Department of Education, University of Tokyo, Tokyo, Japan.
Psychometrika. 2023 Dec;88(4):1466-1494. doi: 10.1007/s11336-022-09879-1. Epub 2022 Aug 18.
Behavioral science researchers have shown strong interest in disaggregating within-person relations from between-person differences (stable traits) using longitudinal data. In this paper, we propose a method of within-person variability score-based causal inference for estimating joint effects of time-varying continuous treatments by controlling for stable traits of persons. After explaining the assumed data-generating process and providing formal definitions of stable trait factors, within-person variability scores, and joint effects of time-varying treatments at the within-person level, we introduce the proposed method, which consists of a two-step analysis. Within-person variability scores for each person, which are disaggregated from stable traits of that person, are first calculated using weights based on a best linear correlation preserving predictor through structural equation modeling (SEM). Causal parameters are then estimated via a potential outcome approach, either marginal structural models (MSMs) or structural nested mean models (SNMMs), using calculated within-person variability scores. Unlike the approach that relies entirely on SEM, the present method does not assume linearity for observed time-varying confounders at the within-person level. We emphasize the use of SNMMs with G-estimation because of its property of being doubly robust to model misspecifications in how observed time-varying confounders are functionally related to treatments/predictors and outcomes at the within-person level. Through simulation, we show that the proposed method can recover causal parameters well and that causal estimates might be severely biased if one does not properly account for stable traits. An empirical application using data regarding sleep habits and mental health status from the Tokyo Teen Cohort study is also provided.
行为科学研究人员对使用纵向数据从个体间差异(稳定特征)中分解个体内关系表现出浓厚的兴趣。在本文中,我们提出了一种基于个体内变异性评分的因果推断方法,通过控制个体的稳定特征来估计时变连续处理的联合效应。在解释了假设的数据生成过程并给出了稳定特征因素、个体内变异性评分和个体内时变处理的联合效应的正式定义后,我们介绍了所提出的方法,该方法由两步分析组成。首先,使用基于通过结构方程建模(SEM)的最佳线性相关保留预测器的权重,从个体的稳定特征中计算每个个体的个体内变异性评分。然后,通过潜在结果方法(边际结构模型(MSMs)或结构嵌套均值模型(SNMMs))使用计算出的个体内变异性评分来估计因果参数。与完全依赖 SEM 的方法不同,本方法不假设个体内观察到的时变混杂因素具有线性关系。我们强调使用具有 G 估计的 SNMM,因为它在如何观察到的时变混杂因素在个体内水平上与处理/预测因子和结果具有功能关系方面对模型的失拟具有双重稳健性。通过模拟,我们表明该方法可以很好地恢复因果参数,如果不适当考虑稳定特征,因果估计可能会严重偏差。还提供了使用来自东京青少年队列研究的关于睡眠习惯和心理健康状况的数据的实证应用。