Improving fine-mapping by modeling infinitesimal effects

被引:0
|
作者
Ran Cui
Roy A. Elzur
Masahiro Kanai
Jacob C. Ulirsch
Omer Weissbrod
Mark J. Daly
Benjamin M. Neale
Zhou Fan
Hilary K. Finucane
机构
[1] Massachusetts General Hospital,Analytic and Translational Genetics Unit
[2] Broad Institute of MIT and Harvard,Program in Medical and Population Genetics
[3] Broad Institute of MIT and Harvard,Stanley Center for Psychiatric Research
[4] Broad Institute of MIT and Harvard,The Novo Nordisk Foundation Center for Genomic Mechanisms of Disease
[5] Harvard Medical School,Department of Biomedical Informatics
[6] University of Helsinki,Institute for Molecular Medicine Finland (FIMM)
[7] Osaka University Graduate School of Medicine,Department of Statistical Genetics
[8] Harvard Medical School,Program in Biological and Biomedical Sciences
[9] Harvard T.H. Chan School of Public Health,Department of Epidemiology
[10] Yale University,Department of Statistics and Data Science
来源
Nature Genetics | 2024年 / 56卷
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摘要
Fine-mapping aims to identify causal genetic variants for phenotypes. Bayesian fine-mapping algorithms (for example, SuSiE, FINEMAP, ABF and COJO-ABF) are widely used, but assessing posterior probability calibration remains challenging in real data, where model misspecification probably exists, and true causal variants are unknown. We introduce replication failure rate (RFR), a metric to assess fine-mapping consistency by downsampling. SuSiE, FINEMAP and COJO-ABF show high RFR, indicating potential overconfidence in their output. Simulations reveal that nonsparse genetic architecture can lead to miscalibration, while imputation noise, nonuniform distribution of causal variants and quality control filters have minimal impact. Here we present SuSiE-inf and FINEMAP-inf, fine-mapping methods modeling infinitesimal effects alongside fewer larger causal effects. Our methods show improved calibration, RFR and functional enrichment, competitive recall and computational efficiency. Notably, using our methods’ posterior effect sizes substantially increases polygenic risk score accuracy over SuSiE and FINEMAP. Our work improves causal variant identification for complex traits, a fundamental goal of human genetics.
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页码:162 / 169
页数:7
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