Literature DB >> 1943271

Using clinical variables to estimate the risk of patient mortality.

D W Smith1, M Pine, R C Bailey, B Jones, A Brewster, H Krakauer.   

Abstract

The Health Care Financing Administration (HCFA) uses information from hospital bills, such as age, sex, and diagnoses, to estimate statistical models for the probability, or risk, of death during and after hospital stays. The average risk estimates (expected death rates) are compared with the actual death rates to identify potentially poor quality of care. However, the methods have been criticized as inadequate and an often cited reason is the failure to incorporate risk factors for mortality that are known from clinical research. This hypothesis was tested using a stratified, random sample of 41,963 Medicare patients in 84 hospitals. Many clinical measurements were abstracted for testing as possible risk factors, and a few (26) were identified as useful predictors of death using logistic regression. The estimated regressions accounted for 39% of the variation in mortality, a standard severity classification accounted for 29%, and a relatively simple classification of patients into 17 groups, based on diagnoses, accounted for 17%. The logistic regressions yielded more accurate estimated mortality rates than the severity classification, which in turn was superior to the estimation methods used by HCFA. The HCFA methods were found to be biased in identifying outlier hospitals and this bias can be removed or ameliorated by using clinical risk factors to predict mortality. It is possible to estimate the risk of death more accurately using clinical risk factors and to measure the quality of care.

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Year:  1991        PMID: 1943271     DOI: 10.1097/00005650-199111000-00004

Source DB:  PubMed          Journal:  Med Care        ISSN: 0025-7079            Impact factor:   2.983


  6 in total

1.  Learning from differences within the NHS. Clinical indicators should be used to learn, not to judge.

Authors:  A G Mulley
Journal:  BMJ       Date:  1999-08-28

2.  Do severity measures explain differences in length of hospital stay? The case of hip fracture.

Authors:  M Shwartz; L I Iezzoni; A S Ash; Y D Mackiernan
Journal:  Health Serv Res       Date:  1996-10       Impact factor: 3.402

3.  Risk-Adjusted In-Hospital Mortality Models for Congestive Heart Failure and Acute Myocardial Infarction: Value of Clinical Laboratory Data and Race/Ethnicity.

Authors:  Eunjung Lim; Yongjun Cheng; Christine Reuschel; Omar Mbowe; Hyeong Jun Ahn; Deborah T Juarez; Jill Miyamura; Todd B Seto; John J Chen
Journal:  Health Serv Res       Date:  2015-06-15       Impact factor: 3.402

4.  Gender as a determinant of responses to a self-screening questionnaire on anxiety and depression by patients with coronary artery disease.

Authors:  Colleen M Norris; Amanda Ljubsa; Kathleen M Hegadoren
Journal:  Gend Med       Date:  2009-09

5.  Referral selection bias in the Medicare hospital mortality prediction model: are centers of referral for Medicare beneficiaries necessarily centers of excellence?

Authors:  D J Ballard; S C Bryant; P C O'Brien; D W Smith; M B Pine; D A Cortese
Journal:  Health Serv Res       Date:  1994-02       Impact factor: 3.402

6.  Women with coronary artery disease report worse health-related quality of life outcomes compared to men.

Authors:  Colleen M Norris; William A Ghali; P Diane Galbraith; Michelle M Graham; Louise A Jensen; Merril L Knudtson
Journal:  Health Qual Life Outcomes       Date:  2004-05-05       Impact factor: 3.186

  6 in total

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