生物
蛋白质组
蛋白质基因组学
计算生物学
遗传学
基因
效应器
表型
蛋白质组学
遗传筛选
药物重新定位
疾病
FLNA公司
重新调整用途
数量性状位点
生物信息学
遗传变异
RNA干扰
模式生物
人类蛋白质组计划
基因组
DNA微阵列
作者
Mine Koprulu,Karl Smith-Byrne,Brian Richard Ferolito,Erin Macdonald-Dunlop,Jian’an Luan,Åsa K. Hedman,Chibuzor Franklin Ogamba,Jurgis Kuliesius,L. Repetto,Anna Ramisch,Fahim Abbasi,Johan Ärnlöv,Themistocles L. Assimes,Hanna M. Björck,Sophia Björkander,Morten Bøttcher,Adam Stuart Butterworth,Z M Chen,Kelly Cho,Robert Joseph Clarke
出处
期刊:Cell
[Cell Press]
日期:2026-05-01
标识
DOI:10.1016/j.cell.2026.03.049
摘要
Summary
Understanding the genetic regulation of circulating protein levels can provide new insights into disease mechanisms. Here, we present the largest proteogenomic study to date (n = 78,664 participants across 38 studies), identifying >24,000 protein quantitative trait loci (QTLs) associated with 1,116 proteins, acting near to (n = 5,040) or distant (n = 19,698) from the cognate gene. Using machine learning-guided effector gene assignment, we provide genetic evidence for pathways, cell types, and tissues that modulate circulating protein levels, highlighting N-linked glycosylation as an important regulatory pathway. We demonstrate that genetic instruments of protein production/function ("cis") versus modulation ("trans") reveal distinct phenotypic insights. We identify proteins as candidates for drug targets and engagement (e.g., plasma furin and cardiovascular diseases) by comparing cis-based genetic evidence with protein-disease associations. Systematic triangulation of trans-protein QTLs (pQTLs) with genetic and protein associations across many diseases highlights potential drug repurposing opportunities, e.g., tyrosine kinase 2 (TYK2) inhibitors for rheumatoid arthritis. Our multi-cohort meta-analyses generate proteogenomic insights into disease mechanisms and new treatment opportunities.
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