Case finding for patients at risk of readmission to hospital: development of algorithm to identify high risk patients

被引:259
作者
Billings, John
Dixon, Jennifer
Mijanovich, Tod
Wennberg, David
机构
[1] NYU, Ctr Hlth & Publ Serv Res, New York, NY 10012 USA
[2] Kings Fund, London W1G 0AN, England
[3] Hlth Dialog Analyt Solut, Hlth Dialog Corp Headquarters, Boston, MA USA
来源
BRITISH MEDICAL JOURNAL | 2006年 / 333卷 / 7563期
关键词
D O I
10.1136/bmj.38870.657917.AE
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Objective To develop a method of identifying patients at high risk of readmission to hospital in the next 12 months for practical use by primary care trusts and general practices in the NHS in England. Data sources Data from hospital episode statistics showing all admissions in NHS trusts in England over five years, 1999-2000 to 2003-4; data from die 2001 census for England. Population All residents in England admitted to hospital in the previous four years with a subset of "reference" conditions for which improved management may help to prevent future admissions. Design Multivariate statistical analysis of routinely collected data to develop an algorithm to predict patients at highest risk of readmission in the next 12 months. The algorithm was developed by using a 10% sample of hospital episode statistics data for all of England for the period indicated. The coefficients for 21 most powerful (and statistically significant) variables were then applied against a second 10% test sample to validate the findings of the algorithm from the first sample. Results The key factors predicting subsequent admission included age, sex, ethnicity, number of previous admissions, and clinical condition. The algorithm produces a risk score (from 0 to 100) for each patient admitted with a reference condition. At a risk score threshold of 50, the algorithm identified 54.3% of patients admitted with a reference condition who would have an admission in the next 12 months; 34.7% of patients were "flagged" incorrectly (they would not have a subsequent admission). At risk score threshold levels of 70 and 80, the rate of incorrectly "flagged" patients dropped to 22.6% and 15.7%, but the algorithm found a lower percentage of patients who would be readmitted. The algorithm is made freely available to primary care trusts via a website. Conclusions A method of predicting individual patients at highest risk of readmission to hospital in the next 12 months has been developed, which has a reasonable level of sensitivity and specificity. Using various assumptions a "business case" has been modelled to demonstrate to primary care trusts and practices the potential costs and impact of an intervention using the algorithm to reduce hospital admissions.
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页码:327 / 330
页数:4
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