利用基于基因的方法鉴定复杂人类性状之间表型相关性的遗传基础和分子机制。

Jialiang Gu, Chris Fuller, Peter Carbonetto, Xin He, Jiashun Zheng, Hao Li
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引用次数: 0

摘要

基于流行病学研究,人类复杂性状之间的表型相关性早已被观察到。然而,遗传基础和潜在的机制在很大程度上是未知的。在此,我们开发了一种基于基因的方法来测量一对性状之间的遗传重叠并描绘共享基因/途径,通过三个步骤:1)使用一种新开发的称为Sherlock-II的算法,通过整合GWAS和eQTL数据,将snp -表型关联图谱翻译为基因-表型关联图谱;2)通过归一化距离和两个基因-表型关联谱的相关p值来衡量一对性状之间的遗传重叠;3)描述所涉及的基因/途径。将该方法应用于涵盖59个人类性状的一组GWAS数据,发现许多已知和未预料到的性状对之间存在显著重叠;其中很大一部分无法通过基于SNP的遗传相似性测量检测到。例如癌症和阿尔茨海默病(AD),类风湿关节炎和克罗恩病,长寿和空腹血糖。功能分析揭示了这些对共享的特定基因/途径。例如,癌症和AD与参与缺氧反应和P53/凋亡通路的基因相关,提示它们之间负相关的特定机制。我们的方法可以检测复杂特征之间的未知关系,并产生机制假设,并有可能通过将知识从一种疾病转移到另一种疾病来改善诊断和治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying the genetic basis and molecular mechanisms underlying phenotypic correlation between complex human traits using a gene-based approach.

Phenotypic correlations between complex human traits have long been observed based on epidemiological studies. However, the genetic basis and underlying mechanisms are largely unknown. Here we developed a gene-based approach to measure genetic overlap between a pair of traits and to delineate the shared genes/pathways, through three steps: 1) translating SNP-phenotype association profile to gene-phenotype association profile by integrating GWAS with eQTL data using a newly developed algorithm called Sherlock-II; 2) measuring the genetic overlap between a pair of traits by a normalized distance and the associated p value between the two gene-phenotype association profiles; 3) delineating genes/pathways involved. Application of this approach to a set of GWAS data covering 59 human traits detected significant overlap between many known and unexpected pairs of traits; a significant fraction of them are not detectable by SNP based genetic similarity measures. Examples include Cancer and Alzheimer's Disease (AD), Rheumatoid Arthritis and Crohn's disease, and Longevity and Fasting glucose. Functional analysis revealed specific genes/pathways shared by these pairs. For example, Cancer and AD are co-associated with genes involved in hypoxia response and P53/apoptosis pathways, suggesting specific mechanisms underlying the inverse correlation between them. Our approach can detect yet unknown relationships between complex traits and generate mechanistic hypotheses and has the potential to improve diagnosis and treatment by transferring knowledge from one disease to another.

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