normal weight, a small controlled study has shown that a daytime eating schedule promoted weight loss and a positive profile for fuel oxidation, energy metabolism, and hormonal markers, compared with a nighttime eating schedule, independent of caloric intake.

Doug Brunk/MDedge News
Dr. Namni Goel

The findings come from an 8-week controlled trial presented at the annual meeting of the Associated Professional Sleep Societies, which set out to examine the impact of a daytime versus delayed eating schedule on body mass, adiposity, and energy homeostasis in adults of normal weight.

“It is best to stop eating as early as possible in the day, and to not eat late at night,” the study’s first author, Namni Goel, PhD, said in an interview at the meeting. “There’s an open question in our field: Should you stop eating at 7:00 p.m.? 8:00 p.m.? My own feeling is, the longer it is between when you stop eating and go to bed, the better off you are metabolically.”



Dr. Goel, associate professor in the division of sleep and chronobiology in the department of psychiatry at the University of Pennsylvania, Philadelphia, and colleagues enrolled 12 healthy adults to participate in a randomized cross-over study in free-living conditions. Three meals and two snacks consisting of comparable energy and macronutrient content were provided during two 8-week counterbalanced phases: 1) daytime eating (food consumed between 8:00 a.m. and 7:00 p.m, and 2) delayed eating (food consumed between 12:00 p.m. and 11:00 p.m. A 2-week washout period occurred between the conditions. “What we wanted to do is just manipulate the timing of eating and we provided all of the meals so we could control the caloric intake,” Dr. Goel said.

The researchers asked participants to maintain a sleep-wake cycle between 11:00 p.m. and 9:00 a.m. (verified by wrist actigraphy) and to limit physical activity. They assessed weight, adiposity, energy metabolism, and hormonal markers during four inpatient visits: 1) baseline; 2) after the first eating condition; 3) after the washout period, before the second eating condition began; and 4) after the second eating condition. They used two-way analysis of variance and Cohen’s d effect sizes to examine changes in anthropometrics and metabolic measures affected by eating schedule (daytime vs. delayed) and time (before vs. after each eating schedule).

 

 


The mean age of 12 study participants was 26 years; five were females. Their mean body mass index was 21.9 kg/m2. Dr. Goel reported that participants had excellent adherence to assigned eating schedules, with no differences between the conditions. Weight was decreased on the daytime vs. delayed eating schedule. Specifically, Cohen’s d effect sizes were 0.57 overall: 1.16 for females and 0.33 for males, all in the small to large range. Resting energy expenditure, respiratory quotient, and trunk fat percentage/leg fat percentage were decreased on the daytime vs. delayed eating condition, with Cohen’s d effect sizes of 0.45-1.02, all in the medium to large range. In addition, total cholesterol and insulin were decreased on the daytime eating condition (medium effect sizes of 0.60 and 0.57, respectively), while triglycerides and glucose were increased on the delayed condition (medium effect sizes of 0.46 and 0.52, respectively).

Weight, adiposity, energy metabolism, and hormonal measures did not differ significantly between the pre-daytime and pre-delayed eating conditions, suggesting that they returned to pre-condition levels after the washout period.

“One of the things we’re advocating is that with consistent daytime eating, you can lose weight and/or remain at weight maintenance,” Dr. Goel said. “Consistency is very important. Across 8 weeks, you’re becoming metabolically healthier because you’re not eating that late-night meal or snack. We had shown in previous sleep loss studies that people were eating 500 calories late in the evening on consecutive nights and gaining a substantial amount of weight.”

She and her colleagues are currently enrolling obese individuals into a similarly designed trial, “where we expect much bigger changes metabolically,” she said. The study was funded by a grant from the National Institutes of Health. Dr. Goel reported having no financial disclosures.

SOURCE: Goel N et al. SLEEP 2019, Abstract 0036.

