Department of Biostatistics, New York University.
Department of Psychology, University of South Carolina.
Health Psychol. 2023 Nov;42(11):778-787. doi: 10.1037/hea0001299. Epub 2023 Jul 6.
Mediation analysis has been widely applied to explain why and assess the extent to which an exposure or treatment has an impact on the outcome in health psychology studies. Identifying a mediator or assessing the impact of a mediator has been the focus of many scientific investigations. This tutorial aims to introduce causal mediation analysis with binary exposure, mediator, and outcome variables, with a focus on the resampling and weighting methods, under the potential outcomes framework for estimating natural direct and indirect effects. We emphasize the importance of the temporal order of the study variables and the elimination of confounding. We define the causal effects in a hypothesized causal mediation chain in the context of one exposure, one mediator, and one outcome variable, all of which are binary variables. Two commonly used and actively maintained R packages, and were used to analyze a motivating example. R code examples for implementing these methods are provided. (PsycInfo Database Record (c) 2023 APA, all rights reserved).
中介分析已广泛应用于解释为什么以及评估暴露或治疗对健康心理学研究中结果的影响程度。确定中介或评估中介的影响一直是许多科学研究的重点。本教程旨在在潜在结果框架下,介绍具有二项暴露、中介和结果变量的因果中介分析,重点是基于重采样和加权方法,用于估计自然直接和间接效应。我们强调研究变量的时间顺序和消除混杂的重要性。我们在一个暴露、一个中介和一个结果变量(都是二项变量)的假设因果中介链的背景下定义因果效应。两个常用且积极维护的 R 包 和 被用于分析一个激发性的例子。提供了实现这些方法的 R 代码示例。(PsycInfo 数据库记录(c)2023 APA,保留所有权利)。