Understanding Who Benefits the Most from Interventions: Implications for Baseline Target Moderated Mediation Analysis with Multiple Moderators.

IF 3 2区 医学 Q2 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Prevention Science Pub Date : 2025-02-01 Epub Date: 2025-03-04 DOI:10.1007/s11121-025-01791-1
Matthew J Valente, Jinyong Pang, Biwei Cao
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引用次数: 0

Abstract

Recently, Baseline Target Moderated Mediation (BTMM) has received a lot of attention in the field of prevention science. Prevention scientists are interested in BTMM because the model goes beyond whether an intervention achieves effects but also details how and for whom the intervention is most effective. In BTMM, baseline measures are used to investigate potential baseline-by-treatment interactions. However, BTMM has some important challenges including how to incorporate multiple moderator variables when identifying subgroups that benefit the most from the intervention and how to interpret subgroup effects in the presence of multiple moderator variables. Further, with the emergence of causal mediation analysis, it is important to investigate potential treatment-by-mediator interactions which allow the posttest mediator-outcome relation to vary in magnitude across intervention groups. Few methodological developments have addressed the challenges of assessing BTMM in the presence of multiple baseline-by-treatment interactions and the treatment-by-posttest mediator interaction. If the goal is to identify subgroups of individuals who respond better/worse to the intervention, it is important to use a method that can handle the many possible interactions while capturing the heterogeneity within the subgroups of interest. There are three aims of this paper. First, we describe the methodological challenges and substantive interpretation of mediation effects in the presence of multiple moderating variables. Second, we describe two statistical methods to estimate conditional mediation effects in the presence of multiple moderating variables. Third, the methods are applied to an empirical example from the ATLAS study. Implications for BTMM are discussed.

了解谁从干预措施中获益最多:多调节因子基线目标调节的中介分析的含义。
近年来,基线目标调节调解(Baseline Target Moderated Mediation, BTMM)在预防科学领域受到了广泛关注。预防科学家对BTMM感兴趣,因为该模型超越了干预是否达到效果,还详细说明了干预如何以及对谁最有效。在BTMM中,基线测量用于调查潜在的基线与治疗的相互作用。然而,BTMM有一些重要的挑战,包括如何在确定从干预中获益最多的子群体时纳入多个调节变量,以及如何在存在多个调节变量的情况下解释子群体效应。此外,随着因果中介分析的出现,重要的是要调查潜在的中介治疗相互作用,这使得测试后中介-结果关系在干预组之间的大小不同。很少有方法学的发展解决了在多种基线-治疗相互作用和治疗-后测介质相互作用的情况下评估BTMM的挑战。如果目标是确定对干预反应更好/更差的个体亚组,那么重要的是使用一种方法,可以处理许多可能的相互作用,同时捕获感兴趣的亚组内的异质性。本文有三个目的。首先,我们描述了在多个调节变量存在下的中介效应的方法论挑战和实质性解释。其次,我们描述了两种统计方法来估计在多个调节变量存在的条件中介效应。第三,将这些方法应用于ATLAS研究的一个实证实例。讨论了BTMM的含义。
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来源期刊
Prevention Science
Prevention Science PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
6.50
自引率
11.40%
发文量
128
期刊介绍: Prevention Science is the official publication of the Society for Prevention Research. The Journal serves as an interdisciplinary forum designed to disseminate new developments in the theory, research and practice of prevention. Prevention sciences encompassing etiology, epidemiology and intervention are represented through peer-reviewed original research articles on a variety of health and social problems, including but not limited to substance abuse, mental health, HIV/AIDS, violence, accidents, teenage pregnancy, suicide, delinquency, STD''s, obesity, diet/nutrition, exercise, and chronic illness. The journal also publishes literature reviews, theoretical articles, meta-analyses, systematic reviews, brief reports, replication studies, and papers concerning new developments in methodology.
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