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– In adults of normal weight, a small controlled study has shown that a daytime eating schedule promoted weight loss and a positive profile for fuel oxidation, energy metabolism, and hormonal markers, compared with a nighttime eating schedule, independent of caloric intake.

Doug Brunk/MDedge News
Dr. Namni Goel

The findings come from an 8-week controlled trial presented at the annual meeting of the Associated Professional Sleep Societies, which set out to examine the impact of a daytime versus delayed eating schedule on body mass, adiposity, and energy homeostasis in adults of normal weight.

“It is best to stop eating as early as possible in the day, and to not eat late at night,” the study’s first author, Namni Goel, PhD, said in an interview at the meeting. “There’s an open question in our field: Should you stop eating at 7:00 p.m.? 8:00 p.m.? My own feeling is, the longer it is between when you stop eating and go to bed, the better off you are metabolically.”



Dr. Goel, associate professor in the division of sleep and chronobiology in the department of psychiatry at the University of Pennsylvania, Philadelphia, and colleagues enrolled 12 healthy adults to participate in a randomized cross-over study in free-living conditions. Three meals and two snacks consisting of comparable energy and macronutrient content were provided during two 8-week counterbalanced phases: 1) daytime eating (food consumed between 8:00 a.m. and 7:00 p.m, and 2) delayed eating (food consumed between 12:00 p.m. and 11:00 p.m. A 2-week washout period occurred between the conditions. “What we wanted to do is just manipulate the timing of eating and we provided all of the meals so we could control the caloric intake,” Dr. Goel said.

The researchers asked participants to maintain a sleep-wake cycle between 11:00 p.m. and 9:00 a.m. (verified by wrist actigraphy) and to limit physical activity. They assessed weight, adiposity, energy metabolism, and hormonal markers during four inpatient visits: 1) baseline; 2) after the first eating condition; 3) after the washout period, before the second eating condition began; and 4) after the second eating condition. They used two-way analysis of variance and Cohen’s d effect sizes to examine changes in anthropometrics and metabolic measures affected by eating schedule (daytime vs. delayed) and time (before vs. after each eating schedule).

 

 


The mean age of 12 study participants was 26 years; five were females. Their mean body mass index was 21.9 kg/m2. Dr. Goel reported that participants had excellent adherence to assigned eating schedules, with no differences between the conditions. Weight was decreased on the daytime vs. delayed eating schedule. Specifically, Cohen’s d effect sizes were 0.57 overall: 1.16 for females and 0.33 for males, all in the small to large range. Resting energy expenditure, respiratory quotient, and trunk fat percentage/leg fat percentage were decreased on the daytime vs. delayed eating condition, with Cohen’s d effect sizes of 0.45-1.02, all in the medium to large range. In addition, total cholesterol and insulin were decreased on the daytime eating condition (medium effect sizes of 0.60 and 0.57, respectively), while triglycerides and glucose were increased on the delayed condition (medium effect sizes of 0.46 and 0.52, respectively).

Weight, adiposity, energy metabolism, and hormonal measures did not differ significantly between the pre-daytime and pre-delayed eating conditions, suggesting that they returned to pre-condition levels after the washout period.

“One of the things we’re advocating is that with consistent daytime eating, you can lose weight and/or remain at weight maintenance,” Dr. Goel said. “Consistency is very important. Across 8 weeks, you’re becoming metabolically healthier because you’re not eating that late-night meal or snack. We had shown in previous sleep loss studies that people were eating 500 calories late in the evening on consecutive nights and gaining a substantial amount of weight.”

She and her colleagues are currently enrolling obese individuals into a similarly designed trial, “where we expect much bigger changes metabolically,” she said. The study was funded by a grant from the National Institutes of Health. Dr. Goel reported having no financial disclosures.

SOURCE: Goel N et al. SLEEP 2019, Abstract 0036.

– In adults of normal weight, a small controlled study has shown that a daytime eating schedule promoted weight loss and a positive profile for fuel oxidation, energy metabolism, and hormonal markers, compared with a nighttime eating schedule, independent of caloric intake.

