孟德尔随机化
生命银行
疾病
全基因组关联研究
生物
底漆(化妆品)
计算生物学
生物信息学
计算机科学
机器学习
遗传学
遗传变异
医学
内科学
单核苷酸多态性
基因型
有机化学
化学
基因
作者
Daniel Sens,Liubov Shilova,Ludwig Gräf,Maria Grebenshchikova,Bjoern M. Eskofier,Francesco Paolo Casale
标识
DOI:10.1101/gr.279252.124
摘要
Accurate predictive models of future disease onset are crucial for effective preventive healthcare, yet longitudinal data sets linking early risk factors to subsequent health outcomes are limited. To overcome this challenge, we introduce a novel framework, P redictive Ri sk modeling using Me ndelian R andomization (PRiMeR), which utilizes genetic effects as supervisory signals to learn disease risk predictors without relying on longitudinal data. To do so, PRiMeR leverages risk factors and genetic data from a healthy cohort, along with results from genome-wide association studies of diseases of interest. After training, the learned predictor can be used to assess risk for new patients solely based on risk factors. We validate PRiMeR through comprehensive simulations and in future type 2 diabetes predictions in UK Biobank participants without diabetes, using follow-up onset labels for validation. Moreover, we apply PRiMeR to predict future Alzheimer's disease onset from brain imaging biomarkers and future Parkinson's disease onset from accelerometer-derived traits. Overall, with PRiMeR we offer a new perspective in predictive modeling, showing it is possible to learn risk predictors leveraging genetics rather than longitudinal data.
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