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Estimating Causal Effects in Observational Studies using Electronic Health Data: Challenges and (Some) Solutions

机译:使用电子健康数据估算观察研究中的因果效应:挑战和(某些)解决方案

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摘要

Electronic health data sets, including electronic health records (EHR) and other administrative databases, are rich data sources that have the potential to help answer important questions about the effects of clinical interventions as well as policy changes. However, analyses using such data are almost always non-experimental, leading to concerns that those who receive a particular intervention are likely different from those who do not in ways that may confound the effects of interest. This paper outlines the challenges in estimating causal effects using electronic health data and offers some solutions, with particular attention paid to propensity score methods that help ensure comparisons between similar groups. The methods are illustrated with a case study describing the design of a study using Medicare and Medicaid administrative data to estimate the effect of the Medicare Part D prescription drug program on individuals with serious mental illness.
机译:电子健康数据集(包括电子健康记录(EHR)和其他管理数据库)是丰富的数据源,可以帮助回答有关临床干预措施以及政策变更的重要问题。但是,使用此类数据进行的分析几乎总是非实验性的,这引起了人们的关注,即接受特定干预的人可能与那些没有采取可能混淆感兴趣效果的方式的人不同。本文概述了使用电子健康数据估算因果效应时所面临的挑战,并提供了一些解决方案,并特别注意了倾向评分方法,这些方法有助于确保相似人群之间的比较。通过案例研究说明了这些方法,该案例描述了使用Medicare和Medicaid行政数据进行的研究设计,以评估Medicare D部分处方药计划对患有严重精神疾病的人的影响。

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