Tingyang Hu, Randy L Parrish, Qile Dai, Aron S Buchman, Shinya Tasaki, David A Bennett, Nicholas T Seyfried, Michael P Epstein, Jingjing Yang
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引用次数: 0
摘要
通过整合蛋白质组学数据和全基因组关联研究(GWAS)汇总数据,全转录组关联研究(TWAS)工具已被用于开展全蛋白质组关联研究(PWAS)。PWAS 确定的重要基因的遗传效应可能是通过基因调控的蛋白质丰度介导的,因此比 GWAS 基因位点更能说明潜在的疾病机制。然而,现有的 TWAS/PWAS 工具由于只考虑一种统计模型而受到限制。我们提出了一个考虑多种统计模型的综合 PWAS 管道,并通过对阿尔茨海默病(AD)痴呆症的模拟和应用研究证明了其性能的提高。我们采用聚合考奇关联检验(Aggregated Cauchy Association Test),从假设了互补统计模型的三个现有工具--TIGAR、PrediXcan 和 FUSION 所获得的 PWAS p 值推导出综合 PWAS (PWAS-O) p 值。我们的模拟研究表明,PWAS-O 比所有三个单独的工具都具有更高的功率,而且 I 型误差校准良好。我们将 PWAS-O 应用于研究 AD 痴呆症,其参考蛋白质组数据分析自欧洲血统个体死后大脑背外侧前额叶皮层。我们发现了 43 个风险基因,其中包括 5 个以前的研究未发现的基因,这些基因通过蛋白-蛋白相互作用网络相互连接,其中包括众所周知的 AD 风险基因 TOMM40、APOC1 和 APOC2。我们还验证了通过蛋白质组介导的 27 个(63%)PWAS-O 风险基因的因果遗传效应,从而深入了解了阿德痴呆症的潜在生物学机制,并突出了有希望的治疗开发靶点。PWAS-O很容易应用于其他复杂疾病的研究。
Omnibus proteome-wide association study identifies 43 risk genes for Alzheimer disease dementia.
Transcriptome-wide association study (TWAS) tools have been applied to conduct proteome-wide association studies (PWASs) by integrating proteomics data with genome-wide association study (GWAS) summary data. The genetic effects of PWAS-identified significant genes are potentially mediated through genetically regulated protein abundance, thus informing the underlying disease mechanisms better than GWAS loci. However, existing TWAS/PWAS tools are limited by considering only one statistical model. We propose an omnibus PWAS pipeline to account for multiple statistical models and demonstrate improved performance by simulation and application studies of Alzheimer disease (AD) dementia. We employ the Aggregated Cauchy Association Test to derive omnibus PWAS (PWAS-O) p values from PWAS p values obtained by three existing tools assuming complementary statistical models-TIGAR, PrediXcan, and FUSION. Our simulation studies demonstrated improved power, with well-calibrated type I error, for PWAS-O over all three individual tools. We applied PWAS-O to studying AD dementia with reference proteomic data profiled from dorsolateral prefrontal cortex of postmortem brains from individuals of European ancestry. We identified 43 risk genes, including 5 not identified by previous studies, which are interconnected through a protein-protein interaction network that includes the well-known AD risk genes TOMM40, APOC1, and APOC2. We also validated causal genetic effects mediated through the proteome for 27 (63%) PWAS-O risk genes, providing insights into the underlying biological mechanisms of AD dementia and highlighting promising targets for therapeutic development. PWAS-O can be easily applied to studying other complex diseases.
期刊介绍:
The American Journal of Human Genetics (AJHG) is a monthly journal published by Cell Press, chosen by The American Society of Human Genetics (ASHG) as its premier publication starting from January 2008. AJHG represents Cell Press's first society-owned journal, and both ASHG and Cell Press anticipate significant synergies between AJHG content and that of other Cell Press titles.