生物
全基因组关联研究
数量性状位点
多基因
计算生物学
基因
遗传学
特质
基因组
遗传关联
单核苷酸多态性
计算机科学
基因型
程序设计语言
作者
E. Weeks,Jacob C. Ulirsch,Nathan Cheng,Brian L. Trippe,Rebecca S. Fine,Jenkai Miao,Tejal A. Patwardhan,Masahiro Kanai,Joseph Nasser,Charles P. Fulco,Katherine Tashman,François Aguet,Taibo Li,José Ordovás-Montañés,Christopher S. Smillie,Moshe Biton,Alex K. Shalek,Ashwin N. Ananthakrishnan,Ramnik J. Xavier,Aviv Regev
出处
期刊:Nature Genetics
[Nature Portfolio]
日期:2023-07-13
卷期号:55 (8): 1267-1276
被引量:168
标识
DOI:10.1038/s41588-023-01443-6
摘要
Genome-wide association studies (GWASs) are a valuable tool for understanding the biology of complex human traits and diseases, but associated variants rarely point directly to causal genes. In the present study, we introduce a new method, polygenic priority score (PoPS), that learns trait-relevant gene features, such as cell-type-specific expression, to prioritize genes at GWAS loci. Using a large evaluation set of genes with fine-mapped coding variants, we show that PoPS and the closest gene individually outperform other gene prioritization methods, but observe the best overall performance by combining PoPS with orthogonal methods. Using this combined approach, we prioritize 10,642 unique gene–trait pairs across 113 complex traits and diseases with high precision, finding not only well-established gene–trait relationships but nominating new genes at unresolved loci, such as LGR4 for estimated glomerular filtration rate and CCR7 for deep vein thrombosis. Overall, we demonstrate that PoPS provides a powerful addition to the gene prioritization toolbox. Polygenic Priority Score (PoPS) prioritizes candidate effector genes at complex trait loci by integrating genome-wide association summary statistics with other data types. Combining PoPS with methods that leverage local genetic signals further improves the performance.
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