Doug Brunk/MDedge News
Dr. Namni Goel

The findings come from an 8-week controlled trial presented at the annual meeting of the Associated Professional Sleep Societies, which set out to examine the impact of a daytime versus delayed eating schedule on body mass, adiposity, and energy homeostasis in adults of normal weight.

“It is best to stop eating as early as possible in the day, and to not eat late at night,” the study’s first author, Namni Goel, PhD, said in an interview at the meeting. “There’s an open question in our field: Should you stop eating at 7:00 p.m.? 8:00 p.m.? My own feeling is, the longer it is between when you stop eating and go to bed, the better off you are metabolically.”



Dr. Goel, associate professor in the division of sleep and chronobiology in the department of psychiatry at the University of Pennsylvania, Philadelphia, and colleagues enrolled 12 healthy adults to participate in a randomized cross-over study in free-living conditions. Three meals and two snacks consisting of comparable energy and macronutrient content were provided during two 8-week counterbalanced phases: 1) daytime eating (food consumed between 8:00 a.m. and 7:00 p.m, and 2) delayed eating (food consumed between 12:00 p.m. and 11:00 p.m. A 2-week washout period occurred between the conditions. “What we wanted to do is just manipulate the timing of eating and we provided all of the meals so we could control the caloric intake,” Dr. Goel said.

The researchers asked participants to maintain a sleep-wake cycle between 11:00 p.m. and 9:00 a.m. (verified by wrist actigraphy) and to limit physical activity. They assessed weight, adiposity, energy metabolism, and hormonal markers during four inpatient visits: 1) baseline; 2) after the first eating condition; 3) after the washout period, before the second eating condition began; and 4) after the second eating condition. They used two-way analysis of variance and Cohen’s d effect sizes to examine changes in anthropometrics and metabolic measures affected by eating schedule (daytime vs. delayed) and time (before vs. after each eating schedule).

 

 


The mean age of 12 study participants was 26 years; five were females. Their mean body mass index was 21.9 kg/m2. Dr. Goel reported that participants had excellent adherence to assigned eating schedules, with no differences between the conditions. Weight was decreased on the daytime vs. delayed eating schedule. Specifically, Cohen’s d effect sizes were 0.57 overall: 1.16 for females and 0.33 for males, all in the small to large range. Resting energy expenditure, respiratory quotient, and trunk fat percentage/leg fat percentage were decreased on the daytime vs. delayed eating condition, with Cohen’s d effect sizes of 0.45-1.02, all in the medium to large range. In addition, total cholesterol and insulin were decreased on the daytime eating condition (medium effect sizes of 0.60 and 0.57, respectively), while triglycerides and glucose were increased on the delayed condition (medium effect sizes of 0.46 and 0.52, respectively).

Weight, adiposity, energy metabolism, and hormonal measures did not differ significantly between the pre-daytime and pre-delayed eating conditions, suggesting that they returned to pre-condition levels after the washout period.

“One of the things we’re advocating is that with consistent daytime eating, you can lose weight and/or remain at weight maintenance,” Dr. Goel said. “Consistency is very important. Across 8 weeks, you’re becoming metabolically healthier because you’re not eating that late-night meal or snack. We had shown in previous sleep loss studies that people were eating 500 calories late in the evening on consecutive nights and gaining a substantial amount of weight.”

She and her colleagues are currently enrolling obese individuals into a similarly designed trial, “where we expect much bigger changes metabolically,” she said. The study was funded by a grant from the National Institutes of Health. Dr. Goel reported having no financial disclosures.

SOURCE: Goel N et al. SLEEP 2019, Abstract 0036.

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Key clinical point: A daytime eating schedule is likely beneficial for weight management and metabolic health.

Major finding: Weight was decreased on the daytime vs. delayed eating schedule with Cohen’s d effect of 0.57 overall: 1.16 for females and 0.33 for males, all in the small to large range.

Study details: A randomized trial of 12 healthy adults with normal body weight.

