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评估一种预测建模方法在识别高住院风险成员方面的性能。

Evaluating the performance of a predictive modeling approach to identifying members at high-risk of hospitalization.

机构信息

Healthcare Informatics, Blue Cross Blue Shield of Louisiana, Baton Rouge, LA, USA.

出版信息

J Med Econ. 2020 Mar;23(3):228-234. doi: 10.1080/13696998.2019.1666854. Epub 2019 Sep 24.

Abstract

To evaluate the risk-of-hospitalization (ROH) models developed at Blue Cross Blue Shield of Louisiana (BCBSLA) and compare this approach to the DxCG risk-score algorithms utilized by many health plans. Time zero for this study was December 31, 2016. BCBSLA members were eligible for study inclusion if they were fully insured; aged 80 years or younger; and had continuous enrollment starting on or before June 1, 2016, through time zero. Up to 2 years of historical claims data from time zero per patient was included for model development. Members were excluded if they had cancer, renal failure, or were admitted for hospice. The Blue Cross ROH models were developed using (1) regularized logistic regression and (2) random decision forests (a tree ensemble learning classification method). All models were generated using Scikit-learn: Machine Learning in Python. Prognostic capabilities of DxCG risk-score algorithms were compared to those of the Blue Cross models. When stratifying by the top 0.1% of members with the highest ROH, the Blue Cross logistic regression model had the highest area under the receiving operator characteristics curve (0.862) based on the result of 10-fold cross-validation. The Blue Cross random decision forests model had the highest positive predictive value (49.0%) and positive likelihood ratio (61.4), but sensitivity, specificity, negative predictive values, and negative likelihood ratios were similar across all four models. The Blue Cross ROH models were developed and evaluated using BCBSLA data, and predictive power may fluctuate if applied to other databases. The predictability of the Blue Cross models show how member-specific, regional data can be used to accurately identify patients with a high ROH, which may allow healthcare workers to intervene earlier and subsequently reduce the healthcare burden for patients and providers.

摘要

评估路易斯安那蓝十字蓝盾(BCBSLA)开发的住院风险(ROH)模型,并将这种方法与许多健康计划使用的 DxCG 风险评分算法进行比较。本研究的时间起点为 2016 年 12 月 31 日。如果 BCBSLA 成员符合以下条件,则有资格被纳入研究:完全参保;年龄在 80 岁以下;在 2016 年 6 月 1 日或之前开始连续参保,直至时间起点。每位患者最多可纳入时间起点前 2 年的历史索赔数据用于模型开发。如果患者患有癌症、肾衰竭或因临终关怀而入院,则将其排除在外。BCBS 的 ROH 模型是使用(1)正则化逻辑回归和(2)随机决策森林(一种树集成学习分类方法)开发的。所有模型均使用 Scikit-learn:Python 中的机器学习生成。DxCG 风险评分算法的预后能力与 Blue Cross 模型进行了比较。在对 ROH 最高的前 0.1%的成员进行分层时,根据 10 倍交叉验证的结果,Blue Cross 逻辑回归模型的接收者操作特征曲线下面积最高(0.862)。Blue Cross 随机决策森林模型的阳性预测值最高(49.0%)和阳性似然比(61.4%)最高,但所有四个模型的灵敏度、特异性、阴性预测值和阴性似然比相似。BCBSLA 数据用于开发和评估 ROH 模型,预测能力可能会因应用于其他数据库而波动。Blue Cross 模型的可预测性表明,如何使用特定于成员、区域的数据准确识别高 ROH 患者,这可能使医疗保健工作者更早地进行干预,从而减轻患者和提供者的医疗负担。

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