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Health information exchange systems and length of stay in readmissions to a different hospital

Readmissions within a relatively short time after discharge are receiving considerable attention as an area of quality improvement,[1, 2] with increasing emphasis on the relatively large share of readmissions to different hospitals, accounting for 20% to 30% of all readmissions.[3, 4, 5, 6] Returning to a different hospital may affect patient and healthcare outcomes due to breaches in continuity. When information from the previous recent hospitalization is not transferred efficiently and accurately to the next admitting hospital, omissions and duplications can occur, resulting in delayed care and potentially worse outcomes (compared to same hospital readmissions [SHRs]), such as longer length of readmission stay (LORS) and increased costs.[7]

Electronic health records (EHRs) and health information exchange (HIE) systems are increasingly used for storage and retrieval of patient information from various sources, such as laboratories and previous physician visits and hospitalizations, enabling informational continuity by providing vital historical medical information for decision‐making. Whereas EHRs collect, store, and present information that is locally created within a specific clinic or hospital, HIEs connect EHR systems between multiple institutions, allowing providers to share clinical data and achieve interorganizational continuity. Such integrative systems are increasingly being implemented across healthcare systems worldwide.[8, 9, 10] Yet, technical difficulties, costs, competitive concerns, data privacy, and workflow implementation challenges have been described as hindering HIE participation.[11, 12, 13, 14] Moreover, major concerns exist regarding the poor usability of EHRs, their limited ability to support multidisciplinary care, and major difficulties in achieving interoperability with HIEs, which undermine efforts to deliver integrated patient‐centered care.[15] Nonetheless, previous research has demonstrated that HIEs can positively affect healthcare resource use and outcomes, including reduced rates of repeated diagnostic imaging in the emergency evaluation of back pain,[16] reduction in admissions via the emergency department (ED),[17] and reduced rates of readmissions within 7 days.[18] However, it is not known whether HIEs can contribute to positive outcomes when patients are readmitted to a different hospital than the hospital from which they were recently (within the previous 30 days) discharged, potentially bridging the transitional‐care information divide.

In Israel, an innovative HIE system, OFEK (literally horizon), was implemented in 2005 at the largest not‐for‐profit insurer and provider of services, Clalit Health Services (Clalit). Clalit operates as an integrated healthcare delivery system, serving more than 50% of the Israeli population, as part of the country's national health insurance system. OFEK links information on all Clalit enrollees from all hospitals, primary care, and specialty care clinics, laboratories, and diagnostic services into a single, virtual, patient file, enabling providers to obtain complete, real‐time information needed for healthcare decision making at the point of care. Like similar HIE systems, OFEK includes information on previous medical encounters and hospitalizations, previous diagnoses, chronically prescribed medications, previous lab and imaging tests, known allergies, and some demographic information.[19] At the time of this study, OFEK was available in all Clalit hospitals as well as in 2 non‐Clalit (government‐owned and operated) large tertiary‐care centers, resulting in 40% coverage of all hospitalizations through the OFEK HIE system. As part of a large organization‐wide readmission reduction program recently implemented by Clalit for all its members admitted to any hospital in Israel, aimed at early detection and intervention,[20] OFEK was viewed as an important mechanism to help maintain continuity and improve transitions.

To inform current knowledge on different‐hospital readmissions (DHRs) and HIEs, we examined whether having HIE systems can contribute to information continuity and prevent delays in care and the need for more expensive, lengthy readmission stays when patients are readmitted to a different hospital. More specifically, we tested whether there is a difference in the LORS between SHRs and DHRs, and whether DHRs the LORS differ by the availability of an HIE (whether index and readmitting hospital are or are not connected through HIE systems).

METHODS

Study Design and Setting

We conducted a retrospective cohort study based on data of hospitalized Clalit members. Clalit has a centralized data warehouse with a comprehensive EHR containing data on all patients' medical encounters, administrative data, and clinical data compiled from laboratories, imaging centers, and hospitals. At the time of the study, OFEK was operating in all 8 Clalit hospitals and in 2 large government‐owned and operated hospitals in the central and northern parts of the country. Information is linked in the Clalit system and OFEK‐affiliated hospitals through an individual identity number assigned by the Israeli Interior Ministry to every Israeli resident for general identification purposes.

Population

The study examined all internal medicine and intensive‐care unit (ICU) readmissions of adult Clalit members (aged 18 years and older) previously (within the prior 30 days) discharged from internal medicine departments during January 1, 2010 until December 31, 2010 (ie, index hospitalizations). Only readmissions of index hospitalizations with more than a 24‐hour stay were included. A total of 146,266 index hospitalizations met the inclusion criteria. Index admissions that resulted in a transfer to another hospital, a long‐term care facility, or rehabilitation center were not included (N = 11,831). The final study sample included 27,057 readmissions (20.1% of the 134,435 index admissions), which could have resulted in any type of discharge (to patient's home, a long‐term care or rehabilitation facility, or due to death). The study was approved by Clalit's institutional review board.

Outcome Variable

We defined the LORS as the number of days from admission to discharge during readmission.

Main Independent Variable

We assessed information continuity as a categorical variable in which 0 = no information continuity (DHRs with either no HIE at either hospital or an HIE in only 1 of the hospitals), 1 = information continuity through an HIE (DHRs with both hospitals having an HIE), and 2 = full information continuity (readmission to the same hospital).

Covariates

We examined the following known correlates of length of stay (LOS): age, gender, residency in a nursing home, socioeconomic status (SES) based on an indicator of social security entitlement received by low‐income members,[21] and the occurrence of common chronic conditions registered in Clalit's EHR registries[22]: congestive heart failure (CHF), chronic obstructive pulmonary disease (COPD), chronic renal failure (CRF), malignancy, diabetes, hypertension, ischemic heart disease, atrial fibrillation, asthma, and disability (indication of a functional limitation). To provide comorbidity adjustment we used the Charlson Comorbidity Index.[23] Additionally, we assessed LOS of the index hospitalization. We included an indicator for the size of the index hospital: small, fewer than 100 beds; medium, 100 to 200 beds; and large, more than 200 beds. Finally, to account for a well‐known correlate of length of hospital stay,[24] we included an indicator for an ICU stay during the readmission.

Statistical Analysis

We first examined the study populations' characteristics and calculated the average LORS for each SHR and DHR category. Due to the skewed distribution of LORS, we also calculated the median and interquartile range (IQR) of LORS and evaluated the difference between categories using the Kruskall‐Wallis test.[25] Sample‐size calculations showed that we would need a sample of >3000 admissions to have 80% power to detect a difference of 0.8 hospitalization days given the 1:3 ratio between the DHR groups. To examine the association between LORS and information continuity, we employed a univariate marginal Cox model.[26] Variables that were significantly (P < 0.05) associated with LORS in the univariate model were entered into a multivariate marginal Cox model, clustering by patient and using a robust sandwich covariance matrix estimate. Additionally, we performed a sensitivity analysis using hierarchichal modeling to account for potential variations due to hospital level factors. A low hazard ratio (<1) represented an association of the covariate with decreased likelihood of discharge, that is, longer LORS. All analyses were conducted with SPSS version 20 (IBM, Armonk, NY) and SAS version 9.3 (SAS Institute Inc., Cary, NC).

RESULTS

The study included a total of 27,057 readmissions, of which 23,927 (88.4%) were SHRs and 3130 (11.6%) were DHRs. Of all DHRs, in 792 (2.9%) of the cases, both hospitals had HIEs (partial information continuity), and in 2338 (8.6%), either 1 or both did not have an HIE system (thus meaning there was no information continuity). Characteristics of the study population are shown in Table 1. Most (75%) of the readmissions were of patients over the age of 65 years, though only 7% were nursing home residents. More than half the study's population consisted of patients with low SES. The most common chronic conditions were hypertension (77%), ischemic heart disease (52%), and diabetes (48%). Other chronic conditions were arrhythmia (38%), CHF (35%), disability (31%), COPD (28%), malignancy (28%), and asthma (16%). In more than 55% of the index hospitalizations, the LOS was 4 days or less, and most index admissions (64%) were in large hospitals. Table 1 also displays the study population by the type of readmission: SHR, DHR with HIE, and DHR without HIE. As compared to patients readmitted to the same hospital, patients with DHRs were younger (P < 0.001), less likely to be nursing home residents (P < 0.001), and had longer LOS during the index admission (P < 0.001). Additionally, patients with SHRs were more likely to have their index admission at a large hospital (P < 0.001), had a higher comorbidity score (P < 0.043), and were less likely be treated in the ICU during their readmission (P < 0.001) compared to their DHR counterparts. Patients with DHRs without an HIE were similar in most characteristics to those with an HIE, except for having an ICU stay during their readmission (6.4% compared with 9.2%, respectively).

Characteristics of Readmissions Within 30 Days
CharacteristicsAll Readmissions, n = 27,057SHR, n = 23,927DHR With HIE, n = 792DHR Without HIE, n = 2,338P Value
  • NOTE: Abbreviations: DHR, different hospital readmission; HIE, health information exchanges; LOS, length of stay; SD, standard deviation; SHR, same hospital readmission.

