队列
疾病
载脂蛋白E
遗传关联
生物信息学
医学
生物
遗传学
内科学
基因
单核苷酸多态性
基因型
作者
Alice Tang,Katherine P. Rankin,Gabriel Cerono,Silvia Miramontes,Hunter Mills,Jacquelyn Roger,Billy Zeng,Charlotte Nelson,Karthik Soman,Sarah Woldemariam,Yaqiao Li,Albert Lee,Riley Bove,M. Maria Glymour,Nima Aghaeepour,Tomiko Oskotsky,Zachary Miller,Isabel Elaine Allen,Stephan Sanders,Sergio E. Baranzini,Marina Sirota
出处
期刊:Nature Aging
日期:2024-02-21
被引量:4
标识
DOI:10.1038/s43587-024-00573-8
摘要
Abstract Identification of Alzheimer’s disease (AD) onset risk can facilitate interventions before irreversible disease progression. We demonstrate that electronic health records from the University of California, San Francisco, followed by knowledge networks (for example, SPOKE) allow for (1) prediction of AD onset and (2) prioritization of biological hypotheses, and (3) contextualization of sex dimorphism. We trained random forest models and predicted AD onset on a cohort of 749 individuals with AD and 250,545 controls with a mean area under the receiver operating characteristic of 0.72 (7 years prior) to 0.81 (1 day prior). We further harnessed matched cohort models to identify conditions with predictive power before AD onset. Knowledge networks highlight shared genes between multiple top predictors and AD (for example, APOE , ACTB , IL6 and INS ). Genetic colocalization analysis supports AD association with hyperlipidemia at the APOE locus, as well as a stronger female AD association with osteoporosis at a locus near MS4A6A . We therefore show how clinical data can be utilized for early AD prediction and identification of personalized biological hypotheses.
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