Disclosures: The study was funded by a grant from the National Institutes of Health. Dr. Goel reported having no financial disclosures.

Source: Goel N et al. SLEEP 2019, Abstract 0036.

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New lemborexant efficacy and safety data unveiled

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Wed, 05/06/2020 - 12:23

 

Lemborexant was effective in treating both sleep onset and maintenance variables in male and female subjects with insomnia, and it was well tolerated by both sexes, results from a pooled analysis showed.

Doug Brunk/MDedge News
Dr. Margaret Moline

A dual orexin receptor antagonist developed by Eisai, lemborexant is being studied as a treatment for insomnia disorder and irregular sleep-wake rhythm disorder. Early in 2019, the Food and Drug Administration accepted for review the New Drug Application for lemborexant for the treatment of insomnia. A target Prescription Drug User Fee Act date is set for Dec. 27, 2019.

“We evaluated early on whether exposure to lemborexant was going to be different between men and women,” lead study author Margaret Moline, PhD, said during an interview at the annual meeting of the Associated Professional Sleep Societies. “With some drugs, like zolpidem and other so-called Z drugs, because exposure is different, clinical studies could involve different dosing for different sexes. Because we knew the exposure to lemborexant wasn’t different between the sexes, we expected to see similar results in both sexes. That was the case.”

Dr. Moline, executive director of the Neurology Business Group and International Project Team Lead for the lemborexant clinical development program at Eisai, and colleagues presented pooled analyses of subject-reported sleep onset latency (sSOL) and subject-reported wake after sleep onset (sWASO) from lemborexant phase 3 studies, SUNRISE-1 and SUNRISE-2. SUNRISE-1 was a 1-month, double-blind, placebo- and active-controlled, parallel-group study in 1,006 subjects. Participants were females aged 55 years and older and males aged 65 years and older with a primary complaint of sleep maintenance difficulties and an Insomnia Severity Index (ISI) total score of 13 or higher. SUNRISE-2 was a placebo-controlled, 6-month, active treatment, double-blind, parallel-group study in 949 subjects with insomnia disorder. Participants were females and males aged 18 years and older with a primary complaint of sleep onset and/or sleep maintenance difficulties and an ISI total score of 15 or higher. Both analyses included subjects randomized to placebo, lemborexant 5 mg, or lemborexant 10 mg. Each study included a single-blind placebo run-in period prior to randomization.



The pooled analysis of 1,693 subjects included 402 (23.7%) men and 1,291 (76.3%) women. Results on sSOL and sWASO were consistent with the significant results on sleep diary in the individual studies. In both sexes, sSOL for lemborexant 5 mg and lemborexant 10 mg was significantly reduced versus that for placebo during the first 7 days and end of month 1 (P less than .05 for all comparisons). In women, the researchers observed significantly greater reductions in sWASO placebo for both lemborexant doses versus that with placebo (first 7 days and end of month 1; P less than .0001 for all comparisons). In males, sWASO decreased significantly, compared with placebo, for the first 7 days (lemborexant 5 mg and lemborexant 10 mg; P equal to or less than .0001) and at end of month 1 (lemborexant 10 mg only; P = .0032). For placebo, lemborexant 5 mg, and lemborexant 10 mg, the overall incidence of treatment-emergent adverse events was similar across sexes. Incidence of treatment-emergent serious adverse events was low for both sex subgroups; most events occurred in one subject each. Treatment-emergent adverse events leading to study drug withdrawal or interruption were few and similar across sexes for all treatments and was highest in males receiving lemborexant 10 mg. The most frequent treatment-emergent adverse events reported in males were somnolence, fatigue, and headache, while the most common in females were somnolence, headache, and urinary tract infection. About 3% of females (no males) reported a urinary tract infection; the incidence in females was similar across treatment groups.

“Overall, sleep diary outcomes in males and females were consistent with the significant results observed in the total populations of the individual studies,” Dr. Moline concluded. “A dose adjustment based on sex is not anticipated.”