All personal characteristics 
Age, n (%)<0.001
1844 years1,328 (4.9)1,095 (4.6)58 (7.3)175 (7.5) 
4564 years5,370 (19.8)4,597 (19.2)197 (24.9)576 (24.6) 
6584 years14,059 (52.0)12,500 (52.2)402 (50.8)1,157 (49.5) 
85+ years6,300 (23.3)5,735 (24.0)135 (17.0)430 (18.4) 
Female sex, n (%)13,742 (50.8)12,040 (50.3)418 (52.8)1,284 (54.9)<0.001
Low socioeconomic status, n (%)15,473 (57.2)13,670 (57.1)453 (57.2)1,350 (57.7) 
Residency in a nursing home, n (%)1,857 (6.9)1,743 (7.3)27 (3.4)87 (3.7)<0.001
Common chronic conditions, n (%) 
Hypertension20,797 (76.9)18,484 (77.3)588 (74.2)1,725 (73.8)<0.001
Ischemic heart disease14,150 (52.3)12,577 (52.6)397 (50.1)1,176 (50.3)0.052
Diabetes13,052 (48.2)11,589 (48.4)345 (43.6)1,118 (47.8)0.024
Arrhythmia10,306 (38.1)9,197 (38.4)292 (36.9)817 (34.9)0.003
Chronic renal failure9,486 (35.1)8,454 (35.3)262 (33.1)770 (32.9)0.034
Congestive heart failure9,216 (34.1)8,232 (34.4)270 (34.1)714 (30.5)0.001
Disability8,362 (30.9)7,600 (31.8)165 (20.8)597 (25.5)<0.001
Chronic obstructive pulmonary disease7,671 (28.4)6,888 (28.8)201 (25.4)582 (24.9)<0.001
Malignancy7,642 (28.2)6,763 (28.3)220 (27.8)659 (28.2)0.954
Asthma4,491 (16.6)4,040 (16.9)109 (13.8)342 (14.6)0.002
Charlson score, mean [SD]4.54 [3.15]4.58 [3.14]4.14 [3.08]4.25 [3.24]0.043
Index hospitalization characteristics (LOS during index hospitalization), n (%)<0.001
24 days14,961 (55.3)13,310 (55.6)428 (54.0)1,223 (52.3) 
57 days6,366 (23.5)5,654 (23.6)174 (22.0)538 (23.0) 
8 days and more5,730 (21.2)4,963 (20.7)190 (24.0)577 (24.7) 
Hospital size in index hospitalization (no. of hospitals in each category), n (%)<0.001
Small, <100 beds (8)1,498 (5.5)1,166 (4.9)23 (2.9)309 (13.2) 
Medium, 100200 beds (9)8,129 (30.0)7,113 (29.7)316 (39.9)700 (29.9) 
Large, >200 beds (10)17,430 (64.4)15,648 (65.4)453 (57.2)1,329 (56.8) 
Intensive care unit during readmission, n (%)869 (3.2)647 (2.7)73 (9.2)149 (6.4)<0.001

The mean LORS in SHRs was shorter by 1 day than the mean LORS for DHRs: 6.3 (95% confidence interval [CI]: 6.2‐6.4) versus 7.3 (95% CI: 7.0‐7.6), respectively. Mean LORS in DHRs with or without HIE was 7.6 (95% CI: 7.0‐8.3) and 7.2 (95% CI: 6.8‐7.6), respectively. Although median LORS was similar (4 days), the IQR differed, resulting in significant differences between the SHR and DHR groups (Table 2).

LORS by Information Continuity
Information ContinuityNo. of ReadmissionsMean LORS (95% CI)Median (Q1Q3)Kruskal‐Wallis P Value
  • NOTE: Abbreviations: CI, confidence interval; DHRs, different hospital readmissions; HIE, health information exchanges; LORS, length of readmission stay; SHRs, same hospital readmissions.

SHRs23,927 (88.4)6.3 (6.26.4)4 (27) 
DHRs3,130 (11.6)7.3 (7.07.6)4 (28) 
DHRs with HIE792 (2.9)7.6 (7.08.3)4 (29) 
DHRs without HIE2,338 (8.7)7.2 (6.87.6)4 (28) 
Total27,0576.4 (6.36.5)4 (27)<0.001

In the multivariate model, partial continuity (DHRs with an HIE) was associated with decreased likelihood of discharge on any given day compared with full continuity (SHR) (hazard ratio [HR] = 0.85, 95% CI: 0.79‐0.91). Similar results were obtained for no continuity (DHRs without an HIE) (HR = 0.90, 95% CI: 0.86‐0.94). The difference between DHRs with and without an HIE was not significant (overlapping confidence intervals). Other factors associated with a lower HR for discharge during each day of the readmission were older age, residency in a nursing home, CHF, CRF, disability, malignancy, and long LOS (8+ days) during the index hospitalization. Patients with asthma or ischemic heart disease had a higher HR for discharge during each readmission day (Table 3). We performed a sensitivity analysis using hierarchical modeling (patients nested within hospitals), which resulted in similar findings in terms of directionality and magnitude of the relationships and significance levels.

Univariate and Multivariate Marginal Cox Model Predicting Time to Discharge in Readmissions
CharacteristicsUnivariate ModelMultivariate Model
Hazard Ratio (95% CI)P ValueHazard Ratio (95% CI)P Value
  • NOTE: Abbreviations: CI, confidence interval; DHRs, different hospital readmissions; HIE, health information exchanges; LOS, length of stay;

  • SHRs, same hospital readmissions.

Information continuity  
SHRReference Reference 
DHR with HIE0.87 (0.810.93)<0.0010.86 (0.800.93)<0.001
DHR without HIE0.91 (0.870.94)<0.0010.90 (0.870.94)<0.001
Age    
844 years1.22 (1.181.26)<0.0011.14 (1.071.22)<0.001
4564 years1.16 (1.141.18)<0.0011.11 (1.061.1)<0.001
6584 years1.01 (0.991.02)0.530.99 (0.961.02)0.60
85+ yearsReference Reference 
Sex    
Male0.97 (0.950.99)0.0080.98 (0.961.01)0.19
FemaleReference Reference 
Socioeconomic status   
Low0.98 (0.970.99)0.11  
OtherReference   
Residency in a nursing home  
Nursing home0.90 (0.880.92)<0.0010.90 (0.860.95)<0.001
All othersReference Reference 
Common chronic conditions (reference: without condition)  
Hypertension0.94 (0.930.96)<0.0011.01 (0.971.04)0.69
Ischemic heart disease1.00 (0.991.01)0.931.06 (1.031.09)<0.001
Diabetes0.97 (0.950.98)0.0040.99 (0.971.02)0.64
Arrhythmia0.96 (0.950.97)0.0021.01 (0.981.04)0.39
Chronic renal failure0.92 (0.910.93)<0.0010.96 (0.930.99)0.01
Congestive heart failure0.93 (0.920.94)<0.0010.96 (0.930.99)0.01
Disability0.86 (0.850.87)<0.0010.90 (0.870.92)<0.001
Chronic obstructive pulmonary disease0.99 (0.981.01)0.66  
Malignancy0.97 (0.960.98)0.030.98 (0.961.01)0.28
Asthma1.04 (1.021.06)0.031.04 (1.001.07)0.03
Charlson score0.99 (0.980.99)<0.0010.99 (0.991.00)0.04
LOS during index hospitalization  
Days 241.52 (1.491.54)<0.0011.49 (1.451.54)<0.001
Days 571.21 (1.191.23)<0.0011.20 (1.161.24)<0.001
8 days and moreReference Reference 
Hospital size in index hospitalization   
Small, <100 beds (8)0.94 (0.920.97)0.021.00 (0.951.05)0.93
Medium, 100200 beds (9)1.00 (0.991.02)0.781.01 (0.991.04)0.38
Large, >200 beds (10)Reference Reference 
Intensive care unit in readmission   
Yes0.75 (0.700.80)<0.0010.74 (0.690.79)<0.001
NoReference Reference 

DISCUSSION

This study shows that readmission to a different hospital results in longer duration of the readmission stay compared with readmission to the same index hospital. Our results also show that having HIE systems in both the index and readmitting hospitals does not protect against these negative outcomes, as there was no difference in the length of the readmission stay based on the availability of HIE systems. Factors that were found to be associated with longer readmission stays are well known indicators of the complexity of the patient's medical condition, such as the presence of disability, comorbidity, and ICU treatment during the readmission.[24, 27]

The shorter LORS in SHRs may be due to the familiarity of physicians and other healthcare providers with the patient and his or her condition, especially as the policy in SHRs in Israel is to readmit to the same unit from which the patient was recently discharged. This same hospital familiarity is especially important as hospital care in Israel follows the hospitalist model, in which responsibility for patient care is transferred from the patient's primary care physician to the hospital's physician, resulting in increased need for integration through HIE systems, especially when patients are readmitted to a different hospital.[28, 29]

Our findings, congruent with previous research on DHRs and poor outcomes,[7] could also be explained by the inefficiency associated with transitions. For example, patients frequently leave the hospital with pending lab tests, often with abnormal results that would change the course of care.[30] Because these pending tests are often omitted from the hospital discharge summaries,[31] if patients are hospitalized in a different hospital, the same tests may be ordered again, or a course of treatment that does not acknowledge the test results could be taken. Such time‐consuming duplication can be prevented in SHRs, where the index‐hospital records may be already more complete.

