论文标题
Mendelian随机化中异质因果机制的潜在混合物模型
A Latent Mixture Model for Heterogeneous Causal Mechanisms in Mendelian Randomization
论文作者
论文摘要
孟德尔随机分析(MR)是流行病学和遗传学的一种流行方法,它使用遗传变异作为因果推断的工具变量。现有的MR方法通常假设大多数遗传变异是识别常见因果效应的有效仪器变量。普遍缺乏意识到,即使涉及多个因果途径,也可能会违反这种效果同质性假设,即使所有仪器变量都是有效的。在本文中,我们介绍了一种潜在混合模型MR-PATH,该模型将产生类似因果效应估计的工具分组在一起。我们开发一种蒙特卡罗EM算法来拟合此混合模型,得出近似的置信区间以进行不确定性定量,并采用改良的贝叶斯信息标准(BIC)进行模型选择。我们使用数值模拟验证蒙特卡罗EM算法,置信区间和模型选择标准的功效。当应用我们的方法估计高密度脂蛋白胆固醇对冠状动脉疾病的影响以及肥胖对II型糖尿病的影响时,我们确定了潜在的机械异质性。
Mendelian Randomization (MR) is a popular method in epidemiology and genetics that uses genetic variation as instrumental variables for causal inference. Existing MR methods usually assume most genetic variants are valid instrumental variables that identify a common causal effect. There is a general lack of awareness that this effect homogeneity assumption can be violated when there are multiple causal pathways involved, even if all the instrumental variables are valid. In this article, we introduce a latent mixture model MR-PATH that groups instruments that yield similar causal effect estimates together. We develop a Monte-Carlo EM algorithm to fit this mixture model, derive approximate confidence intervals for uncertainty quantification, and adopt a modified Bayesian Information Criterion (BIC) for model selection. We verify the efficacy of the Monte-Carlo EM algorithm, confidence intervals, and model selection criterion using numerical simulations. We identify potential mechanistic heterogeneity when applying our method to estimate the effect of high-density lipoprotein cholesterol on coronary heart disease and the effect of adiposity on type II diabetes.