Readmissions and Death after ICU Discharge: Development and Validation of Two Predictive Models

Introduction Early discharge from the ICU is desirable because it shortens time in the ICU and reduces care costs, but can also increase the likelihood of ICU readmission and post-discharge unanticipated death if patients are discharged before they are stable. We postulated that, using eICU® Research Institute (eRI) data from >400 ICUs, we could develop robust models predictive of post-discharge death and readmission that may be incorporated into future clinical information systems (CIS) to assist ICU discharge planning. Methods Retrospective, multi-center, exploratory cohort study of ICU survivors within the eRI database between 1/1/2007 and 3/31/2011. Exclusion criteria: DNR or care limitations at ICU discharge and discharge to location external to hospital. Patients were randomized (2∶1) to development and validation cohorts. Multivariable logistic regression was performed on a broad range of variables including: patient demographics, ICU admission diagnosis, admission severity of illness, laboratory values and physiologic variables present during the last 24 hours of the ICU stay. Multiple imputation was used to address missing data. The primary outcomes were the area under the receiver operator characteristic curves (auROC) in the validation cohorts for the models predicting readmission and death within 48 hours of ICU discharge. Results 469,976 and 234,987 patients representing 219 hospitals were in the development and validation cohorts. Early ICU readmission and death was experienced by 2.54% and 0.92% of all patients, respectively. The relationship between predictors and outcomes (death vs readmission) differed, justifying the need for separate models. The models for early readmission and death produced auROCs of 0.71 and 0.92, respectively. Both models calibrated well across risk groups. Conclusions Our models for death and readmission after ICU discharge showed good to excellent discrimination and good calibration. Although prospective validation is warranted, we speculate that these models may have value in assisting clinicians with ICU discharge planning.

[1]  D. Rubin Multiple Imputation After 18+ Years , 1996 .

[2]  A. Rosenberg,et al.  Patients readmitted to ICUs* : a systematic review of risk factors and outcomes. , 2000, Chest.

[3]  J. Zimmerman,et al.  A model for identifying patients who may not need intensive care unit admission. , 2010, Journal of critical care.

[4]  R. Hayward,et al.  Who bounces back? Physiologic and other predictors of intensive care unit readmission , 2001, Critical care medicine.

[5]  E. Draper,et al.  Improving intensive care unit discharge decisions: Supplementing physician judgment with predictions of next day risk for life support , 1994, Critical care medicine.

[6]  B. Cuthbertson,et al.  Predicting death and readmission after intensive care discharge. , 2008, British journal of anaesthesia.

[7]  M. Shabot,et al.  Analysis of Causes and Prevention of Early Readmission to Surgical Intensive Care , 2003, The American surgeon.

[8]  M. Treggiari,et al.  A nationwide survey of intensive care unit discharge practices , 2005, Intensive Care Medicine.

[9]  Laura Caramanica Discharge Decision-Making in a Medical ICU: Characteristics of Unexpected Readmissions , 1984 .

[10]  V. Herasevich,et al.  The use of an electronic medical record based automatic calculation tool to quantify risk of unplanned readmission to the intensive care unit: a validation study. , 2011, Journal of critical care.

[11]  P. Potgieter,et al.  Patients' recollection of intensive care unit experience. , 1990, Critical care medicine.

[12]  J. Schafer,et al.  Missing data: our view of the state of the art. , 2002, Psychological methods.

[13]  Kendiss Olafson,et al.  High occupancy increases the risk of early death or readmission after transfer from intensive care * , 2009, Critical care medicine.

[14]  J. Zimmerman,et al.  Assessing the calibration of mortality benchmarks in critical care: The Hosmer-Lemeshow test revisited* , 2007, Critical care medicine.

[15]  Omar Badawi,et al.  Benchmark data from more than 240,000 adults that reflect the current practice of critical care in the United States. , 2011, Chest.

[16]  R. Beale,et al.  Reduction in mortality after inappropriate early discharge from intensive care unit: logistic regression triage model , 2001, BMJ : British Medical Journal.

[17]  N. Halpern,et al.  Critical care medicine in the United States 2000–2005: An analysis of bed numbers, occupancy rates, payer mix, and costs* , 2010, Critical care medicine.

[18]  Bekele Afessa,et al.  The Stability and Workload Index for Transfer score predicts unplanned intensive care unit patient readmission: Initial development and validation* , 2008, Critical care medicine.

[19]  C. Franklin,et al.  Discharge decision‐making in a medical ICU: Characteristics of unexpected readmissions , 1983, Critical care medicine.

[20]  C. Durbin,et al.  A case‐control study of patients readmitted to the intensive care unit , 1993, Critical care medicine.

[21]  M. Moskowitz,et al.  Discharge decision-making in a medical intensive care unit. Identifying patients at high risk of unexpected death or unit readmission. , 1988, The American journal of medicine.

[22]  Peter J Pronovost,et al.  Patient flow variability and unplanned readmissions to an intensive care unit* , 2009, Critical care medicine.

[23]  R. Moreno,et al.  Admission and discharge of critically ill patients , 2010, Current opinion in critical care.

[24]  W J Sibbald,et al.  Patients readmitted to the intensive care unit during the same hospitalization: clinical features and outcomes. , 1998, Critical care medicine.

[25]  Bed rationing and allocation in the intensive care unit , 2001, Current opinion in critical care.

[26]  A. Pack,et al.  Abnormal sleep/wake cycles and the effect of environmental noise on sleep disruption in the intensive care unit. , 2001, American journal of respiratory and critical care medicine.

[27]  O. Badawi,et al.  The eICU Research Institute - A Collaboration Between Industry, Health-Care Providers, and Academia , 2010, IEEE Engineering in Medicine and Biology Magazine.

[28]  J. Zimmerman,et al.  Intensive care unit readmissions in U.S. hospitals: Patient characteristics, risk factors, and outcomes* , 2012, Critical care medicine.