GenomegaMap: Within-Species Genome-Wide dN/dS Estimation from over 10,000 Genomes
Author:
Wilson Daniel J1ORCID, Crook Derrick W, Peto Timothy E A, Walker A Sarah, Hoosdally Sarah J, Gibertoni Cruz Ana L, Carter Joshua, Grazian Clara, Earle Sarah G, Kouchaki Samaneh, Lachapelle Alexander, Yang Yang, Clifton David A, Fowler Philip W, Iqbal Zamin, Hunt Martin, Knaggs Jeffrey, Smith E Grace, Rathod Priti, Jarrett Lisa, Matias Daniela, Cirillo Daniela M, Borroni Emanuele, Battaglia Simone, Ghodousi Arash, Spitaleri Andrea, Cabibbe Andrea, Tahseen Sabira, Nilgiriwala Kayzad, Shah Sanchi, Rodrigues Camilla, Kambli Priti, Surve Utkarsha, Khot Rukhsar, Niemann Stefan, Kohl Thomas A, Merker Matthias, Hoffmann Harald, Todt Katharina, Plesnik Sara, Ismail Nazir, Omar Shaheed Vally, Joseph Lavania, Thwaites Guy, Thuong Thuong Nguyen Thuy, Ngoc Nhung Hoang, Srinivasan Vijay, Walker Timothy M, Moore David, Coronel Jorge, Solano Walter, Gao George F, He Guangxue, Zhao Yanlin, Liu Chunfa, Ma Aijing, Zhu Baoli, Laurenson Ian, Claxton Pauline, Koch Anastasia, Wilkinson Robert, Lalvani Ajit, Posey James, Gardy Jennifer, Werngren Jim, Paton Nicholas, Jou Ruwen, Wu Mei-Hua, Lin Wan-Hsuan, Ferrazoli Lucilaine, de Oliveira Rosangela Siqueira, Arandjelovic Irena, Chaiprasert Angkana, Comas Iñaki, Roig Calle Jaime, Drobniewski Francis A, Farhat Maha R, Gao Qian, Hee Rick Ong Twee, Sintchenko Vitali, Supply Philip, van Soolingen Dick,
Affiliation:
1. Big Data Institute, Nuffield Department of Population Health, Li Ka Shing Centre for Health Information and Discovery, University of Oxford, Oxford, United Kingdom
Abstract
AbstractThe dN/dS ratio provides evidence of adaptation or functional constraint in protein-coding genes by quantifying the relative excess or deficit of amino acid-replacing versus silent nucleotide variation. Inexpensive sequencing promises a better understanding of parameters, such as dN/dS, but analyzing very large data sets poses a major statistical challenge. Here, I introduce genomegaMap for estimating within-species genome-wide variation in dN/dS, and I apply it to 3,979 genes across 10,209 tuberculosis genomes to characterize the selection pressures shaping this global pathogen. GenomegaMap is a phylogeny-free method that addresses two major problems with existing approaches: 1) It is fast no matter how large the sample size and 2) it is robust to recombination, which causes phylogenetic methods to report artefactual signals of adaptation. GenomegaMap uses population genetics theory to approximate the distribution of allele frequencies under general, parent-dependent mutation models. Coalescent simulations show that substitution parameters are well estimated even when genomegaMap’s simplifying assumption of independence among sites is violated. I demonstrate the ability of genomegaMap to detect genuine signatures of selection at antimicrobial resistance-conferring substitutions in Mycobacterium tuberculosis and describe a novel signature of selection in the cold-shock DEAD-box protein A gene deaD/csdA. The genomegaMap approach helps accelerate the exploitation of big data for gaining new insights into evolution within species.
Funder
Wellcome Trust Big Data Institute Robertson Fellow Bill and Melinda Gates Foundation Imperial Biomedical Research Centre
Publisher
Oxford University Press (OUP)
Subject
Genetics,Molecular Biology,Ecology, Evolution, Behavior and Systematics
Cited by
30 articles.
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