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Multi-trait transcriptome-wide association studies with probabilistic Mendelian randomization

机译:具有概率孟德尔随机化的多特征转录组合研究

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摘要

A transcriptome-wide association study (TWAS) integrates data from genome-wide association studies and gene expression mapping studies for investigating the gene regulatory mechanisms underlying diseases. Existing TWAS methods are primarily univariate in nature, focusing on analyzing one outcome trait at a time. However, many complex traits are correlated with each other and share a common genetic basis. Consequently, analyzing multiple traits jointly through multivariate analysis can potentially improve the power of TWASs. Here, we develop a method, moPMR-Egger (multiple outcome probabilistic Mendelian randomization with Egger assumption), for analyzing multiple outcome traits in TWAS applications. moPMR-Egger examines one gene at a time, relies on its cis-SNPs that are in potential linkage disequilibrium with each other to serve as instrumental variables, and tests its causal effects on multiple traits jointly. A key feature of moPMR-Egger is its ability to test and control for potential horizontal pleiotropic effects from instruments, thus maximizing power while minimizing false associations for TWASs. In simulations, moPMR-Egger provides calibrated type I error control for both causal effects testing and horizontal pleiotropic effects testing and is more powerful than existing univariate TWAS approaches in detecting causal associations. We apply moPMR-Egger to analyze 11 traits from 5 trait categories in the UK Biobank. In the analysis, moPMR-Egger identified 13.15% more gene associations than univariate approaches across trait categories and revealed distinct regulatory mechanisms underlying systolic and diastolic blood pressures.
机译:转录组 - 范围的关联研究(TWA)将来自基因组关联研究和基因表达映射研究的数据整合,用于研究基因调节机制的基本疾病。现有的TWA方法主要是自然界的,专注于一次分析一个结果特征。然而,许多复杂的性状彼此相关并共享共同的遗传基础。因此,通过多变量分析共同分析多个性状,可能会潜在地提高双扭曲的力量。在这里,我们开发了一种方法,MOPMR-EGGER(具有EGGER假设的多个结果),用于分析TWA应用中的多个结果特征。 MOPMR-EGGER一次检查一个基因,依赖于其在潜在的连锁不平衡中的顺式互联网,以用作乐器变量,并共同测试其对多个性状的因果效应。 MOPMR-EGGER的一个关键特征是其测试和控制从仪器的潜在水平渗透效应的能力,从而最大限度地提高功率,同时最大限度地减少双臂的错误关联。在模拟中,MOPMR-EGGER为因果效果测试和水平型效果测试提供校准的I错误控制,并且比在检测因果关系中的现有单变量TWA方法更强大。我们将MOPMR-Egger应用于英国Biobank中的5个特质类别的11个特征。在分析中,MOPMR-Egger在特异性分类中鉴定了比单变量的方法更多的基因关联,并揭示了收缩期和舒张血压的不同调节机制。

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