Center for Children and Families, Department of Psychology, Florida International University, Miami, Florida, USA.
Department of Psychology, Arizona State University, Tempe, Arizona, USA.
Multivariate Behav Res. 2020 Mar-Apr;55(2):165-187. doi: 10.1080/00273171.2019.1614429. Epub 2019 Jun 20.
Two methods from the potential outcomes framework - inverse propensity weighting (IPW) and sequential G-estimation - were evaluated and compared to linear regression for estimating the mediated effect in a two-wave design with a randomized intervention and continuous mediator and outcome. Baseline measures of the mediator and outcome can be considered confounders of the follow-up mediator - outcome relation for which adjustment is necessary to eliminate bias. To adjust for baseline measures of the mediator and outcome, IPW uses stabilized inverse propensity weights whereas sequential G-estimation uses regression adjustment. Theoretical differences between the models are described, and Monte Carlo simulations compared the performance of linear regression; IPW without weight truncation; IPW with weights truncated at the 1st/99th, 5th/95th, and 10th/90th percentiles; and sequential G-estimation. Sequential G-estimation performed similarly to linear regression, but IPW provided a biased estimate of the mediated effect, lower power, lower confidence interval coverage, and higher mean squared error. Simulation results show that IPW failed to fully adjust the follow-up mediator - outcome relation for confounding due to the baseline measures. We then compared the mediated effect estimates using data from a randomized experiment evaluating a steroid prevention program for high school athletes. Implications and future directions are discussed.
两种潜在结果框架中的方法——逆概率加权(Inverse Propensity Weighting,简称 IPW)和序贯 G 估计——被评估并与线性回归进行了比较,以估计在具有随机干预、连续中介变量和结果的两波设计中中介效应。中介变量和结果的基线测量值可被视为随访中介变量-结果关系的混杂因素,需要进行调整以消除偏差。为了调整中介变量和结果的基线测量值,逆概率加权(Inverse Propensity Weighting,简称 IPW)使用稳定的逆概率权重,而序贯 G 估计则使用回归调整。描述了模型之间的理论差异,并通过蒙特卡罗模拟比较了线性回归、无权重截断的 IPW、权重截断在第 1/99、5/95 和 10/90 百分位的 IPW 以及序贯 G 估计的性能。序贯 G 估计的性能与线性回归相似,但 IPW 提供了中介效应的有偏差估计值、较低的功效、较低的置信区间覆盖率和较高的均方误差。模拟结果表明,由于基线测量值,逆概率加权(Inverse Propensity Weighting,简称 IPW)未能完全调整随访中介变量-结果关系中的混杂因素。然后,我们使用评估高中运动员类固醇预防计划的随机实验数据比较了中介效应估计值。讨论了影响和未来方向。