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Comparison of haplotype-based tests for detecting gene–environment interactions with rare variants

机译:基于单倍型检测稀有变异的基因-环境相互作用的测试的比较

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摘要

Dissecting the genetic mechanism underlying a complex disease hinges on discovering gene–environment interactions (GXE). However, detecting GXE is a challenging problem especially when the genetic variants under study are rare. Haplotype-based tests have several advantages over the so-called collapsing tests for detecting rare variants as highlighted in recent literature. Thus, it is of practical interest to compare haplotype-based tests for detecting GXE including the recent ones developed specifically for rare haplotypes. We compare the following methods: haplo.glm, hapassoc, HapReg, Bayesian hierarchical generalized linear model (BhGLM) and logistic Bayesian LASSO (LBL). We simulate data under different types of association scenarios and levels of gene–environment dependence. We find that when the type I error rates are controlled to be the same for all methods, LBL is the most powerful method for detecting GXE. We applied the methods to a lung cancer data set, in particular, in region 15q25.1 as it has been suggested in the literature that it interacts with smoking to affect the lung cancer susceptibility and that it is associated with smoking behavior. LBL and BhGLM were able to detect a rare haplotype–smoking interaction in this region. We also analyzed the sequence data from the Dallas Heart Study, a population-based multi-ethnic study. Specifically, we considered haplotype blocks in the gene ANGPTL4 for association with trait serum triglyceride and used ethnicity as a covariate. Only LBL found interactions of haplotypes with race (Hispanic). Thus, in general, LBL seems to be the best method for detecting GXE among the ones we studied here. Nonetheless, it requires the most computation time.
机译:剖析复杂疾病的遗传机制取决于发现基因与环境的相互作用(GXE)。但是,检测GXE是一个具有挑战性的问题,尤其是在所研究的遗传变异很少的情况下。基于单倍型的测试与所谓的折叠测试相比具有几个优势,该折叠测试用于检测稀有变体,如最近文献中所强调的那样。因此,比较基于单体型的检测GXE的测试(包括最近专门针对稀有单体型开发的测试)具有实际意义。我们比较以下方法:haplo.glm,hapassoc,HapReg,贝叶斯分层广义线性模型(BhGLM)和逻辑贝叶斯LASSO(LBL)。我们在不同类型的关联方案和基因-环境依赖性水平下模拟数据。我们发现,当将所有方法的I类错误率都控制为相同时,LBL是检测GXE的最有效方法。我们将这些方法应用于肺癌数据集,尤其是在15q25.1区域中,正如文献中已经暗示的那样,该方法与吸烟相互作用会影响肺癌的易感性,并且与吸烟行为有关。 LBL和BhGLM能够检测到该区域中罕见的单倍型-吸烟相互作用。我们还分析了基于人群的多种族研究-达拉斯心脏研究的序列数据。具体而言,我们考虑了基因ANGPTL4中的单倍型模块与性状血清甘油三酸酯相关联,并使用种族作为协变量。只有LBL发现单倍型与种族的相互作用(西班牙裔)。因此,通常来说,在我们研究的方法中,LBL似乎是检测GXE的最佳方法。但是,它需要最多的计算时间。

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