School of Psychology, Shenzhen University, Shenzhen, China.
Department of Statistics, Chinese University of Hong Kong, Hong Kong, China.
Stat Med. 2024 Dec 20;43(29):5497-5512. doi: 10.1002/sim.10239. Epub 2024 Oct 28.
This study proposes a heterogeneous mediation analysis for survival data that accommodates multiple mediators and sparsity of the predictors. We introduce a joint modeling approach that links the mediation regression and proportional hazards models through Bayesian additive regression trees with shared typologies. The shared tree component is motivated by the fact that confounders and effect modifiers on the causal pathways linked by different mediators often overlap. A sparsity-inducing prior is incorporated to capture the most relevant confounders and effect modifiers on different causal pathways. The individual-specific interventional direct and indirect effects are derived on the scale of the logarithm of hazards and survival function. A Bayesian approach with an efficient Markov chain Monte Carlo algorithm is developed to estimate the conditional interventional effects through the Monte Carlo implementation of the mediation formula. Simulation studies are conducted to verify the empirical performance of the proposed method. An application to the ACTG175 study further demonstrates the method's utility in causal discovery and heterogeneity quantification.
本研究提出了一种适用于生存数据分析的异质中介分析方法,可同时处理多个中介变量和预测变量的稀疏性。我们引入了一种联合建模方法,通过具有共享类型的贝叶斯加性回归树将中介回归和比例风险模型联系起来。共享树组件的动机是,不同中介变量所连接的因果途径上的混杂因素和效应修饰因子通常会重叠。引入了一个稀疏诱导先验,以捕获不同因果途径上最相关的混杂因素和效应修饰因子。个体特定的干预直接和间接效应是在危险和生存函数的对数尺度上推导出来的。通过中介公式的蒙特卡罗实现,开发了一种贝叶斯方法和一种有效的马尔可夫链蒙特卡罗算法,以估计条件干预效应。进行了模拟研究以验证所提出方法的经验性能。对 ACTG175 研究的应用进一步证明了该方法在因果发现和异质性量化方面的实用性。