Addressing overfitting bias due to sample overlap in polygenic risk scoring
Seokho Jeong(Seoul National University), Dokyoon Kim(Samsung (South Korea)), Andrew J. Saykin(Alzheimer’s Disease Neuroimaging Initiative), Christos Davatzikos(Artificial Intelligence in Medicine (Canada)), Hong‐Hee Won(Broad Institute), Manu Shivakumar(University of Pennsylvania), Kwangsik Nho(Regenstrief Institute), Young Jin Kim(Korea National Institute of Health), Li Shen(University of Pennsylvania), Bong‐Jo Kim(Dongguk University), Heng Huang(Sun Yat-sen University), Sang‐Hyuk Jung(Kangwon National University), Paul M. Thompson(Imaging Center), Seung‐Geun Lee(Seoul National University)
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