Health Methodology Research Group, School of Community Based Medicine, University of Manchester, UK.
Stat Methods Med Res. 2010 Jun;19(3):237-70. doi: 10.1177/0962280209105014. Epub 2009 Jul 16.
Complex intervention trials should be able to answer both pragmatic and explanatory questions in order to test the theories motivating the intervention and help understand the underlying nature of the clinical problem being tested. Key to this is the estimation of direct effects of treatment and indirect effects acting through intermediate variables which are measured post-randomisation. Using psychological treatment trials as an example of complex interventions, we review statistical methods which crucially evaluate both direct and indirect effects in the presence of hidden confounding between mediator and outcome. We review the historical literature on mediation and moderation of treatment effects. We introduce two methods from within the existing causal inference literature, principal stratification and structural mean models, and demonstrate how these can be applied in a mediation context before discussing approaches and assumptions necessary for attaining identifiability of key parameters of the basic causal model. Assuming that there is modification by baseline covariates of the effect of treatment (i.e. randomisation) on the mediator (i.e. covariate by treatment interactions), but no direct effect on the outcome of these treatment by covariate interactions leads to the use of instrumental variable methods. We describe how moderation can occur through post-randomisation variables, and extend the principal stratification approach to multiple group methods with explanatory models nested within the principal strata. We illustrate the new methodology with motivating examples of randomised trials from the mental health literature.
复杂干预试验应该能够回答实用性和解释性问题,以检验激励干预的理论,并帮助理解正在测试的临床问题的潜在性质。关键是估计治疗的直接效应和通过随机化后测量的中间变量起作用的间接效应。我们以心理治疗试验为例,综述了在中介和结局之间存在隐藏混杂的情况下,关键评估直接和间接效应的统计方法。我们回顾了关于治疗效果的中介和调节的历史文献。我们介绍了因果推断文献中两种方法,主要分层和结构平均模型,并演示了如何在中介背景下应用这些方法,然后讨论实现基本因果模型关键参数可识别性所需的方法和假设。假设治疗(即随机化)对中介(即协变量与治疗相互作用)的效果有基线协变量的修饰,但对这些治疗与协变量相互作用的结局没有直接影响,这就导致了使用工具变量方法。我们描述了如何通过随机化后变量进行调节,并将主要分层方法扩展到具有主要分层内嵌套解释模型的多组方法。我们使用来自心理健康文献中的随机试验的激励示例来说明新方法。