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Time-varying effect moderation using the structural nested mean model: estimation using inverse-weighted regression with residuals

机译:使用结构嵌套均值模型的时变效应调节:使用带有残差的反加权回归进行估计

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摘要

This article considers the problem of examining time-varying causal effect moderation using observational, longitudinal data in which treatment, candidate moderators, and possible confounders are time varying. The structural nested mean model (SNMM) is used to specify the moderated time-varying causal effects of interest in a conditional mean model for a continuous response given time-varying treatments and moderators. We present an easy-to-use estimator of the SNMM that combines an existing regression-with-residuals (RR) approach with an inverse-probability-of-treatment weighting (IPTW) strategy. The RR approach has been shown to identify the moderated time-varying causal effects if the time-varying moderators are also the sole time-varying confounders. The proposed IPTW+RR approach provides estimators of the moderated time-varying causal effects in the SNMM in the presence of an additional, auxiliary set of known and measured time-varying confounders. We use a small simulation experiment to compare IPTW+RR versus the traditional regression approach and to compare small and large sample properties of asymptotic versus bootstrap estimators of the standard errors for the IPTW+RR approach. This article clarifies the distinction between time-varying moderators and time-varying confounders. We illustrate the methodology in a case study to assess if time-varying substance use moderates treatment effects on future substance use.
机译:本文考虑了使用观察性纵向数据检查时变因果效应缓和的问题,在纵向数据中,处理,候选缓和者和可能的混杂因素是时变的。结构嵌套均值模型(SNMM)用于指定条件均值模型中感兴趣的适度时变因果效应,以便在给定时变处理和主持人的情况下获得连续响应。我们提出了一种简单易用的SNMM估计器,该估计器结合了现有的残差回归(RR)方法和逆处理概率加权(IPTW)策略。如果时变主持人也是唯一的时变混杂因素,那么RR方法已被证明可以识别出适度的时变因果关系。所提出的IPTW + RR方法可在存在已知和测得的时变混杂因素的附加辅助集合的情况下,对SNMM中适度的时变因果效应进行估计。我们使用一个小型模拟实验来比较IPTW + RR与传统回归方法,并比较IPTW + RR方法的标准误差的渐进估计和自举估计的大小样本性质。本文阐明了时变主持人和时变混杂因素之间的区别。我们在一个案例研究中说明了该方法,以评估时变物质的使用是否能减轻治疗对未来物质使用的影响。

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