Publication | Open Access
Insights from complex trait fine-mapping across diverse populations
113
Citations
88
References
2021
Year
Unknown Venue
Causal VariantsHigh-confidence Causal VariantsPhenotypic VariationGeneticsGenetic EpidemiologyComplex Trait Fine-mappingGenomicsGenetic MedicineGenome-wide Association StudiesClinical GeneticsGenome-wide Association StudyGenotype-phenotype AssociationHuman VariationBiostatisticsWhole Genome StudiesPublic HealthMolecular DiagnosticsVariant InterpretationQuantitative GeneticsComplex TraitsStatistical GeneticsGenetic VariationPopulation GeneticsCandidate Gene AnalysisAllelic VariantEvolutionary BiologyMedicineCardiovascular Genetics
Abstract Despite the great success of genome-wide association studies (GWAS) in identifying genetic loci significantly associated with diseases, the vast majority of causal variants underlying disease-associated loci have not been identified 1–3 . To create an atlas of causal variants, we performed and integrated fine-mapping across 148 complex traits in three large-scale biobanks (BioBank Japan 4,5 , FinnGen 6 , and UK Biobank 7,8 ; total n = 811,261), resulting in 4,518 variant-trait pairs with high posterior probability (> 0.9) of causality. Of these, we found 285 high-confidence variant-trait pairs replicated across multiple populations, and we characterized multiple contributors to the surprising lack of overlap among fine-mapping results from different biobanks. By studying the bottlenecked Finnish and Japanese populations, we identified 21 and 26 putative causal coding variants with extreme allele frequency enrichment (> 10-fold) in these two populations, respectively. Aggregating data across populations enabled identification of 1,492 unique fine-mapped coding variants and 176 genes in which multiple independent coding variants influence the same trait ( i.e. , with an allelic series of coding variants). Our results demonstrate that fine-mapping in diverse populations enables novel insights into the biology of complex traits by pinpointing high-confidence causal variants for further characterization.
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