Our null findings regarding the contribution of HIE systems may be explained by the low levels of HIE actual use. Although we did not directly assess use, previous research reports that actual use of HIE is limited.[12] An Israeli study on the effects of the use of the OFEK system on ED physicians' admission decisions found that the patient's medical history was viewed in only 31.2% of all 281,750 ED referrals.[19] In another Israeli‐based ED study, even lower usage levels were found, with the OFEK system having been accessed in only 16% of all 3,219,910 ED referrals.[32] Low levels of HIE use have also been reported in the United States. An additional study, which tested the implementation of HIE in hospitals and clinics, showed that in only 2.3% of encounters did providers access the HIE record.[33] Another study conducted in 12 ED sites and 2 ambulatory clinics reported rates of 6.8% HIE use.[34] Moreover, the null effect of integrated health information reported here is congruent with findings from a US study on implementation of an electronic discharge instructions form with embedded computerized medication reconciliation, which was not found to be associated with postdischarge outcomes.[35]

A wide range of factors may influence decisions on HIE use: patient‐level factors,[36] perceived medical complexity of the patient,[33, 34] and the number of prior hospitalizations.[33, 34, 36] Healthcare systemlevel factors may include: time constraints, which may be positively[32] or negatively[33] associated with HIE use, and organizational policies or incentives.[33] Use may also be associated with features of the HIE technology itself, such as difficulty to access, difficulty to use once accessed, and the quality of information it contains.[37] Additionally, there is some evidence of the link between tight functional integration and higher proportions of usage.[38] Although comprehensive studies on factors affecting the use of the OFEK system in Israeli internal medicine units are still needed, the lack of its integration within each hospital's EHR system may serve as a major explanatory factor for the low usage levels.

The findings from this study should be interpreted in light of its limitations. First, compared with previously reported DHR rates (20%30%),[3, 5] the rate observed in our population was relatively low (about 12%). Previous research was restricted to heart failure patients[3] or assessed DHR in surgical, as well as internal medicine, patients.[5] Our lower rates may have been affected by the type of population (hospitalized internal medicine patients) and/or by characteristics of the Clalit healthcare system, which serves as an integrated provider network as well as insurer. Generalization from 1 health care system to others should be made with caution. Nonetheless, our results may underestimate the potential effect in other healthcare systems with less structural integration. Additionally, as noted above, information on the actual use of an HIE in the course of medical decision making during readmission was absent. Future studies should examine the potential benefit of an HIE with measures that capture providers' use of HIEs. Also, the LORS may be influenced by other factors not investigated here, and further future studies should examine additional outcomes such as costs, patient well‐being, and satisfaction. Finally, causality could not be determined, and future research in this realm should aim to search for the pathways connecting readmission to a different hospital, with and without HIEs, to readmission LOS and additional outcomes.

To conclude, our findings show that patients readmitted to a different hospital are at risk for prolonged LORS, regardless of the availability of HIE systems. Implementing HIE systems is the focus of substantial efforts by policymakers and is considered a key part of the meaningful use of electronic health information. HIE features in the provisions of the Health Information Technology for Economic and Clinical Health Act[39] because it can furnish providers with complete, timely information at the point of care. Moreover, although there has been substantial growth in the number of healthcare organizations that have operational an HIE, its ability to lead to improved outcomes has yet to be realized.[8, 10] The Israeli experience reported here suggests that provisions are needed that will ensure actual use of HIEs, which might in turn minimize the difference between DHRs and SHRs.

Acknowledgements

The authors acknowledge Chandra Cohen‐Stavi, MPA, and Orly Tonkikh, MA, for their contribution to this study.

Disclosures

The study was supported in part by a grant from the Israel National Institute for Health Policy Research (NIHP) (10/127). The authors report no conflicts of interest.

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Journal of Hospital Medicine - 11(6)
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Readmissions within a relatively short time after discharge are receiving considerable attention as an area of quality improvement,[1, 2] with increasing emphasis on the relatively large share of readmissions to different hospitals, accounting for 20% to 30% of all readmissions.[3, 4, 5, 6] Returning to a different hospital may affect patient and healthcare outcomes due to breaches in continuity. When information from the previous recent hospitalization is not transferred efficiently and accurately to the next admitting hospital, omissions and duplications can occur, resulting in delayed care and potentially worse outcomes (compared to same hospital readmissions [SHRs]), such as longer length of readmission stay (LORS) and increased costs.[7]

Electronic health records (EHRs) and health information exchange (HIE) systems are increasingly used for storage and retrieval of patient information from various sources, such as laboratories and previous physician visits and hospitalizations, enabling informational continuity by providing vital historical medical information for decision‐making. Whereas EHRs collect, store, and present information that is locally created within a specific clinic or hospital, HIEs connect EHR systems between multiple institutions, allowing providers to share clinical data and achieve interorganizational continuity. Such integrative systems are increasingly being implemented across healthcare systems worldwide.[8, 9, 10] Yet, technical difficulties, costs, competitive concerns, data privacy, and workflow implementation challenges have been described as hindering HIE participation.[11, 12, 13, 14] Moreover, major concerns exist regarding the poor usability of EHRs, their limited ability to support multidisciplinary care, and major difficulties in achieving interoperability with HIEs, which undermine efforts to deliver integrated patient‐centered care.[15] Nonetheless, previous research has demonstrated that HIEs can positively affect healthcare resource use and outcomes, including reduced rates of repeated diagnostic imaging in the emergency evaluation of back pain,[16] reduction in admissions via the emergency department (ED),[17] and reduced rates of readmissions within 7 days.[18] However, it is not known whether HIEs can contribute to positive outcomes when patients are readmitted to a different hospital than the hospital from which they were recently (within the previous 30 days) discharged, potentially bridging the transitional‐care information divide.

In Israel, an innovative HIE system, OFEK (literally horizon), was implemented in 2005 at the largest not‐for‐profit insurer and provider of services, Clalit Health Services (Clalit). Clalit operates as an integrated healthcare delivery system, serving more than 50% of the Israeli population, as part of the country's national health insurance system. OFEK links information on all Clalit enrollees from all hospitals, primary care, and specialty care clinics, laboratories, and diagnostic services into a single, virtual, patient file, enabling providers to obtain complete, real‐time information needed for healthcare decision making at the point of care. Like similar HIE systems, OFEK includes information on previous medical encounters and hospitalizations, previous diagnoses, chronically prescribed medications, previous lab and imaging tests, known allergies, and some demographic information.[19] At the time of this study, OFEK was available in all Clalit hospitals as well as in 2 non‐Clalit (government‐owned and operated) large tertiary‐care centers, resulting in 40% coverage of all hospitalizations through the OFEK HIE system. As part of a large organization‐wide readmission reduction program recently implemented by Clalit for all its members admitted to any hospital in Israel, aimed at early detection and intervention,[20] OFEK was viewed as an important mechanism to help maintain continuity and improve transitions.

To inform current knowledge on different‐hospital readmissions (DHRs) and HIEs, we examined whether having HIE systems can contribute to information continuity and prevent delays in care and the need for more expensive, lengthy readmission stays when patients are readmitted to a different hospital. More specifically, we tested whether there is a difference in the LORS between SHRs and DHRs, and whether DHRs the LORS differ by the availability of an HIE (whether index and readmitting hospital are or are not connected through HIE systems).

METHODS

Study Design and Setting

We conducted a retrospective cohort study based on data of hospitalized Clalit members. Clalit has a centralized data warehouse with a comprehensive EHR containing data on all patients' medical encounters, administrative data, and clinical data compiled from laboratories, imaging centers, and hospitals. At the time of the study, OFEK was operating in all 8 Clalit hospitals and in 2 large government‐owned and operated hospitals in the central and northern parts of the country. Information is linked in the Clalit system and OFEK‐affiliated hospitals through an individual identity number assigned by the Israeli Interior Ministry to every Israeli resident for general identification purposes.

Population

The study examined all internal medicine and intensive‐care unit (ICU) readmissions of adult Clalit members (aged 18 years and older) previously (within the prior 30 days) discharged from internal medicine departments during January 1, 2010 until December 31, 2010 (ie, index hospitalizations). Only readmissions of index hospitalizations with more than a 24‐hour stay were included. A total of 146,266 index hospitalizations met the inclusion criteria. Index admissions that resulted in a transfer to another hospital, a long‐term care facility, or rehabilitation center were not included (N = 11,831). The final study sample included 27,057 readmissions (20.1% of the 134,435 index admissions), which could have resulted in any type of discharge (to patient's home, a long‐term care or rehabilitation facility, or due to death). The study was approved by Clalit's institutional review board.

Outcome Variable

We defined the LORS as the number of days from admission to discharge during readmission.

Main Independent Variable

We assessed information continuity as a categorical variable in which 0 = no information continuity (DHRs with either no HIE at either hospital or an HIE in only 1 of the hospitals), 1 = information continuity through an HIE (DHRs with both hospitals having an HIE), and 2 = full information continuity (readmission to the same hospital).

Covariates

We examined the following known correlates of length of stay (LOS): age, gender, residency in a nursing home, socioeconomic status (SES) based on an indicator of social security entitlement received by low‐income members,[21] and the occurrence of common chronic conditions registered in Clalit's EHR registries[22]: congestive heart failure (CHF), chronic obstructive pulmonary disease (COPD), chronic renal failure (CRF), malignancy, diabetes, hypertension, ischemic heart disease, atrial fibrillation, asthma, and disability (indication of a functional limitation). To provide comorbidity adjustment we used the Charlson Comorbidity Index.[23] Additionally, we assessed LOS of the index hospitalization. We included an indicator for the size of the index hospital: small, fewer than 100 beds; medium, 100 to 200 beds; and large, more than 200 beds. Finally, to account for a well‐known correlate of length of hospital stay,[24] we included an indicator for an ICU stay during the readmission.

