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首页> 外文期刊>Statistics in Biosciences >Using Multiple Control Groups and Matching to Address Unobserved Biases in Comparative Effectiveness ResearchAn Observational Study of the Effectiveness of Mental Health Parity
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Using Multiple Control Groups and Matching to Address Unobserved Biases in Comparative Effectiveness ResearchAn Observational Study of the Effectiveness of Mental Health Parity

机译:在比较有效性研究中使用多个对照组和匹配解决未观察到的偏见心理健康均等有效性的观察性研究

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摘要

Studies of large policy interventions typically do not involve randomization. Adjustments, such as matching, can remove the bias due to observed covariates, but residual confounding remains a concern. In this paper we introduce two analytical strategies to bolster inferences of the effectiveness of policy interventions based on observational data. First, we identify how study groups may differ and then select a second comparison group on this source of difference. Second, we match subjects using a strategy that finely balances the distributions of key categorical covariates and stochastically balances on other covariates. An observational study of the effect of parity on the severely ill subjects enrolled in the Federal Employees Health Benefits (FEHB) Program illustrates our methods.
机译:大型政策干预措施的研究通常不涉及随机化。诸如匹配之类的调整可以消除由于观察到的协变量引起的偏差,但是残留的混杂仍然是一个问题。在本文中,我们介绍了两种分析策略,以基于观察数据来支持对政策干预措施有效性的推论。首先,我们确定研究组之间的差异,然后根据差异的来源选择第二个比较组。其次,我们使用一种策略来匹配主题,该策略可以很好地平衡关键类别协变量的分布,并随机平衡其他协变量的分布。对美国联邦雇员健康福利(FEHB)计划中重症患者的同等影响的观察研究说明了我们的方法。

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