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开发一个 30 天内医院再入院预测指数的迭代验证过程。

Development of an iterative validation process for a 30-day hospital readmission prediction index.

机构信息

Department of Pharmacy Practice, Eugene Applebaum College of Pharmacy and Health Sciences, Wayne State University, Detroit, MI, and Transitions of Care, Detroit, MI.

Department of Pharmacy Services, Detroit Medical Center, Detroit, MI, and Eugene Applebaum College of Pharmacy Detroit, MI,and Health Sciences, Wayne State University, Detroit, MI.

出版信息

Am J Health Syst Pharm. 2019 Mar 19;76(7):444-452. doi: 10.1093/ajhp/zxy086.

Abstract

PURPOSE

A study was conducted to determine if an iterative validation process could maintain or improve the discriminative and predictive capabilities of a 30-day hospital readmission prediction index over 2.5 years.

METHODS

Patient admissions were retrospectively identified using the electronic medical record. The receiver operating characteristic curve was used to assess model discrimination. Prediction index specificity, sensitivity, and positive and negative predictive values were also assessed. A rolling iterative validation process was developed in which patient admissions were divided into 3-month cohorts. Each cohort was analyzed individually and then included into the cumulative patient cohort and analyzed again.

RESULTS

From 121,277 patient visits, an iterative validation approach maintained the discrimination (0.71 to 0.72), predictive validity, and overall accuracy (80.9% to 81.7%) of the 30-day readmission prediction index over 2.5 years. Index sensitivity and negative predictive value increased from baseline while specificity and positive predictive value remained largely unchanged. None of the assessed index parameters diminished or became less useful over the course of the study.

CONCLUSION

An internal iterative validation process based on frequentist statistics maintained the discriminative ability and accuracy of a readmission index over 2.5 years despite numerous changes in the variables associated with readmission in the patient population.

摘要

目的

本研究旨在确定迭代验证过程是否可以维持或提高 30 天住院再入院预测指数在 2.5 年内的区分和预测能力。

方法

使用电子病历回顾性确定患者入院情况。采用受试者工作特征曲线评估模型区分度。还评估了预测指数的特异性、敏感性、阳性和阴性预测值。开发了一种滚动迭代验证过程,其中将患者入院分为 3 个月的队列。每个队列单独进行分析,然后将其纳入累积患者队列并再次进行分析。

结果

从 121277 次患者就诊中,迭代验证方法在 2.5 年内维持了 30 天再入院预测指数的区分度(0.71 至 0.72)、预测有效性和整体准确性(80.9%至 81.7%)。指数敏感性和阴性预测值从基线增加,而特异性和阳性预测值基本保持不变。在研究过程中,没有任何评估的指数参数减少或变得不那么有用。

结论

基于频率统计学的内部迭代验证过程维持了再入院指数的区分能力和准确性,尽管患者人群中与再入院相关的变量发生了许多变化。

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