Statistical Analysis

We first examined the study populations' characteristics and calculated the average LORS for each SHR and DHR category. Due to the skewed distribution of LORS, we also calculated the median and interquartile range (IQR) of LORS and evaluated the difference between categories using the Kruskall‐Wallis test.[25] Sample‐size calculations showed that we would need a sample of >3000 admissions to have 80% power to detect a difference of 0.8 hospitalization days given the 1:3 ratio between the DHR groups. To examine the association between LORS and information continuity, we employed a univariate marginal Cox model.[26] Variables that were significantly (P < 0.05) associated with LORS in the univariate model were entered into a multivariate marginal Cox model, clustering by patient and using a robust sandwich covariance matrix estimate. Additionally, we performed a sensitivity analysis using hierarchichal modeling to account for potential variations due to hospital level factors. A low hazard ratio (<1) represented an association of the covariate with decreased likelihood of discharge, that is, longer LORS. All analyses were conducted with SPSS version 20 (IBM, Armonk, NY) and SAS version 9.3 (SAS Institute Inc., Cary, NC).

RESULTS

The study included a total of 27,057 readmissions, of which 23,927 (88.4%) were SHRs and 3130 (11.6%) were DHRs. Of all DHRs, in 792 (2.9%) of the cases, both hospitals had HIEs (partial information continuity), and in 2338 (8.6%), either 1 or both did not have an HIE system (thus meaning there was no information continuity). Characteristics of the study population are shown in Table 1. Most (75%) of the readmissions were of patients over the age of 65 years, though only 7% were nursing home residents. More than half the study's population consisted of patients with low SES. The most common chronic conditions were hypertension (77%), ischemic heart disease (52%), and diabetes (48%). Other chronic conditions were arrhythmia (38%), CHF (35%), disability (31%), COPD (28%), malignancy (28%), and asthma (16%). In more than 55% of the index hospitalizations, the LOS was 4 days or less, and most index admissions (64%) were in large hospitals. Table 1 also displays the study population by the type of readmission: SHR, DHR with HIE, and DHR without HIE. As compared to patients readmitted to the same hospital, patients with DHRs were younger (P < 0.001), less likely to be nursing home residents (P < 0.001), and had longer LOS during the index admission (P < 0.001). Additionally, patients with SHRs were more likely to have their index admission at a large hospital (P < 0.001), had a higher comorbidity score (P < 0.043), and were less likely be treated in the ICU during their readmission (P < 0.001) compared to their DHR counterparts. Patients with DHRs without an HIE were similar in most characteristics to those with an HIE, except for having an ICU stay during their readmission (6.4% compared with 9.2%, respectively).

Characteristics of Readmissions Within 30 Days
CharacteristicsAll Readmissions, n = 27,057SHR, n = 23,927DHR With HIE, n = 792DHR Without HIE, n = 2,338P Value
  • NOTE: Abbreviations: DHR, different hospital readmission; HIE, health information exchanges; LOS, length of stay; SD, standard deviation; SHR, same hospital readmission.

All personal characteristics 
Age, n (%)<0.001
1844 years1,328 (4.9)1,095 (4.6)58 (7.3)175 (7.5) 
4564 years5,370 (19.8)4,597 (19.2)197 (24.9)576 (24.6) 
6584 years14,059 (52.0)12,500 (52.2)402 (50.8)1,157 (49.5) 
85+ years6,300 (23.3)5,735 (24.0)135 (17.0)430 (18.4) 
Female sex, n (%)13,742 (50.8)12,040 (50.3)418 (52.8)1,284 (54.9)<0.001
Low socioeconomic status, n (%)15,473 (57.2)13,670 (57.1)453 (57.2)1,350 (57.7) 
Residency in a nursing home, n (%)1,857 (6.9)1,743 (7.3)27 (3.4)87 (3.7)<0.001
Common chronic conditions, n (%) 
Hypertension20,797 (76.9)18,484 (77.3)588 (74.2)1,725 (73.8)<0.001
Ischemic heart disease14,150 (52.3)12,577 (52.6)397 (50.1)1,176 (50.3)0.052
Diabetes13,052 (48.2)11,589 (48.4)345 (43.6)1,118 (47.8)0.024
Arrhythmia10,306 (38.1)9,197 (38.4)292 (36.9)817 (34.9)0.003
Chronic renal failure9,486 (35.1)8,454 (35.3)262 (33.1)770 (32.9)0.034
Congestive heart failure9,216 (34.1)8,232 (34.4)270 (34.1)714 (30.5)0.001
Disability8,362 (30.9)7,600 (31.8)165 (20.8)597 (25.5)<0.001
Chronic obstructive pulmonary disease7,671 (28.4)6,888 (28.8)201 (25.4)582 (24.9)<0.001
Malignancy7,642 (28.2)6,763 (28.3)220 (27.8)659 (28.2)0.954
Asthma4,491 (16.6)4,040 (16.9)109 (13.8)342 (14.6)0.002
Charlson score, mean [SD]4.54 [3.15]4.58 [3.14]4.14 [3.08]4.25 [3.24]0.043
Index hospitalization characteristics (LOS during index hospitalization), n (%)<0.001
24 days14,961 (55.3)13,310 (55.6)428 (54.0)1,223 (52.3) 
57 days6,366 (23.5)5,654 (23.6)174 (22.0)538 (23.0) 
8 days and more5,730 (21.2)4,963 (20.7)190 (24.0)577 (24.7) 
Hospital size in index hospitalization (no. of hospitals in each category), n (%)<0.001
Small, <100 beds (8)1,498 (5.5)1,166 (4.9)23 (2.9)309 (13.2) 
Medium, 100200 beds (9)8,129 (30.0)7,113 (29.7)316 (39.9)700 (29.9) 
Large, >200 beds (10)17,430 (64.4)15,648 (65.4)453 (57.2)1,329 (56.8) 
Intensive care unit during readmission, n (%)869 (3.2)647 (2.7)73 (9.2)149 (6.4)<0.001

The mean LORS in SHRs was shorter by 1 day than the mean LORS for DHRs: 6.3 (95% confidence interval [CI]: 6.2‐6.4) versus 7.3 (95% CI: 7.0‐7.6), respectively. Mean LORS in DHRs with or without HIE was 7.6 (95% CI: 7.0‐8.3) and 7.2 (95% CI: 6.8‐7.6), respectively. Although median LORS was similar (4 days), the IQR differed, resulting in significant differences between the SHR and DHR groups (Table 2).

LORS by Information Continuity
Information ContinuityNo. of ReadmissionsMean LORS (95% CI)Median (Q1Q3)Kruskal‐Wallis P Value
  • NOTE: Abbreviations: CI, confidence interval; DHRs, different hospital readmissions; HIE, health information exchanges; LORS, length of readmission stay; SHRs, same hospital readmissions.

SHRs23,927 (88.4)6.3 (6.26.4)4 (27) 
DHRs3,130 (11.6)7.3 (7.07.6)4 (28) 
DHRs with HIE792 (2.9)7.6 (7.08.3)4 (29) 
DHRs without HIE2,338 (8.7)7.2 (6.87.6)4 (28) 
Total27,0576.4 (6.36.5)4 (27)<0.001

In the multivariate model, partial continuity (DHRs with an HIE) was associated with decreased likelihood of discharge on any given day compared with full continuity (SHR) (hazard ratio [HR] = 0.85, 95% CI: 0.79‐0.91). Similar results were obtained for no continuity (DHRs without an HIE) (HR = 0.90, 95% CI: 0.86‐0.94). The difference between DHRs with and without an HIE was not significant (overlapping confidence intervals). Other factors associated with a lower HR for discharge during each day of the readmission were older age, residency in a nursing home, CHF, CRF, disability, malignancy, and long LOS (8+ days) during the index hospitalization. Patients with asthma or ischemic heart disease had a higher HR for discharge during each readmission day (Table 3). We performed a sensitivity analysis using hierarchical modeling (patients nested within hospitals), which resulted in similar findings in terms of directionality and magnitude of the relationships and significance levels.

Univariate and Multivariate Marginal Cox Model Predicting Time to Discharge in Readmissions
CharacteristicsUnivariate ModelMultivariate Model
Hazard Ratio (95% CI)P ValueHazard Ratio (95% CI)P Value
  • NOTE: Abbreviations: CI, confidence interval; DHRs, different hospital readmissions; HIE, health information exchanges; LOS, length of stay;

  • SHRs, same hospital readmissions.

