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Genome-wide fine-mapping improves identification of causal variants. | LitMetric

AI Article Synopsis

  • Fine-mapping is a method used to identify specific genetic variants that cause complex traits, but traditional approaches often overlook the overall genetic context.
  • This study introduces genome-wide fine-mapping (GWFM) as a more effective method, showing better performance in accuracy, replication, and cross-ancestry predictions compared to existing techniques.
  • In analyzing the UK Biobank data, GWFM helped identify causal variants contributing to significant heritability for traits like body mass index, schizophrenia, and Crohn's disease, demonstrating its potential for future genetic research.

Article Abstract

Fine-mapping refines genotype-phenotype association signals to identify causal variants underlying complex traits. However, current methods typically focus on individual genomic segments without considering the global genetic architecture. Here, we demonstrate the advantages of performing genome-wide fine-mapping (GWFM) and develop methods to facilitate GWFM. In simulations and real data analyses, GWFM outperforms current methods in error control, mapping power and precision, replication rate, and trans-ancestry phenotype prediction. For 48 well-powered traits in the UK Biobank, we identify causal variants that collectively explain 17% of the SNP-based heritability, and predict that fine-mapping 50% of that would require 2 million samples on average. We pinpoint a known causal variant, as proof-of-principle, at FTO for body mass index, unveil a hidden secondary variant with evolutionary conservation, and identify new missense causal variants for schizophrenia and Crohn's disease. Overall, we analyse 599 complex traits with 13 million SNPs, highlighting the efficacy of GWFM with functional annotations.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11275676PMC
http://dx.doi.org/10.1101/2024.07.18.24310667DOI Listing

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