集群观测研究中的匹配软件教程

Luke Keele, Matthew Lenard, Luke Miratrix, Lindsay Page
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引用次数: 0

摘要

摘要:许多干预措施发生在治疗适用于群体的环境中。例如,数学干预可能对某些学校的所有学生实施,而对其他学校的学生不实施。当这些治疗是非随机分配时,研究人员可以使用统计调整使治疗组和对照组在观察到的特征方面相似。最近在统计学方面的工作已经发展出一种匹配形式,称为多层次匹配,它是为治疗聚集的环境而设计的。在本文中,我们提供了一个关于如何使用多级匹配分析聚类处理的教程。我们使用一个真实的数据应用程序来解释群集观察性研究分析的全套步骤。
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A Software Tutorial for Matching in Clustered Observational Studies
Abstract:Many interventions occur in settings where treatments are applied to groups. For example, a math intervention may be implemented for all students in some schools and withheld from students in other schools. When such treatments are non-randomly allocated, researchers can use statistical adjustment to make treated and control groups similar in terms of observed characteristics. Recent work in statistics has developed a form of matching, known as multilevel matching, that is designed for contexts where treatments are clustered. In this article, we provide a tutorial on how to analyze clustered treatment using multilevel matching. We use a real data application to explain the full set of steps for the analysis of a clustered observational study.
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