Information continuity  
SHRReference Reference 
DHR with HIE0.87 (0.810.93)<0.0010.86 (0.800.93)<0.001
DHR without HIE0.91 (0.870.94)<0.0010.90 (0.870.94)<0.001
Age    
844 years1.22 (1.181.26)<0.0011.14 (1.071.22)<0.001
4564 years1.16 (1.141.18)<0.0011.11 (1.061.1)<0.001
6584 years1.01 (0.991.02)0.530.99 (0.961.02)0.60
85+ yearsReference Reference 
Sex    
Male0.97 (0.950.99)0.0080.98 (0.961.01)0.19
FemaleReference Reference 
Socioeconomic status   
Low0.98 (0.970.99)0.11  
OtherReference   
Residency in a nursing home  
Nursing home0.90 (0.880.92)<0.0010.90 (0.860.95)<0.001
All othersReference Reference 
Common chronic conditions (reference: without condition)  
Hypertension0.94 (0.930.96)<0.0011.01 (0.971.04)0.69
Ischemic heart disease1.00 (0.991.01)0.931.06 (1.031.09)<0.001
Diabetes0.97 (0.950.98)0.0040.99 (0.971.02)0.64
Arrhythmia0.96 (0.950.97)0.0021.01 (0.981.04)0.39
Chronic renal failure0.92 (0.910.93)<0.0010.96 (0.930.99)0.01
Congestive heart failure0.93 (0.920.94)<0.0010.96 (0.930.99)0.01
Disability0.86 (0.850.87)<0.0010.90 (0.870.92)<0.001
Chronic obstructive pulmonary disease0.99 (0.981.01)0.66  
Malignancy0.97 (0.960.98)0.030.98 (0.961.01)0.28
Asthma1.04 (1.021.06)0.031.04 (1.001.07)0.03
Charlson score0.99 (0.980.99)<0.0010.99 (0.991.00)0.04
LOS during index hospitalization  
Days 241.52 (1.491.54)<0.0011.49 (1.451.54)<0.001
Days 571.21 (1.191.23)<0.0011.20 (1.161.24)<0.001
8 days and moreReference Reference 
Hospital size in index hospitalization   
Small, <100 beds (8)0.94 (0.920.97)0.021.00 (0.951.05)0.93
Medium, 100200 beds (9)1.00 (0.991.02)0.781.01 (0.991.04)0.38
Large, >200 beds (10)Reference Reference 
Intensive care unit in readmission   
Yes0.75 (0.700.80)<0.0010.74 (0.690.79)<0.001
NoReference Reference 

DISCUSSION

This study shows that readmission to a different hospital results in longer duration of the readmission stay compared with readmission to the same index hospital. Our results also show that having HIE systems in both the index and readmitting hospitals does not protect against these negative outcomes, as there was no difference in the length of the readmission stay based on the availability of HIE systems. Factors that were found to be associated with longer readmission stays are well known indicators of the complexity of the patient's medical condition, such as the presence of disability, comorbidity, and ICU treatment during the readmission.[24, 27]

The shorter LORS in SHRs may be due to the familiarity of physicians and other healthcare providers with the patient and his or her condition, especially as the policy in SHRs in Israel is to readmit to the same unit from which the patient was recently discharged. This same hospital familiarity is especially important as hospital care in Israel follows the hospitalist model, in which responsibility for patient care is transferred from the patient's primary care physician to the hospital's physician, resulting in increased need for integration through HIE systems, especially when patients are readmitted to a different hospital.[28, 29]

Our findings, congruent with previous research on DHRs and poor outcomes,[7] could also be explained by the inefficiency associated with transitions. For example, patients frequently leave the hospital with pending lab tests, often with abnormal results that would change the course of care.[30] Because these pending tests are often omitted from the hospital discharge summaries,[31] if patients are hospitalized in a different hospital, the same tests may be ordered again, or a course of treatment that does not acknowledge the test results could be taken. Such time‐consuming duplication can be prevented in SHRs, where the index‐hospital records may be already more complete.

Our null findings regarding the contribution of HIE systems may be explained by the low levels of HIE actual use. Although we did not directly assess use, previous research reports that actual use of HIE is limited.[12] An Israeli study on the effects of the use of the OFEK system on ED physicians' admission decisions found that the patient's medical history was viewed in only 31.2% of all 281,750 ED referrals.[19] In another Israeli‐based ED study, even lower usage levels were found, with the OFEK system having been accessed in only 16% of all 3,219,910 ED referrals.[32] Low levels of HIE use have also been reported in the United States. An additional study, which tested the implementation of HIE in hospitals and clinics, showed that in only 2.3% of encounters did providers access the HIE record.[33] Another study conducted in 12 ED sites and 2 ambulatory clinics reported rates of 6.8% HIE use.[34] Moreover, the null effect of integrated health information reported here is congruent with findings from a US study on implementation of an electronic discharge instructions form with embedded computerized medication reconciliation, which was not found to be associated with postdischarge outcomes.[35]

A wide range of factors may influence decisions on HIE use: patient‐level factors,[36] perceived medical complexity of the patient,[33, 34] and the number of prior hospitalizations.[33, 34, 36] Healthcare systemlevel factors may include: time constraints, which may be positively[32] or negatively[33] associated with HIE use, and organizational policies or incentives.[33] Use may also be associated with features of the HIE technology itself, such as difficulty to access, difficulty to use once accessed, and the quality of information it contains.[37] Additionally, there is some evidence of the link between tight functional integration and higher proportions of usage.[38] Although comprehensive studies on factors affecting the use of the OFEK system in Israeli internal medicine units are still needed, the lack of its integration within each hospital's EHR system may serve as a major explanatory factor for the low usage levels.

The findings from this study should be interpreted in light of its limitations. First, compared with previously reported DHR rates (20%30%),[3, 5] the rate observed in our population was relatively low (about 12%). Previous research was restricted to heart failure patients[3] or assessed DHR in surgical, as well as internal medicine, patients.[5] Our lower rates may have been affected by the type of population (hospitalized internal medicine patients) and/or by characteristics of the Clalit healthcare system, which serves as an integrated provider network as well as insurer. Generalization from 1 health care system to others should be made with caution. Nonetheless, our results may underestimate the potential effect in other healthcare systems with less structural integration. Additionally, as noted above, information on the actual use of an HIE in the course of medical decision making during readmission was absent. Future studies should examine the potential benefit of an HIE with measures that capture providers' use of HIEs. Also, the LORS may be influenced by other factors not investigated here, and further future studies should examine additional outcomes such as costs, patient well‐being, and satisfaction. Finally, causality could not be determined, and future research in this realm should aim to search for the pathways connecting readmission to a different hospital, with and without HIEs, to readmission LOS and additional outcomes.

To conclude, our findings show that patients readmitted to a different hospital are at risk for prolonged LORS, regardless of the availability of HIE systems. Implementing HIE systems is the focus of substantial efforts by policymakers and is considered a key part of the meaningful use of electronic health information. HIE features in the provisions of the Health Information Technology for Economic and Clinical Health Act[39] because it can furnish providers with complete, timely information at the point of care. Moreover, although there has been substantial growth in the number of healthcare organizations that have operational an HIE, its ability to lead to improved outcomes has yet to be realized.[8, 10] The Israeli experience reported here suggests that provisions are needed that will ensure actual use of HIEs, which might in turn minimize the difference between DHRs and SHRs.

Acknowledgements

The authors acknowledge Chandra Cohen‐Stavi, MPA, and Orly Tonkikh, MA, for their contribution to this study.

Disclosures

The study was supported in part by a grant from the Israel National Institute for Health Policy Research (NIHP) (10/127). The authors report no conflicts of interest.

Readmissions within a relatively short time after discharge are receiving considerable attention as an area of quality improvement,[1, 2] with increasing emphasis on the relatively large share of readmissions to different hospitals, accounting for 20% to 30% of all readmissions.[3, 4, 5, 6] Returning to a different hospital may affect patient and healthcare outcomes due to breaches in continuity. When information from the previous recent hospitalization is not transferred efficiently and accurately to the next admitting hospital, omissions and duplications can occur, resulting in delayed care and potentially worse outcomes (compared to same hospital readmissions [SHRs]), such as longer length of readmission stay (LORS) and increased costs.[7]

Electronic health records (EHRs) and health information exchange (HIE) systems are increasingly used for storage and retrieval of patient information from various sources, such as laboratories and previous physician visits and hospitalizations, enabling informational continuity by providing vital historical medical information for decision‐making. Whereas EHRs collect, store, and present information that is locally created within a specific clinic or hospital, HIEs connect EHR systems between multiple institutions, allowing providers to share clinical data and achieve interorganizational continuity. Such integrative systems are increasingly being implemented across healthcare systems worldwide.[8, 9, 10] Yet, technical difficulties, costs, competitive concerns, data privacy, and workflow implementation challenges have been described as hindering HIE participation.[11, 12, 13, 14] Moreover, major concerns exist regarding the poor usability of EHRs, their limited ability to support multidisciplinary care, and major difficulties in achieving interoperability with HIEs, which undermine efforts to deliver integrated patient‐centered care.[15] Nonetheless, previous research has demonstrated that HIEs can positively affect healthcare resource use and outcomes, including reduced rates of repeated diagnostic imaging in the emergency evaluation of back pain,[16] reduction in admissions via the emergency department (ED),[17] and reduced rates of readmissions within 7 days.[18] However, it is not known whether HIEs can contribute to positive outcomes when patients are readmitted to a different hospital than the hospital from which they were recently (within the previous 30 days) discharged, potentially bridging the transitional‐care information divide.

In Israel, an innovative HIE system, OFEK (literally horizon), was implemented in 2005 at the largest not‐for‐profit insurer and provider of services, Clalit Health Services (Clalit). Clalit operates as an integrated healthcare delivery system, serving more than 50% of the Israeli population, as part of the country's national health insurance system. OFEK links information on all Clalit enrollees from all hospitals, primary care, and specialty care clinics, laboratories, and diagnostic services into a single, virtual, patient file, enabling providers to obtain complete, real‐time information needed for healthcare decision making at the point of care. Like similar HIE systems, OFEK includes information on previous medical encounters and hospitalizations, previous diagnoses, chronically prescribed medications, previous lab and imaging tests, known allergies, and some demographic information.[19] At the time of this study, OFEK was available in all Clalit hospitals as well as in 2 non‐Clalit (government‐owned and operated) large tertiary‐care centers, resulting in 40% coverage of all hospitalizations through the OFEK HIE system. As part of a large organization‐wide readmission reduction program recently implemented by Clalit for all its members admitted to any hospital in Israel, aimed at early detection and intervention,[20] OFEK was viewed as an important mechanism to help maintain continuity and improve transitions.

