| Literature DB >> 33712626 |
Tatsuhiko Naito1,2, Ken Suzuki1, Jun Hirata1,3, Yoichiro Kamatani4, Koichi Matsuda5, Tatsushi Toda2, Yukinori Okada6,7,8.
Abstract
Conventional human leukocyte antigen (HLA) imputation methods drop their performance for infrequent alleles, which is one of the factors that reduce the reliability of trans-ethnic major histocompatibility complex (MHC) fine-mapping due to inter-ethnic heterogeneity in allele frequency spectra. We develop DEEP*HLA, a deep learning method for imputing HLA genotypes. Through validation using the Japanese and European HLA reference panels (n = 1,118 and 5,122), DEEP*HLA achieves the highest accuracies with significant superiority for low-frequency and rare alleles. DEEP*HLA is less dependent on distance-dependent linkage disequilibrium decay of the target alleles and might capture the complicated region-wide information. We apply DEEP*HLA to type 1 diabetes GWAS data from BioBank Japan (n = 62,387) and UK Biobank (n = 354,459), and successfully disentangle independently associated class I and II HLA variants with shared risk among diverse populations (the top signal at amino acid position 71 of HLA-DRβ1; P = 7.5 × 10-120). Our study illustrates the value of deep learning in genotype imputation and trans-ethnic MHC fine-mapping.Entities:
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Year: 2021 PMID: 33712626 PMCID: PMC7955122 DOI: 10.1038/s41467-021-21975-x
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 14.919