Measuring potentially avoidable hospital readmissions.

The objectives of this study were to develop a computerized method to screen for potentially avoidable hospital readmissions using routinely collected data and a prediction model to adjust rates for case mix. We studied hospital information system data of a random sample of 3,474 inpatients discharged alive in 1997 from a university hospital and medical records of those (1,115) readmitted within 1 year. The gold standard was set on the basis of the hospital data and medical records: all readmissions were classified as foreseen readmissions, unforeseen readmissions for a new affection, or unforeseen readmissions for a previously known affection. The latter category was submitted to a systematic medical record review to identify the main cause of readmission. Potentially avoidable readmissions were defined as a subgroup of unforeseen readmissions for a previously known affection occurring within an appropriate interval, set to maximize the chance of detecting avoidable readmissions. The computerized screening algorithm was strictly based on routine statistics: diagnosis and procedures coding and admission mode. The prediction was based on a Poisson regression model. There were 454 (13.1%) unforeseen readmissions for a previously known affection within 1 year. Fifty-nine readmissions (1.7%) were judged avoidable, most of them occurring within 1 month, which was the interval used to define potentially avoidable readmissions (n = 174, 5.0%). The intra-sample sensitivity and specificity of the screening algorithm both reached approximately 96%. Higher risk for potentially avoidable readmission was associated with previous hospitalizations, high comorbidity index, and long length of stay; lower risk was associated with surgery and delivery. The model offers satisfactory predictive performance and a good medical plausibility. The proposed measure could be used as an indicator of inpatient care outcome. However, the instrument should be validated using other sets of data from various hospitals.

[1]  R. Carney,et al.  A multidisciplinary intervention to prevent the readmission of elderly patients with congestive heart failure. , 1995, The New England journal of medicine.

[2]  E P Steinberg,et al.  Hospital readmissions in the Medicare population. , 1984, The New England journal of medicine.

[3]  A M Epstein,et al.  Trends in length of stay and rates of readmission in Massachusetts: implications for monitoring quality of care. , 1991, Inquiry : a journal of medical care organization, provision and financing.

[4]  J. B. Martin,et al.  Identification of factors associated with hospital readmission and development of a predictive model. , 1992, Health services research.

[5]  Wolfgang Kruse,et al.  Early Readmission of Elderly Patients with Congestive Heart Failure , 1991, Journal of the American Geriatrics Society.

[6]  T. Perneger,et al.  Comparison between planned and unplanned readmissions to a department of internal medicine. , 1999, Journal of clinical epidemiology.

[7]  M. Gillet,et al.  REVUE DES HOSPITALISATIONS DU SERVICE DE CHIRURGIE GENERALE DU CHUV EN 1997 , 1999 .

[8]  R. Deyo,et al.  Adapting a clinical comorbidity index for use with ICD-9-CM administrative databases. , 1992, Journal of clinical epidemiology.

[9]  L. Goldman,et al.  Preventability of emergent hospital readmission. , 1991, The American journal of medicine.

[10]  K. Kahn,et al.  Assessing clinical instability at discharge. The clinician's responsibility. , 1992, JAMA.

[11]  J. Fleiss Statistical methods for rates and proportions , 1974 .

[12]  F. Fitton,et al.  Factors affecting early unplanned readmission of elderly patients to hospital. , 1988, BMJ.

[13]  M. Weinberger,et al.  Postdischarge Care and Readmissions , 1988, Medical care.

[14]  T. Brennan,et al.  Incidence and types of adverse events and negligent care in Utah and Colorado. , 2000, Medical care.

[15]  E P Steinberg,et al.  Predicting hospital readmissions in the Medicare population. , 1985, Inquiry : a journal of medical care organization, provision and financing.

[16]  A. Hartz,et al.  Are PRO discharge screens associated with postdischarge adverse outcomes? , 1995, Health services research.

[17]  A. Clarke Are readmissions avoidable? , 1990, BMJ.

[18]  C J McDonald,et al.  Nonelective readmissions of medical patients. , 1985, Journal of chronic diseases.

[19]  C. Mackenzie,et al.  A new method of classifying prognostic comorbidity in longitudinal studies: development and validation. , 1987, Journal of chronic diseases.