To inform current knowledge on different‐hospital readmissions (DHRs) and HIEs, we examined whether having HIE systems can contribute to information continuity and prevent delays in care and the need for more expensive, lengthy readmission stays when patients are readmitted to a different hospital. More specifically, we tested whether there is a difference in the LORS between SHRs and DHRs, and whether DHRs the LORS differ by the availability of an HIE (whether index and readmitting hospital are or are not connected through HIE systems).

METHODS

Study Design and Setting

We conducted a retrospective cohort study based on data of hospitalized Clalit members. Clalit has a centralized data warehouse with a comprehensive EHR containing data on all patients' medical encounters, administrative data, and clinical data compiled from laboratories, imaging centers, and hospitals. At the time of the study, OFEK was operating in all 8 Clalit hospitals and in 2 large government‐owned and operated hospitals in the central and northern parts of the country. Information is linked in the Clalit system and OFEK‐affiliated hospitals through an individual identity number assigned by the Israeli Interior Ministry to every Israeli resident for general identification purposes.

Population

The study examined all internal medicine and intensive‐care unit (ICU) readmissions of adult Clalit members (aged 18 years and older) previously (within the prior 30 days) discharged from internal medicine departments during January 1, 2010 until December 31, 2010 (ie, index hospitalizations). Only readmissions of index hospitalizations with more than a 24‐hour stay were included. A total of 146,266 index hospitalizations met the inclusion criteria. Index admissions that resulted in a transfer to another hospital, a long‐term care facility, or rehabilitation center were not included (N = 11,831). The final study sample included 27,057 readmissions (20.1% of the 134,435 index admissions), which could have resulted in any type of discharge (to patient's home, a long‐term care or rehabilitation facility, or due to death). The study was approved by Clalit's institutional review board.

Outcome Variable

We defined the LORS as the number of days from admission to discharge during readmission.

Main Independent Variable

We assessed information continuity as a categorical variable in which 0 = no information continuity (DHRs with either no HIE at either hospital or an HIE in only 1 of the hospitals), 1 = information continuity through an HIE (DHRs with both hospitals having an HIE), and 2 = full information continuity (readmission to the same hospital).

Covariates

We examined the following known correlates of length of stay (LOS): age, gender, residency in a nursing home, socioeconomic status (SES) based on an indicator of social security entitlement received by low‐income members,[21] and the occurrence of common chronic conditions registered in Clalit's EHR registries[22]: congestive heart failure (CHF), chronic obstructive pulmonary disease (COPD), chronic renal failure (CRF), malignancy, diabetes, hypertension, ischemic heart disease, atrial fibrillation, asthma, and disability (indication of a functional limitation). To provide comorbidity adjustment we used the Charlson Comorbidity Index.[23] Additionally, we assessed LOS of the index hospitalization. We included an indicator for the size of the index hospital: small, fewer than 100 beds; medium, 100 to 200 beds; and large, more than 200 beds. Finally, to account for a well‐known correlate of length of hospital stay,[24] we included an indicator for an ICU stay during the readmission.

Statistical Analysis

We first examined the study populations' characteristics and calculated the average LORS for each SHR and DHR category. Due to the skewed distribution of LORS, we also calculated the median and interquartile range (IQR) of LORS and evaluated the difference between categories using the Kruskall‐Wallis test.[25] Sample‐size calculations showed that we would need a sample of >3000 admissions to have 80% power to detect a difference of 0.8 hospitalization days given the 1:3 ratio between the DHR groups. To examine the association between LORS and information continuity, we employed a univariate marginal Cox model.[26] Variables that were significantly (P < 0.05) associated with LORS in the univariate model were entered into a multivariate marginal Cox model, clustering by patient and using a robust sandwich covariance matrix estimate. Additionally, we performed a sensitivity analysis using hierarchichal modeling to account for potential variations due to hospital level factors. A low hazard ratio (<1) represented an association of the covariate with decreased likelihood of discharge, that is, longer LORS. All analyses were conducted with SPSS version 20 (IBM, Armonk, NY) and SAS version 9.3 (SAS Institute Inc., Cary, NC).

RESULTS

The study included a total of 27,057 readmissions, of which 23,927 (88.4%) were SHRs and 3130 (11.6%) were DHRs. Of all DHRs, in 792 (2.9%) of the cases, both hospitals had HIEs (partial information continuity), and in 2338 (8.6%), either 1 or both did not have an HIE system (thus meaning there was no information continuity). Characteristics of the study population are shown in Table 1. Most (75%) of the readmissions were of patients over the age of 65 years, though only 7% were nursing home residents. More than half the study's population consisted of patients with low SES. The most common chronic conditions were hypertension (77%), ischemic heart disease (52%), and diabetes (48%). Other chronic conditions were arrhythmia (38%), CHF (35%), disability (31%), COPD (28%), malignancy (28%), and asthma (16%). In more than 55% of the index hospitalizations, the LOS was 4 days or less, and most index admissions (64%) were in large hospitals. Table 1 also displays the study population by the type of readmission: SHR, DHR with HIE, and DHR without HIE. As compared to patients readmitted to the same hospital, patients with DHRs were younger (P < 0.001), less likely to be nursing home residents (P < 0.001), and had longer LOS during the index admission (P < 0.001). Additionally, patients with SHRs were more likely to have their index admission at a large hospital (P < 0.001), had a higher comorbidity score (P < 0.043), and were less likely be treated in the ICU during their readmission (P < 0.001) compared to their DHR counterparts. Patients with DHRs without an HIE were similar in most characteristics to those with an HIE, except for having an ICU stay during their readmission (6.4% compared with 9.2%, respectively).

Characteristics of Readmissions Within 30 Days
CharacteristicsAll Readmissions, n = 27,057SHR, n = 23,927DHR With HIE, n = 792DHR Without HIE, n = 2,338P Value
  • NOTE: Abbreviations: DHR, different hospital readmission; HIE, health information exchanges; LOS, length of stay; SD, standard deviation; SHR, same hospital readmission.

All personal characteristics 
Age, n (%)<0.001
1844 years1,328 (4.9)1,095 (4.6)58 (7.3)175 (7.5) 
4564 years5,370 (19.8)4,597 (19.2)197 (24.9)576 (24.6) 
6584 years14,059 (52.0)12,500 (52.2)402 (50.8)1,157 (49.5) 
85+ years6,300 (23.3)5,735 (24.0)135 (17.0)430 (18.4) 
Female sex, n (%)13,742 (50.8)12,040 (50.3)418 (52.8)1,284 (54.9)<0.001
Low socioeconomic status, n (%)15,473 (57.2)13,670 (57.1)453 (57.2)1,350 (57.7) 
Residency in a nursing home, n (%)1,857 (6.9)1,743 (7.3)27 (3.4)87 (3.7)<0.001
Common chronic conditions, n (%) 
Hypertension20,797 (76.9)18,484 (77.3)588 (74.2)1,725 (73.8)<0.001
Ischemic heart disease14,150 (52.3)12,577 (52.6)397 (50.1)1,176 (50.3)0.052
Diabetes13,052 (48.2)11,589 (48.4)345 (43.6)1,118 (47.8)0.024
Arrhythmia10,306 (38.1)9,197 (38.4)292 (36.9)817 (34.9)0.003
Chronic renal failure9,486 (35.1)8,454 (35.3)262 (33.1)770 (32.9)0.034
Congestive heart failure9,216 (34.1)8,232 (34.4)270 (34.1)714 (30.5)0.001
Disability8,362 (30.9)7,600 (31.8)165 (20.8)597 (25.5)<0.001
Chronic obstructive pulmonary disease7,671 (28.4)6,888 (28.8)201 (25.4)582 (24.9)<0.001
Malignancy7,642 (28.2)6,763 (28.3)220 (27.8)659 (28.2)0.954
Asthma4,491 (16.6)4,040 (16.9)109 (13.8)342 (14.6)0.002
Charlson score, mean [SD]4.54 [3.15]4.58 [3.14]4.14 [3.08]4.25 [3.24]0.043
Index hospitalization characteristics (LOS during index hospitalization), n (%)<0.001
24 days14,961 (55.3)13,310 (55.6)428 (54.0)1,223 (52.3) 
57 days6,366 (23.5)5,654 (23.6)174 (22.0)538 (23.0) 
8 days and more5,730 (21.2)4,963 (20.7)190 (24.0)577 (24.7) 
Hospital size in index hospitalization (no. of hospitals in each category), n (%)<0.001
Small, <100 beds (8)1,498 (5.5)1,166 (4.9)23 (2.9)309 (13.2) 
Medium, 100200 beds (9)8,129 (30.0)7,113 (29.7)316 (39.9)700 (29.9) 
Large, >200 beds (10)17,430 (64.4)15,648 (65.4)453 (57.2)1,329 (56.8) 
Intensive care unit during readmission, n (%)869 (3.2)647 (2.7)73 (9.2)149 (6.4)<0.001

The mean LORS in SHRs was shorter by 1 day than the mean LORS for DHRs: 6.3 (95% confidence interval [CI]: 6.2‐6.4) versus 7.3 (95% CI: 7.0‐7.6), respectively. Mean LORS in DHRs with or without HIE was 7.6 (95% CI: 7.0‐8.3) and 7.2 (95% CI: 6.8‐7.6), respectively. Although median LORS was similar (4 days), the IQR differed, resulting in significant differences between the SHR and DHR groups (Table 2).

