Department of Biobehavioral Health, The Pennsylvania State University, University Park, PA, USA.
The Edna Bennett Pierce Prevention Research Center, The Pennsylvania State University, University Park, University Park, PA, USA.
Addiction. 2023 Nov;118(11):2220-2232. doi: 10.1111/add.16284. Epub 2023 Jul 7.
Time-varying effect modeling (TVEM), a statistical technique for modeling dynamic patterns of change, presents new opportunities to study biobehavioral health processes. TVEM is particularly useful when applied to intensive longitudinal data (ILD) because it permits highly flexible modeling of outcomes over continuous time, as well as of associations between variables and moderation effects. TVEM coupled with ILD is ideal for the study of addiction. This article provides a general overview of using TVEM, particularly when applied to ILD, to better enable addiction scientists to conduct novel analyses that are important to realizing the dynamics of addiction-related processes. It presents an empirical example using ecological momentary assessment data from participants throughout their first 90 days of addiction recovery to estimate the (1) associations between morning craving and same-day recovery outcomes, (2) association between morning positive and negative affect and same-day recovery outcomes and (3) time-varying moderation effects of affect on the association between morning craving and recovery outcomes. We provide a didactic overview in implementing and interpreting the aims and results, including equations, computer syntax and reference resources. Our results highlight how affect operates as both a time-varying risk and protective factor on recovery outcomes, particularly when considered in combination with experiences of craving (i.e. dynamic moderation). We conclude by discussing our results, recent innovations and future directions of TVEM for advancing addiction science, including how 'time' can be operationalized to probe new research questions.
时变效应建模(TVEM)是一种用于模拟变化动态模式的统计技术,为研究生物行为健康过程提供了新的机会。当应用于密集纵向数据(ILD)时,TVEM 特别有用,因为它允许对连续时间内的结果以及变量之间的关联和调节效应进行高度灵活的建模。TVEM 与 ILD 结合非常适合研究成瘾。本文提供了使用 TVEM 的一般概述,特别是当应用于 ILD 时,可以帮助成瘾科学家进行新的分析,这些分析对于理解成瘾相关过程的动态非常重要。它使用参与者在成瘾康复的头 90 天内的生态瞬时评估数据提供了一个实证示例,以估计(1)晨渴望与当天康复结果之间的关联,(2)晨积极和消极情绪与当天康复结果之间的关联,以及(3)情绪对晨渴望与康复结果之间关联的时变调节效应。我们提供了一个关于实施和解释目标和结果的教学概述,包括方程、计算机语法和参考资源。我们的结果强调了情绪如何作为一个时变的风险和保护因素对康复结果产生影响,特别是当与渴望的体验结合考虑时(即动态调节)。最后,我们讨论了我们的结果、最近的创新和 TVEM 在推进成瘾科学方面的未来方向,包括如何“时间”可以被操作化以探究新的研究问题。