Litcius/Paper detail

Fine mapping and accurate prediction of complex traits using Bayesian Variable Selection models applied to biobank-size data

Gustavo de los Campos, Alexander Grueneberg, Scott A. Funkhouser, Paulino Pérez‐Rodríguez, Anirban Samaddar

2022European Journal of Human Genetics20 citationsDOIOpen Access PDF

Abstract

Modern GWAS studies use an enormous sample size and ultra-high density SNP genotypes. These conditions reduce the mapping resolution of marginal association tests-the method most often used in GWAS. Multi-locus Bayesian Variable Selection (BVS) offers a one-stop solution for powerful and precise mapping of risk variants and polygenic risk score (PRS) prediction. We show (with an extensive simulation) that multi-locus BVS methods can achieve high power with a low false discovery rate and a much better mapping resolution than marginal association tests. We demonstrate the performance of BVS for mapping and PRS prediction using data from blood biomarkers from the UK-Biobank (~300,000 samples and ~5.5 million SNPs). The article is accompanied by open-source R-software that implement the methods used in the study and scales to biobank-sized data.

Topics & Concepts

BiobankGenome-wide association studyBayesian probabilitySample size determinationFalse discovery rateSingle-nucleotide polymorphismSNPComputer scienceGenetic associationStatistical powerData miningComputational biologyStatisticsBiologyGeneticsGenotypeMathematicsArtificial intelligenceGeneGenetic and phenotypic traits in livestockGenetic Associations and EpidemiologyGenetic Mapping and Diversity in Plants and Animals