Department of Statistics, National Cheng Kung University, Tainan, Taiwan.
Institute of Statistics, National Yang Ming Chiao Tung University, Hsinchu, Taiwan.
Stat Med. 2022 Sep 20;41(21):4143-4158. doi: 10.1002/sim.9501. Epub 2022 Jun 18.
Counterfactual-model-based mediation analysis can yield substantial insight into the causal mechanism through the assessment of natural direct effects (NDEs) and natural indirect effects (NIEs). However, the assumptions regarding unmeasured mediator-outcome confounding and intermediate mediator-outcome confounding that are required for the determination of NDEs and NIEs present practical challenges. To address this problem, we introduce an instrumental blocker, a novel quasi-instrumental variable, to relax both of these assumptions, and we define a swapped direct effect (SDE) and a swapped indirect effect (SIE) to assess the mediation. We show that the SDE and SIE are identical to the NDE and NIE, respectively, based on a causal interpretation. Moreover, the empirical expressions of the SDE and SIE are derived with and without an intermediate mediator-outcome confounder. Then, a multiply robust estimation method is derived to mitigate the model misspecification problem. We prove that the proposed estimator is consistent, asymptotically normal, and achieves the semiparametric efficiency bound. As an illustration, we apply the proposed method to genomic datasets of lung cancer to investigate the potential role of the epidermal growth factor receptor in the treatment of lung cancer.
基于反事实模型的中介分析可以通过评估自然直接效应(NDE)和自然间接效应(NIE),深入了解因果机制。然而,为了确定 NDE 和 NIE,需要满足一些关于未测量的中介-结局混杂和中间中介-结局混杂的假设,这在实践中带来了挑战。为了解决这个问题,我们引入了一种工具阻断器,即一种新的拟工具变量,以放宽这两个假设,并定义了交换直接效应(SDE)和交换间接效应(SIE)来评估中介作用。我们从因果解释的角度证明了 SDE 和 SIE 分别与 NDE 和 NIE 相同。此外,我们推导出了在存在和不存在中间中介-结局混杂的情况下,SDE 和 SIE 的经验表达式。然后,我们推导出了一种多重稳健估计方法来减轻模型误设定问题。我们证明了所提出的估计量是一致的、渐近正态的,并达到了半参数效率界。作为说明,我们将所提出的方法应用于肺癌的基因组数据集,以研究表皮生长因子受体在肺癌治疗中的潜在作用。