The research was supported by Eisai. Dr. Moline is an employee of the company.

SOURCE: Moline M et al. Sleep 2019, Abstract 0368.

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Lemborexant was effective in treating both sleep onset and maintenance variables in male and female subjects with insomnia, and it was well tolerated by both sexes, results from a pooled analysis showed.

Doug Brunk/MDedge News
Dr. Margaret Moline

A dual orexin receptor antagonist developed by Eisai, lemborexant is being studied as a treatment for insomnia disorder and irregular sleep-wake rhythm disorder. Early in 2019, the Food and Drug Administration accepted for review the New Drug Application for lemborexant for the treatment of insomnia. A target Prescription Drug User Fee Act date is set for Dec. 27, 2019.

“We evaluated early on whether exposure to lemborexant was going to be different between men and women,” lead study author Margaret Moline, PhD, said during an interview at the annual meeting of the Associated Professional Sleep Societies. “With some drugs, like zolpidem and other so-called Z drugs, because exposure is different, clinical studies could involve different dosing for different sexes. Because we knew the exposure to lemborexant wasn’t different between the sexes, we expected to see similar results in both sexes. That was the case.”

Dr. Moline, executive director of the Neurology Business Group and International Project Team Lead for the lemborexant clinical development program at Eisai, and colleagues presented pooled analyses of subject-reported sleep onset latency (sSOL) and subject-reported wake after sleep onset (sWASO) from lemborexant phase 3 studies, SUNRISE-1 and SUNRISE-2. SUNRISE-1 was a 1-month, double-blind, placebo- and active-controlled, parallel-group study in 1,006 subjects. Participants were females aged 55 years and older and males aged 65 years and older with a primary complaint of sleep maintenance difficulties and an Insomnia Severity Index (ISI) total score of 13 or higher. SUNRISE-2 was a placebo-controlled, 6-month, active treatment, double-blind, parallel-group study in 949 subjects with insomnia disorder. Participants were females and males aged 18 years and older with a primary complaint of sleep onset and/or sleep maintenance difficulties and an ISI total score of 15 or higher. Both analyses included subjects randomized to placebo, lemborexant 5 mg, or lemborexant 10 mg. Each study included a single-blind placebo run-in period prior to randomization.



The pooled analysis of 1,693 subjects included 402 (23.7%) men and 1,291 (76.3%) women. Results on sSOL and sWASO were consistent with the significant results on sleep diary in the individual studies. In both sexes, sSOL for lemborexant 5 mg and lemborexant 10 mg was significantly reduced versus that for placebo during the first 7 days and end of month 1 (P less than .05 for all comparisons). In women, the researchers observed significantly greater reductions in sWASO placebo for both lemborexant doses versus that with placebo (first 7 days and end of month 1; P less than .0001 for all comparisons). In males, sWASO decreased significantly, compared with placebo, for the first 7 days (lemborexant 5 mg and lemborexant 10 mg; P equal to or less than .0001) and at end of month 1 (lemborexant 10 mg only; P = .0032). For placebo, lemborexant 5 mg, and lemborexant 10 mg, the overall incidence of treatment-emergent adverse events was similar across sexes. Incidence of treatment-emergent serious adverse events was low for both sex subgroups; most events occurred in one subject each. Treatment-emergent adverse events leading to study drug withdrawal or interruption were few and similar across sexes for all treatments and was highest in males receiving lemborexant 10 mg. The most frequent treatment-emergent adverse events reported in males were somnolence, fatigue, and headache, while the most common in females were somnolence, headache, and urinary tract infection. About 3% of females (no males) reported a urinary tract infection; the incidence in females was similar across treatment groups.

“Overall, sleep diary outcomes in males and females were consistent with the significant results observed in the total populations of the individual studies,” Dr. Moline concluded. “A dose adjustment based on sex is not anticipated.”

The research was supported by Eisai. Dr. Moline is an employee of the company.