LORS by Information Continuity
Information ContinuityNo. of ReadmissionsMean LORS (95% CI)Median (Q1Q3)Kruskal‐Wallis P Value
  • NOTE: Abbreviations: CI, confidence interval; DHRs, different hospital readmissions; HIE, health information exchanges; LORS, length of readmission stay; SHRs, same hospital readmissions.

SHRs23,927 (88.4)6.3 (6.26.4)4 (27) 
DHRs3,130 (11.6)7.3 (7.07.6)4 (28) 
DHRs with HIE792 (2.9)7.6 (7.08.3)4 (29) 
DHRs without HIE2,338 (8.7)7.2 (6.87.6)4 (28) 
Total27,0576.4 (6.36.5)4 (27)<0.001

In the multivariate model, partial continuity (DHRs with an HIE) was associated with decreased likelihood of discharge on any given day compared with full continuity (SHR) (hazard ratio [HR] = 0.85, 95% CI: 0.79‐0.91). Similar results were obtained for no continuity (DHRs without an HIE) (HR = 0.90, 95% CI: 0.86‐0.94). The difference between DHRs with and without an HIE was not significant (overlapping confidence intervals). Other factors associated with a lower HR for discharge during each day of the readmission were older age, residency in a nursing home, CHF, CRF, disability, malignancy, and long LOS (8+ days) during the index hospitalization. Patients with asthma or ischemic heart disease had a higher HR for discharge during each readmission day (Table 3). We performed a sensitivity analysis using hierarchical modeling (patients nested within hospitals), which resulted in similar findings in terms of directionality and magnitude of the relationships and significance levels.

Univariate and Multivariate Marginal Cox Model Predicting Time to Discharge in Readmissions
CharacteristicsUnivariate ModelMultivariate Model
Hazard Ratio (95% CI)P ValueHazard Ratio (95% CI)P Value
  • NOTE: Abbreviations: CI, confidence interval; DHRs, different hospital readmissions; HIE, health information exchanges; LOS, length of stay;

  • SHRs, same hospital readmissions.

Information continuity  
SHRReference Reference 
DHR with HIE0.87 (0.810.93)<0.0010.86 (0.800.93)<0.001
DHR without HIE0.91 (0.870.94)<0.0010.90 (0.870.94)<0.001
Age    
844 years1.22 (1.181.26)<0.0011.14 (1.071.22)<0.001
4564 years1.16 (1.141.18)<0.0011.11 (1.061.1)<0.001
6584 years1.01 (0.991.02)0.530.99 (0.961.02)0.60
85+ yearsReference Reference 
Sex    
Male0.97 (0.950.99)0.0080.98 (0.961.01)0.19
FemaleReference Reference 
Socioeconomic status   
Low0.98 (0.970.99)0.11  
OtherReference   
Residency in a nursing home  
Nursing home0.90 (0.880.92)<0.0010.90 (0.860.95)<0.001
All othersReference Reference 
Common chronic conditions (reference: without condition)  
Hypertension0.94 (0.930.96)<0.0011.01 (0.971.04)0.69
Ischemic heart disease1.00 (0.991.01)0.931.06 (1.031.09)<0.001
Diabetes0.97 (0.950.98)0.0040.99 (0.971.02)0.64
Arrhythmia0.96 (0.950.97)0.0021.01 (0.981.04)0.39
Chronic renal failure0.92 (0.910.93)<0.0010.96 (0.930.99)0.01
Congestive heart failure0.93 (0.920.94)<0.0010.96 (0.930.99)0.01
Disability0.86 (0.850.87)<0.0010.90 (0.870.92)<0.001
Chronic obstructive pulmonary disease0.99 (0.981.01)0.66  
Malignancy0.97 (0.960.98)0.030.98 (0.961.01)0.28
Asthma1.04 (1.021.06)0.031.04 (1.001.07)0.03
Charlson score0.99 (0.980.99)<0.0010.99 (0.991.00)0.04
LOS during index hospitalization  
Days 241.52 (1.491.54)<0.0011.49 (1.451.54)<0.001
Days 571.21 (1.191.23)<0.0011.20 (1.161.24)<0.001
8 days and moreReference Reference 
Hospital size in index hospitalization   
Small, <100 beds (8)0.94 (0.920.97)0.021.00 (0.951.05)0.93
Medium, 100200 beds (9)1.00 (0.991.02)0.781.01 (0.991.04)0.38
Large, >200 beds (10)Reference Reference 
Intensive care unit in readmission   
Yes0.75 (0.700.80)<0.0010.74 (0.690.79)<0.001
NoReference Reference 

DISCUSSION

This study shows that readmission to a different hospital results in longer duration of the readmission stay compared with readmission to the same index hospital. Our results also show that having HIE systems in both the index and readmitting hospitals does not protect against these negative outcomes, as there was no difference in the length of the readmission stay based on the availability of HIE systems. Factors that were found to be associated with longer readmission stays are well known indicators of the complexity of the patient's medical condition, such as the presence of disability, comorbidity, and ICU treatment during the readmission.[24, 27]

The shorter LORS in SHRs may be due to the familiarity of physicians and other healthcare providers with the patient and his or her condition, especially as the policy in SHRs in Israel is to readmit to the same unit from which the patient was recently discharged. This same hospital familiarity is especially important as hospital care in Israel follows the hospitalist model, in which responsibility for patient care is transferred from the patient's primary care physician to the hospital's physician, resulting in increased need for integration through HIE systems, especially when patients are readmitted to a different hospital.[28, 29]

Our findings, congruent with previous research on DHRs and poor outcomes,[7] could also be explained by the inefficiency associated with transitions. For example, patients frequently leave the hospital with pending lab tests, often with abnormal results that would change the course of care.[30] Because these pending tests are often omitted from the hospital discharge summaries,[31] if patients are hospitalized in a different hospital, the same tests may be ordered again, or a course of treatment that does not acknowledge the test results could be taken. Such time‐consuming duplication can be prevented in SHRs, where the index‐hospital records may be already more complete.

Our null findings regarding the contribution of HIE systems may be explained by the low levels of HIE actual use. Although we did not directly assess use, previous research reports that actual use of HIE is limited.[12] An Israeli study on the effects of the use of the OFEK system on ED physicians' admission decisions found that the patient's medical history was viewed in only 31.2% of all 281,750 ED referrals.[19] In another Israeli‐based ED study, even lower usage levels were found, with the OFEK system having been accessed in only 16% of all 3,219,910 ED referrals.[32] Low levels of HIE use have also been reported in the United States. An additional study, which tested the implementation of HIE in hospitals and clinics, showed that in only 2.3% of encounters did providers access the HIE record.[33] Another study conducted in 12 ED sites and 2 ambulatory clinics reported rates of 6.8% HIE use.[34] Moreover, the null effect of integrated health information reported here is congruent with findings from a US study on implementation of an electronic discharge instructions form with embedded computerized medication reconciliation, which was not found to be associated with postdischarge outcomes.[35]

A wide range of factors may influence decisions on HIE use: patient‐level factors,[36] perceived medical complexity of the patient,[33, 34] and the number of prior hospitalizations.[33, 34, 36] Healthcare systemlevel factors may include: time constraints, which may be positively[32] or negatively[33] associated with HIE use, and organizational policies or incentives.[33] Use may also be associated with features of the HIE technology itself, such as difficulty to access, difficulty to use once accessed, and the quality of information it contains.[37] Additionally, there is some evidence of the link between tight functional integration and higher proportions of usage.[38] Although comprehensive studies on factors affecting the use of the OFEK system in Israeli internal medicine units are still needed, the lack of its integration within each hospital's EHR system may serve as a major explanatory factor for the low usage levels.

The findings from this study should be interpreted in light of its limitations. First, compared with previously reported DHR rates (20%30%),[3, 5] the rate observed in our population was relatively low (about 12%). Previous research was restricted to heart failure patients[3] or assessed DHR in surgical, as well as internal medicine, patients.[5] Our lower rates may have been affected by the type of population (hospitalized internal medicine patients) and/or by characteristics of the Clalit healthcare system, which serves as an integrated provider network as well as insurer. Generalization from 1 health care system to others should be made with caution. Nonetheless, our results may underestimate the potential effect in other healthcare systems with less structural integration. Additionally, as noted above, information on the actual use of an HIE in the course of medical decision making during readmission was absent. Future studies should examine the potential benefit of an HIE with measures that capture providers' use of HIEs. Also, the LORS may be influenced by other factors not investigated here, and further future studies should examine additional outcomes such as costs, patient well‐being, and satisfaction. Finally, causality could not be determined, and future research in this realm should aim to search for the pathways connecting readmission to a different hospital, with and without HIEs, to readmission LOS and additional outcomes.

To conclude, our findings show that patients readmitted to a different hospital are at risk for prolonged LORS, regardless of the availability of HIE systems. Implementing HIE systems is the focus of substantial efforts by policymakers and is considered a key part of the meaningful use of electronic health information. HIE features in the provisions of the Health Information Technology for Economic and Clinical Health Act[39] because it can furnish providers with complete, timely information at the point of care. Moreover, although there has been substantial growth in the number of healthcare organizations that have operational an HIE, its ability to lead to improved outcomes has yet to be realized.[8, 10] The Israeli experience reported here suggests that provisions are needed that will ensure actual use of HIEs, which might in turn minimize the difference between DHRs and SHRs.

