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Detecting Rare and Common Haplotype-Environment Interaction under Uncertainty of Gene-Environment Independence Assumption

机译:检测基因环境独立假设不确定度下的罕见和常见的单倍型环境相互作用

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Finding rare variants and gene-environment interactions (GXE) is critical in dissecting complex diseases. We consider the problem of detecting GXE where G is a rare haplotype and E is a nongenetic factor. Such methods typically assume G-E independence, which may not hold in many applications. A pertinent example is lung cancer-there is evidence that variants on Chromosome 15q25.1 interact with smoking to affect the risk. However, these variants are associated with smoking behavior rendering the assumption of G-E independence inappropriate. With the motivation of detecting GXE under G-E dependence, we extend an existing approach, logistic Bayesian LASSO, which assumes G-E independence (LBL-GXE-I) by modeling G-E dependence through a multinomial logistic regression (referred to as LBL-GXE-D). Unlike LBL-GXE-I, LBL-GXE-D controls type I error rates in all situations; however, it has reduced power when G-E independence holds. To control type I error without sacrificing power, we further propose a unified approach, LBL-GXE, to incorporate uncertainty in the G-E independence assumption by employing a reversible jump Markov chain Monte Carlo method. Our simulations show that LBL-GXE has power similar to that of LBL-GXE-I when G-E independence holds, yet has well-controlled type I errors in all situations. To illustrate the utility of LBL-GXE, we analyzed a lung cancer dataset and found several significant interactions in the 15q25.1 region, including one between a specific rare haplotype and smoking.
机译:寻找罕见的变体和基因环境相互作用(GXE)对于解剖复杂疾病至关重要。我们考虑检测GXE的问题,其中G是稀有单倍型,e是不良因子。这些方法通常假设G-E独立性,其可能在许多应用中不存在。相关典型是肺癌 - 有证据表明染色体15Q25.1的变体与吸烟相互作用以影响风险。然而,这些变体与吸烟行为相关联,呈现G-E独立性不合适的假设。通过在GE依赖下检测GXE的动机,我们通过通过多项逻辑回归(称为LBL-GXE-D)来扩展现有方法,逻辑贝叶斯套索,该方法是通过模拟GE依赖性的GE独立(LBL-GXE-I) 。与LBL-GXE-I不同,LBL-GXE-D控制所有情况中的I型错误率;但是,当G-E独立性持有时,它具有降低的功率。为了控制I型错误而不牺牲权力,我们进一步提出了一种统一的方法,LBL-GXE,通过采用可逆跳转马克洛夫链蒙特卡罗方法来纳入G-E独立假设中的不确定性。我们的模拟表明,当G-E独立持有时,LBL-GXE具有类似于LBL-GXE-I的力量,但在所有情况下都有良好控制的I型错误。为了说明LBL-GXE的效用,我们分析了肺癌数据集,发现了15季度的几个区域中的几个显着的相互作用,包括特异性稀有单倍型和吸烟之间的几个重要的相互作用。

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