SOURCE: Moline M et al. Sleep 2019, Abstract 0368.

 

Lemborexant was effective in treating both sleep onset and maintenance variables in male and female subjects with insomnia, and it was well tolerated by both sexes, results from a pooled analysis showed.

Doug Brunk/MDedge News
Dr. Margaret Moline

A dual orexin receptor antagonist developed by Eisai, lemborexant is being studied as a treatment for insomnia disorder and irregular sleep-wake rhythm disorder. Early in 2019, the Food and Drug Administration accepted for review the New Drug Application for lemborexant for the treatment of insomnia. A target Prescription Drug User Fee Act date is set for Dec. 27, 2019.

“We evaluated early on whether exposure to lemborexant was going to be different between men and women,” lead study author Margaret Moline, PhD, said during an interview at the annual meeting of the Associated Professional Sleep Societies. “With some drugs, like zolpidem and other so-called Z drugs, because exposure is different, clinical studies could involve different dosing for different sexes. Because we knew the exposure to lemborexant wasn’t different between the sexes, we expected to see similar results in both sexes. That was the case.”

Dr. Moline, executive director of the Neurology Business Group and International Project Team Lead for the lemborexant clinical development program at Eisai, and colleagues presented pooled analyses of subject-reported sleep onset latency (sSOL) and subject-reported wake after sleep onset (sWASO) from lemborexant phase 3 studies, SUNRISE-1 and SUNRISE-2. SUNRISE-1 was a 1-month, double-blind, placebo- and active-controlled, parallel-group study in 1,006 subjects. Participants were females aged 55 years and older and males aged 65 years and older with a primary complaint of sleep maintenance difficulties and an Insomnia Severity Index (ISI) total score of 13 or higher. SUNRISE-2 was a placebo-controlled, 6-month, active treatment, double-blind, parallel-group study in 949 subjects with insomnia disorder. Participants were females and males aged 18 years and older with a primary complaint of sleep onset and/or sleep maintenance difficulties and an ISI total score of 15 or higher. Both analyses included subjects randomized to placebo, lemborexant 5 mg, or lemborexant 10 mg. Each study included a single-blind placebo run-in period prior to randomization.



The pooled analysis of 1,693 subjects included 402 (23.7%) men and 1,291 (76.3%) women. Results on sSOL and sWASO were consistent with the significant results on sleep diary in the individual studies. In both sexes, sSOL for lemborexant 5 mg and lemborexant 10 mg was significantly reduced versus that for placebo during the first 7 days and end of month 1 (P less than .05 for all comparisons). In women, the researchers observed significantly greater reductions in sWASO placebo for both lemborexant doses versus that with placebo (first 7 days and end of month 1; P less than .0001 for all comparisons). In males, sWASO decreased significantly, compared with placebo, for the first 7 days (lemborexant 5 mg and lemborexant 10 mg; P equal to or less than .0001) and at end of month 1 (lemborexant 10 mg only; P = .0032). For placebo, lemborexant 5 mg, and lemborexant 10 mg, the overall incidence of treatment-emergent adverse events was similar across sexes. Incidence of treatment-emergent serious adverse events was low for both sex subgroups; most events occurred in one subject each. Treatment-emergent adverse events leading to study drug withdrawal or interruption were few and similar across sexes for all treatments and was highest in males receiving lemborexant 10 mg. The most frequent treatment-emergent adverse events reported in males were somnolence, fatigue, and headache, while the most common in females were somnolence, headache, and urinary tract infection. About 3% of females (no males) reported a urinary tract infection; the incidence in females was similar across treatment groups.

“Overall, sleep diary outcomes in males and females were consistent with the significant results observed in the total populations of the individual studies,” Dr. Moline concluded. “A dose adjustment based on sex is not anticipated.”

The research was supported by Eisai. Dr. Moline is an employee of the company.

SOURCE: Moline M et al. Sleep 2019, Abstract 0368.

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