Acknowledgements

The authors acknowledge Chandra Cohen‐Stavi, MPA, and Orly Tonkikh, MA, for their contribution to this study.

Disclosures

The study was supported in part by a grant from the Israel National Institute for Health Policy Research (NIHP) (10/127). The authors report no conflicts of interest.

References
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  2. Leppin AL, Gionfriddo MR, Kessler M, et al. Preventing 30‐day hospital readmissions: a systematic review and meta‐analysis of randomized trials. JAMA Intern Med. 2014;174:10951107.
  3. Nasir K, Lin Z, Bueno H, et al. Is same‐hospital readmission rate a good surrogate for all‐hospital readmission rate? Med Care. 2010;48:477481.
  4. Fuller RL, Atkinson G, McCullough EC, Hughes JS. Hospital readmission rates: the impacts of age, payer, and mental health diagnoses. J Ambul Care Manage. 2013;36(2):147155.
  5. Davies SM, Saynina O, McDonald KM, Baker LC. Limitations of using same‐hospital readmission metrics. Int J Qual Health Care. 2013;25(6):633639.
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  19. Nirel N, Rosen B, Sharon A, et al. The impact of an integrated hospital‐community medical information system on quality and service utilization in hospital departments. Int J Med Inform. 2010;79(9):649657.
  20. Shadmi E, Flaks‐Manov N, Hoshen M, Goldman O, Bitterman H, Balicer R.D. Predicting 30‐day readmissions with preadmission electronic health record data. Med Care. 2015;53:283289.
  21. Shadmi E, Balicer RD, Kinder K, Abrams C, Weiner JP. Assessing socioeconomic health care utilization inequity in Israel: impact of alternative approaches to morbidity adjustment. BMC Public Health. 2011;11(1):609.
  22. Rennert G, Peterburg Y. Prevalence of selected chronic diseases in Israel. Isr Med Assoc J. 2001;3:404408.
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  28. McMahon LF. The hospitalist movement—time to move on. N Engl J Med. 2007;357:26272629.
  29. Jungerwirth R, Wheeler SB, Paul JE. Association of hospitalist presence and hospital‐level outcome measures among Medicare patients. J Hosp Med. 2014;9:16.
  30. Roy CL, Poon EG, Karson AS, et al. Patient safety concerns arising from test results that return after hospital discharge. Ann Intern Med. 2005;143:121128.
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  32. Ben‐Assuli O, Leshno M, Shabtai I. Using electronic medical record systems for admission decisions in emergency departments: examining the crowdedness effect. J Med Syst. 2012;36:37953803.
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References
  1. Lavenberg JG, Leas B, Umscheid CA, Williams K, Goldmann DR, Kripalani S. Assessing preventability in the quest to reduce hospital readmissions. J Hosp Med. 2014;9:598603.
  2. Leppin AL, Gionfriddo MR, Kessler M, et al. Preventing 30‐day hospital readmissions: a systematic review and meta‐analysis of randomized trials. JAMA Intern Med. 2014;174:10951107.
  3. Nasir K, Lin Z, Bueno H, et al. Is same‐hospital readmission rate a good surrogate for all‐hospital readmission rate? Med Care. 2010;48:477481.
  4. Fuller RL, Atkinson G, McCullough EC, Hughes JS. Hospital readmission rates: the impacts of age, payer, and mental health diagnoses. J Ambul Care Manage. 2013;36(2):147155.
  5. Davies SM, Saynina O, McDonald KM, Baker LC. Limitations of using same‐hospital readmission metrics. Int J Qual Health Care. 2013;25(6):633639.
  6. Hospital inpatient and outpatient services. In: Report to the Congress: promoting greater efficiency in Medicare. Washington, DC: Medicare Payment Advisory Commission., March 2012;4566.
  7. Kind AJH, Bartels C, Mell MW, Mullahy J, Smith M. For‐profit hospital status and rehospitalizations at different hospitals: an analysis of Medicare data. Ann Intern Med. 2010;153:718727.
  8. Jones SS, Rudin RS, Perry T, Shekelle PG. Health information technology: an updated systematic review with a focus on meaningful use. Ann Intern Med. 2014;160:4854.
  9. Buntin MB, Burke MF, Hoaglin MC, Blumenthal D. The benefits of health information technology: a review of the recent literature shows predominantly positive results. Health Aff (Millwood). 2011;30(3):464471.
  10. Adler‐Milstein J, DesRoches CM, Jha AK. Health information exchange among US hospitals. Am J Manag Care. 2011;17:761768.
  11. Adler‐Milstein J, Bates DW, Jha AK. A survey of health information exchange organizations in the United States: implications for meaningful use. Ann Intern Med. 2011;54:666671.
  12. Patel V, Abramson EL, Edwards A, Malhotra S, Kaushal R. Physicians' potential use and preferences related to health information exchange. Int J Med Inform. 2011;80:171180.
  13. Pevnick JM, Claver M, Dobalian , et al. Provider stakeholders' perceived benefit from a nascent health information exchange: a qualitative analysis. J Med Syst. 2012;36:601613.
  14. Vest JR. More than just a question of technology: factors related to hospitals' adoption and implementation of health information exchange. Int J Med Inform. 2010;79:797806.
  15. Sheikh A, Sood HS, Bates DW. Leveraging health information technology to achieve the “triple aim” of healthcare reform. J Am Med Inform Assoc. 2015;22(4):849856.
  16. Bailey JE, Pope RA, Elliott EC, Wan JY, Waters TM, Frisse ME. Health information exchange reduces repeated diagnostic imaging for back pain. Ann Emerg Med. 2013;62:1624.
  17. Vest JR, Kern LM, Campion TR, Silver MD, Kaushal R. Association between use of a health information exchange system and hospital admissions. Appl Clin Inform. 2014;5:219.
  18. Ben‐Assuli O, Shabtai I, Leshno M. The impact of EHR and HIE on reducing avoidable admissions: controlling main differential diagnoses. BMC Med Inform Decis Mak. 2013;13:49.
  19. Nirel N, Rosen B, Sharon A, et al. The impact of an integrated hospital‐community medical information system on quality and service utilization in hospital departments. Int J Med Inform. 2010;79(9):649657.
  20. Shadmi E, Flaks‐Manov N, Hoshen M, Goldman O, Bitterman H, Balicer R.D. Predicting 30‐day readmissions with preadmission electronic health record data. Med Care. 2015;53:283289.
  21. Shadmi E, Balicer RD, Kinder K, Abrams C, Weiner JP. Assessing socioeconomic health care utilization inequity in Israel: impact of alternative approaches to morbidity adjustment. BMC Public Health. 2011;11(1):609.
  22. Rennert G, Peterburg Y. Prevalence of selected chronic diseases in Israel. Isr Med Assoc J. 2001;3:404408.
  23. Charlson ME, Pompei P, Ales KL, MacKenzie CR. A new method of classifying prognostic comorbidity in longitudinal studies: development and validation. J Chron Dis. 1987;40:373383.
  24. Lu M, Sajobi T, Lucyk K, Lorenzetti D, Quan H. Systematic review of risk adjustment models of hospital length of stay (LOS). Med Care. 2015;53:355365.
  25. Kruskal WH, Wallis WA. Use of ranks in one‐criterion variance analysis. J Am Stat Assoc. 1952;47:583621.
  26. Wei LJ, Lin DY, Weissfeld L. Regression analysis of multivariate incomplete failure time data by modeling marginal distributions. J Am Stat Assoc. 1989;84:10651073.
  27. Tan C, Ng YS, Koh GC, Silva DA, Earnest A, Barbier S. Disability impacts length of stay in general internal medicine patients. J Gen Intern Med. 2014;29:885890.
  28. McMahon LF. The hospitalist movement—time to move on. N Engl J Med. 2007;357:26272629.
  29. Jungerwirth R, Wheeler SB, Paul JE. Association of hospitalist presence and hospital‐level outcome measures among Medicare patients. J Hosp Med. 2014;9:16.
  30. Roy CL, Poon EG, Karson AS, et al. Patient safety concerns arising from test results that return after hospital discharge. Ann Intern Med. 2005;143:121128.
  31. Were MC, Li X, Kesterson J, et al. Adequacy of hospital discharge summaries in documenting tests with pending results and outpatient follow‐up providers. J Gen Intern Med. 2009;24:10021006.
  32. Ben‐Assuli O, Leshno M, Shabtai I. Using electronic medical record systems for admission decisions in emergency departments: examining the crowdedness effect. J Med Syst. 2012;36:37953803.
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Issue
Journal of Hospital Medicine - 11(6)
Issue
Journal of Hospital Medicine - 11(6)
Page Number
401-406
Page Number
401-406
Article Type
Display Headline
Health information exchange systems and length of stay in readmissions to a different hospital
Display Headline
Health information exchange systems and length of stay in readmissions to a different hospital
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© 2015 Society of Hospital Medicine

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Address for correspondence and reprint requests: Efrat Shadmi, PhD, Faculty of Social Welfare and Health Sciences, University of Haifa, Eshkol Tower Room 715, Haifa 31905, Israel; Telephone: 972‐48288557; Fax: 972‐48288017; E‐mail: [email protected]
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