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Causal mediation analysis for longitudinal data with exogenous exposure

机译:外源性暴露的纵向数据的因果分析

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摘要

Mediation analysis is a valuable approach to examine pathways in epidemiological research. Prospective cohort studies are often conducted to study biological mechanisms and often collect longitudinal measurements on each participant. Mediation formulae for longitudinal data have been developed. Here, we formalize the natural direct and indirect effects using a causal framework with potential outcomes that allows for an interaction between the exposure and the mediator. To allow different types of longitudinal measures of the mediator and outcome, we assume two generalized mixed-effects models for both the mediator and the outcome. The model for the mediator has subject-specific random intercepts and random exposure slopes for each cluster, and the outcome model has random intercepts and random slopes for the exposure, the mediator, and their interaction. We also expand our approach to settings with multiple mediators and derive the mediated effects, jointly through all mediators. Our method requires the absence of time-varying confounding with respect to the exposure and the mediator. This assumption is achieved in settings with exogenous exposure and mediator, especially when exposure and mediator are not affected by variables measured at earlier time points. We apply the methodology to data from the Normative Aging Study and estimate the direct and indirect effects, via DNA methylation, of air pollution, and temperature on intercellular adhesion molecule 1 (ICAM-1) protein levels. Our results suggest that air pollution and temperature have a direct effect on ICAM-1 protein levels (i.e. not through a change in ICAM-1 DNA methylation) and that temperature has an indirect effect via a change in ICAM-1 DNA methylation.
机译:中介分析是检查流行病学研究途径的宝贵方法。通常进行前瞻性队列研究以研究生物学机制,并经常收集每个参与者的纵向测量结果。已经开发出用于纵向数据的中介公式。在这里,我们使用因果框架来规范自然的直接和间接作用,该因果框架具有潜在的结果,可以允许暴露和中介之间的相互作用。为了允许对调解人和结果进行不同类型的纵向测量,我们为调解人和结果假设了两个广义的混合效应模型。调解人模型对每个聚类具有特定于受试者的随机截距和随机暴露斜率,而结果模型对于暴露,调解人及其相互作用具有随机截距和随机斜率。我们还将我们的方法扩展到具有多个调解人的环境,并通过所有调解人共同获得调解效果。我们的方法要求在暴露和介体方面不存在随时间变化的混淆。该假设是在具有外源性暴露和介体的环境中实现的,尤其是当暴露和介体不受早期时间点测量的变量影响时。我们将该方法应用于标准老化研究的数据,并通过DNA甲基化估计空气污染和温度对细胞间粘附分子1(ICAM-1)蛋白水平的直接和间接影响。我们的结果表明,空气污染和温度对ICAM-1蛋白水平有直接影响(即不通过ICAM-1 DNA甲基化的变化),而温度通过ICAM-1 DNA甲基化的变化具有间接影响。

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