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Analyzing 30-Day Readmission Rate for Heart Failure Using Different Predictive Models

机译:使用不同预测模型分析了30天的心力衰竭入住率

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The Center for Medicare and Medical Services in the United States compares hospital's readmission performance to the facilities across the nation using a 30-day window from the hospital discharge. Heart Failure (HF) is one of the conditions included in the comparison, as it is the most frequent and the most expensive diagnosis for hospitalization. If risk stratification for readmission of HF patients could be carried out at the time of discharge from the index hospitalization, corresponding appropriate post-discharge interventions could be arranged. We, therefore, sought to compare two different risk prediction models using 48 clinical predictors from electronic health records data of 1037 HF patients from one hospital. We used logistic regression and random forest as methods of analyses and found that logistic regression with bagging approach produced better predictive results (C-Statistics: 0.65) when compared to random forest (C-Statistics:0.61).
机译:美国医疗保险和医疗服务中心将医院的入住性能与来自医院放电的30天的窗口相比,在全国各地的设施。心力衰竭(HF)是比较中包含的条件之一,因为它是最常见的和最昂贵的住院治疗诊断。如果在排出指数住院时间的情况下,可以在排出患者的风险分层,可以安排相应的适当的放电后干预措施。因此,我们试图使用来自一家医院的1037个HF患者的电子健康记录数据的48个临床预测因子进行比较两种不同的风险预测模型。我们使用Logistic回归和随机森林作为分析方法,发现与随机森林相比,与装袋方法的逻辑回归产生了更好的预测结果(C统计:0.65)(C统计:0.61)。

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