[20]  R. Goldman,et al.  The reliability of peer assessments of quality of care. , 1992, JAMA.

[21]  T A Brennan,et al.  Factors associated with unplanned hospital readmission among patients 65 years of age and older in a Medicare managed care plan. , 1999, The American journal of medicine.

[22]  A Clarke,et al.  Measuring readmission rates. , 1990, BMJ.

[23]  L. McMahon,et al.  Measuring Hospital Performance: The Development and Validation of Risk-Adjusted Indexes of Mortality, Readmissions, and Complications , 1990, Medical care.

[24]  T. Brennan,et al.  INCIDENCE OF ADVERSE EVENTS AND NEGLIGENCE IN HOSPITALIZED PATIENTS , 2008 .

[25]  Robert H. Brook,et al.  Prospective Payment System and Impairment at Discharge , 1990 .

[26]  W G Henderson,et al.  Predicting non-elective hospital readmissions: a multi-site study. Department of Veterans Affairs Cooperative Study Group on Primary Care and Readmissions. , 2000, Journal of clinical epidemiology.

[27]  J J Holloway,et al.  Investigating Early Readmission as an Indicator for Quality of Care Studies , 1991, Medical care.

[28]  T. Wickizer,et al.  The impact of utilization management on readmissions among patients with cardiovascular disease. , 2000, Health services research.

[29]  R. McCorkle,et al.  Strategies to improve continuity of care and decrease rehospitalization of cancer patients: a review. , 1993, Cancer investigation.

[30]  C. Ashton,et al.  A conceptual framework for the study of early readmission as an indicator of quality of care. , 1996, Social science & medicine.

[31]  C M Ashton,et al.  The Association between the Quality of Inpatient Care and Early Readmission , 1995, Annals of Internal Medicine.

[32]  R. Milne,et al.  Can readmission rates be used as an outcome indicator? , 1990, BMJ.

[33]  T. Brennan,et al.  Identifying Adverse Events Caused by Medical Care: Degree of Physician Agreement in a Retrospective Chart Review , 1996, Annals of Internal Medicine.

[34]  M. Naylor,et al.  Comprehensive Discharge Planning for the Hospitalized Elderly , 1994, Annals of Internal Medicine.

[35]  M J Goldacre,et al.  Use of medical record linkage to study readmission rates. , 1989, BMJ.

[36]  R E Hall,et al.  Searching for an improved clinical comorbidity index for use with ICD-9-CM administrative data. , 1996, Journal of clinical epidemiology.

[37]  R. Hendricks,et al.  Evaluating Hospital Discharge Planning: A Randomized Clinical Trial , 1993, Medical care.

[38]  K. Kahn,et al.  Assessing Clinical Instability at Discharge , 1992 .

[39]  S. Grosskopf,et al.  Measuring hospital performance. A non-parametric approach. , 1987, Journal of health economics.

[40]  R H Brook,et al.  The public release of performance data: what do we expect to gain? A review of the evidence. , 2000, JAMA.

[41]  D Draper,et al.  Prospective payment system and impairment at discharge. The 'quicker-and-sicker' story revisited. , 1990, JAMA.

[42]  Brian Livesley,et al.  CAN READMISSIONS TO A GERIATRIC MEDICAL UNIT BE PREVENTED? , 1983, The Lancet.

[43]  C M Ashton,et al.  Predicting readmission in veterans with chronic disease. Development and validation of discharge criteria. , 1987, Medical care.

[44]  C. Ashton,et al.  Selecting Disease‐Outcome Pairs for Monitoring the Quality of Hospital Care , 1995, Medical care.

[45]  H G Welch,et al.  Readmission after surgery in Washington State rural hospitals. , 1992, American journal of public health.

[46]  J. Jollis,et al.  Adapting a clinical comorbidity index for use with ICD-9-CM administrative data: differing perspectives. , 1993, Journal of clinical epidemiology.

[47]  T. Brennan,et al.  The nature of adverse events in hospitalized patients. Results of the Harvard Medical Practice Study II. , 1991, The New England journal of medicine.

[48]  C M Ashton,et al.  The association between the quality of inpatient care and early readmission: a meta-analysis of the evidence. , 1997, Medical care.