孟德尔随机化
生物
遗传学
孟德尔遗传
表型
计算生物学
基因
遗传变异
基因型
作者
Paul R. H. J. Timmers,Evgeny Tiys,Saori Sakaue,Masato Akiyama,Tuomo Kiiskinen,Wei Zhou,Shih‐Jen Hwang,Chen Yao,Yoichiro Kamatani,Wei Zhou,Joris Deelen,Daniel Levy,Andrea Ganna,Yoichiro Kamatani,Yukinori Okada,Peter K. Joshi,James F. Wilson,Yakov A. Tsepilov
出处
期刊:Nature Aging
日期:2022-01-20
卷期号:2 (1): 19-30
被引量:31
标识
DOI:10.1038/s43587-021-00159-8
摘要
Length and quality of life are important to us all, yet identification of promising drug targets for human aging using genetics has had limited success. In the present study, we combine six European-ancestry genome-wide association studies of human aging traits—healthspan, father and mother lifespan, exceptional longevity, frailty index and self-rated health—in a principal component framework that maximizes their shared genetic architecture. The first principal component (aging-GIP1) captures both length of life and indices of mental and physical wellbeing. We identify 27 genomic regions associated with aging-GIP1, and provide additional, independent evidence for an effect on human aging for loci near HTT and MAML3 using a study of Finnish and Japanese survival. Using proteome-wide, two-sample, Mendelian randomization and colocalization, we provide robust evidence for a detrimental effect of blood levels of apolipoprotein(a) and vascular cell adhesion molecule 1 on aging-GIP1. Together, our results demonstrate that combining multiple aging traits using genetic principal components enhances the power to detect biological targets for human aging. Many aging-related phenotypes share a common genetic component, but to disentangle disease-specific variants from aging-specific ones has been challenging. Here Timmers et al. combined several genetics studies of aging-related traits to identify common underlying genetic factors that contribute to aging.
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