Wei Kecheng, Xue Fei, Xu Qi, Yuan Yubai, Zhang Yuexia, Qin Guoyou, Wani Agaz H, Aiello Allison E, Wildman Derek E, Uddin Monica, Qu Annie
Department of Biostatistics, Fudan University.
Department of Statistics, Purdue University.
bioRxiv. 2025 Mar 12:2024.02.06.579228. doi: 10.1101/2024.02.06.579228.
DNA methylation (DNAm) has been shown to mediate causal effects from traumatic experiences to post-traumatic stress disorder (PTSD). However, the scientific question about whether the mediation effect changes over time remains unclear. In this paper, we develop time-varying structural equation models to identify cytosine-phosphate-guanine (CpG) sites where DNAm mediates the effect of trauma exposure on PTSD, and to capture dynamic changes in mediation effects. The proposed methodology is motivated by the Detroit Neighborhood Health Study (DNHS) with high-dimensional and longitudinal DNAm measurements. To handle the non-monotone missing DNAm in the dataset, we propose a novel Longitudinal Multiple Imputation (LMI) method utilizing dependency among repeated measurements, and employ the generalized method of moments to integrate the multiple imputations. Simulations confirm that the proposed method outperforms existing approaches in various longitudinal settings. In DNHS data analysis, our method identifies several CpG sites where DNAm exhibits dynamic mediation effects. Some of the corresponding genes have been shown to be associated with PTSD in the existing literature, and our findings on their time-varying effects could deepen the understanding of the mediation role of DNAm on the causal path from trauma exposure to PTSD risk.
DNA甲基化(DNAm)已被证明可介导从创伤经历到创伤后应激障碍(PTSD)的因果效应。然而,关于这种中介效应是否随时间变化的科学问题仍不明确。在本文中,我们开发了随时间变化的结构方程模型,以识别DNAm介导创伤暴露对PTSD影响的胞嘧啶 - 磷酸 - 鸟嘌呤(CpG)位点,并捕捉中介效应的动态变化。所提出的方法是受底特律邻里健康研究(DNHS)的启发,该研究有高维度和纵向的DNAm测量数据。为了处理数据集中非单调缺失的DNAm,我们提出了一种利用重复测量之间的依赖性的新型纵向多重填补(LMI)方法,并采用广义矩方法来整合多重填补。模拟结果证实,在各种纵向设置中,所提出的方法优于现有方法。在DNHS数据分析中,我们的方法识别出几个DNAm表现出动态中介效应的CpG位点。现有文献中已表明一些相应的基因与PTSD相关,我们关于它们随时间变化效应的发现可能会加深对DNAm在从创伤暴露到PTSD风险的因果路径中的中介作用的理解。