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Understanding how natural selection has shaped genetic architecture of complex traits is of importance in medical and evolutionary genetics. Bayesian methods have been developed using individual-level GWAS data to estimate multiple genetic architecture parameters including selection signature. Here, we present a method (SBayesS) that only requires GWAS summary statistics. We analyse data for 155 complex traits (n = 27k-547k) and project the estimates onto those obtained from evolutionary simulations. We estimate that, on average across traits, about 1% of human genome sequence are mutational targets with a mean selection coefficient of ~0.001. Common diseases, on average, show a smaller number of mutational targets and have been under stronger selection, compared to other traits. SBayesS analyses incorporating functional annotations reveal that selection signatures vary across genomic regions, among which coding regions have the strongest selection signature and are enriched for both the number of associated variants and the magnitude of effect sizes.

Original publication

DOI

10.1038/s41467-021-21446-3

Type

Journal article

Journal

Nature communications

Publication Date

02/2021

Volume

12

Addresses

Institute for Molecular Bioscience, The University of Queensland, Brisbane, QLD, Australia. j.zeng@uq.edu.au.

Keywords

Humans, Bayes Theorem, Genomics, Evolution, Molecular, Multifactorial Inheritance, Phenotype, Polymorphism, Single Nucleotide, Genome, Models, Biological, Genetic Variation, Genome-Wide Association Study, Selection, Genetic