| Literature DB >> 33558518 |
Ruidong Xiang1,2, Iona M MacLeod3, Hans D Daetwyler3,4, Gerben de Jong5, Erin O'Connor6, Chris Schrooten7, Amanda J Chamberlain3, Michael E Goddard8,3.
Abstract
The difficulty in finding causative mutations has hampered their use in genomic prediction. Here, we present a methodology to fine-map potentially causal variants genome-wide by integrating the functional, evolutionary and pleiotropic information of variants using GWAS, variant clustering and Bayesian mixture models. Our analysis of 17 million sequence variants in 44,000+ Australian dairy cattle for 34 traits suggests, on average, one pleiotropic QTL existing in each 50 kb chromosome-segment. We selected a set of 80k variants representing potentially causal variants within each chromosome segment to develop a bovine XT-50K genotyping array. The custom array contains many pleiotropic variants with biological functions, including splicing QTLs and variants at conserved sites across 100 vertebrate species. This biology-informed custom array outperformed the standard array in predicting genetic value of multiple traits across populations in independent datasets of 90,000+ dairy cattle from the USA, Australia and New Zealand.Entities:
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Year: 2021 PMID: 33558518 PMCID: PMC7870883 DOI: 10.1038/s41467-021-21001-0
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 14.919