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一种用连续调节变量估计调节治疗效果和调节中介效应的新方法。

A novel approach to estimate moderated treatment effects and moderated mediated effects with continuous moderators.

作者信息

Valente Matthew J, Rijnhart Judith J M, Gonzalez Oscar

机构信息

College of Public Health, University of South Florida.

Department of Psychology and Neuroscience, University of North Carolina at Chapel Hill.

出版信息

Psychol Methods. 2025 Feb;30(1):1-15. doi: 10.1037/met0000593. Epub 2023 Jun 12.

Abstract

Moderation analysis is used to study under what conditions or for which subgroups of individuals a treatment effect is stronger or weaker. When a moderator variable is categorical, such as assigned sex, treatment effects can be estimated for each group resulting in a treatment effect for males and a treatment effect for females. If a moderator variable is a continuous variable, a strategy for investigating moderated treatment effects is to estimate conditional effects (i.e., simple slopes) via the pick-a-point approach. When conditional effects are estimated using the pick-a-point approach, the conditional effects are often given the interpretation of "the treatment effect for the subgroup of individuals…." However, the interpretation of these conditional effects as effects is potentially misleading because conditional effects are interpreted at a specific value of the moderator variable (e.g., +1 above the mean). We describe a simple solution that resolves this problem using a simulation-based approach. We describe how to apply this simulation-based approach to estimate subgroup effects by defining subgroups using a on the continuous moderator variable. We apply this method to three empirical examples to demonstrate how to estimate subgroup effects for moderated treatment and moderated mediated effects when the moderator variable is a continuous variable. Finally, we provide researchers with both SAS and R code to implement this method for similar situations described in this paper. (PsycInfo Database Record (c) 2025 APA, all rights reserved).

摘要

调节分析用于研究在何种条件下或针对哪些个体亚组,治疗效果更强或更弱。当调节变量是分类变量时,如指定性别,可对每组估计治疗效果,从而得出男性的治疗效果和女性的治疗效果。如果调节变量是连续变量,一种研究调节治疗效果的策略是通过选点法估计条件效应(即简单斜率)。当使用选点法估计条件效应时,这些条件效应通常被解释为“个体亚组的治疗效果……”。然而,将这些条件效应解释为效果可能会产生误导,因为条件效应是在调节变量的特定值(例如,高于均值1个单位)下进行解释的。我们描述了一种使用基于模拟的方法来解决此问题的简单方案。我们描述了如何通过在连续调节变量上定义亚组,应用这种基于模拟的方法来估计亚组效应。我们将此方法应用于三个实证示例,以展示当调节变量是连续变量时,如何估计调节治疗和调节中介效应的亚组效应。最后,我们为研究人员提供了SAS和R代码,以在本文所述的类似情况下实现此方法。(PsycInfo数据库记录(c)2025美国心理学会,保留所有权利)

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