Nonelective Rehospitalizations and Postdischarge Mortality Predictive Models Suitable for Use in Real Time

被引:57
作者
Escobar, Gabriel J. [1 ,2 ]
Ragins, Arona [1 ]
Scheirer, Peter [1 ,3 ]
Liu, Vincent [1 ,4 ]
Robles, Jay [1 ,3 ]
Kipnis, Patricia [1 ,3 ]
机构
[1] Kaiser Permanente No Calif, Div Res, Oakland, CA 94612 USA
[2] Kaiser Permanente Med Ctr, Dept Inpatient Pediat, Walnut Creek, CA USA
[3] Kaiser Fdn Hlth Plan Inc, Decis Support, Oakland, CA USA
[4] Kaiser Permanente Med Ctr, Dept Intens Care, Santa Clara, CA USA
关键词
rehospitalization; predictive model; electronic medical records; severity of illness; care directive; risk adjustment; RISK ADJUSTMENT; HOSPITAL READMISSION; CARE; VALIDATION; DETERIORATION; CURVE; SCORE;
D O I
10.1097/MLR.0000000000000435
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background:Hospital discharge planning has been hampered by the lack of predictive models.Objective:To develop predictive models for nonelective rehospitalization and postdischarge mortality suitable for use in commercially available electronic medical records (EMRs).Design:Retrospective cohort study using split validation.Setting:Integrated health care delivery system serving 3.9 million members.Participants:A total of 360,036 surviving adults who experienced 609,393 overnight hospitalizations at 21 hospitals between June 1, 2010 and December 31, 2013.Main Outcome Measure:A composite outcome (nonelective rehospitalization and/or death within 7 or 30 days of discharge).Results:Nonelective rehospitalization rates at 7 and 30 days were 5.8% and 12.4%; mortality rates were 1.3% and 3.7%; and composite outcome rates were 6.3% and 14.9%, respectively. Using data from a comprehensive EMR, we developed 4 models that can generate risk estimates for risk of the combined outcome within 7 or 30 days, either at the time of admission or at 8 am on the day of discharge. The best was the 30-day discharge day model, which had a c-statistic of 0.756 (95% confidence interval, 0.754-0.756) and a Nagelkerke pseudo-R-2 of 0.174 (0.171-0.178) in the validation dataset. The most important predictorsa composite acute physiology score and end of life care directivesaccounted for 54% of the predictive ability of the 30-day model. Incorporation of diagnoses (not reliably available for real-time use) did not improve model performance.Conclusions:It is possible to develop robust predictive models, suitable for use in real time with commercially available EMRs, for nonelective rehospitalization and postdischarge mortality.
引用
收藏
页码:916 / 923
页数:8
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