Effect modification occurs when the effect of the treatment on an outcome differs according to the level of a third variable (the effect modifier, EM). A natural way to assess effect modification is by subgroup analysis or include the interaction terms between the treatment and the covariates in an outcome regression. The latter, however, does not target a parameter of a marginal structural model (MSM) unless a correctly specified outcome model is specified. Our aim is to develop a data-adaptive method to select effect modifying variables in an MSM with a single time point exposure. A two-stage procedure is proposed. First, we estimate the conditional outcome expectation and propensity score and plug these into a doubly robust loss function. Second, we use the adaptive LASSO to select the EMs and estimate MSM coefficients. Post-selection inference is then used to obtain coverage on the selected EMs. Simulations studies are performed in order to verify the performance of the proposed methods.
翻译:当处理结果对结果的影响因第三个变量(效果修正器,EM)的不同程度而不同时,就会发生效果修改。评估效果修改的自然方法是分组分析,或在结果回归中包括处理和共变之间的相互作用条件,但后者没有针对边际结构模型(MSM)的参数,除非指明了正确指定的结果模型。我们的目的是开发一种数据适应方法,以选择对一个具有单一时间点暴露的 MMS 变量进行修改的效果。提出了一个两阶段程序。首先,我们估计有条件的结果预期值和倾向性分数,并将这些分数插入一个双倍强大的损失函数。第二,我们使用适应性LASSO来选择 EM 和估计 MMM系数。然后,选择后推论用于对选定的 EMs进行覆盖。进行模拟研究是为了核实拟议方法的性能。