Author:
Pensar Johan,Puranen Santeri,MacAlasdair Neil,Kuronen Juri,Tonkin-Hill Gerry,Pesonen Maiju,Arnold Brian,Xu Yingying,Sipola Aleksi,Sánchez-Busó Leonor,Lees John A,Chewapreecha Claire,Bentley Stephen D,Harris Simon R,Parkhill Julian,Croucher Nicholas J,Corander Jukka
Abstract
ABSTRACTDiscovery of polymorphisms under co-selective pressure or epistasis has received considerable recent attention in population genomics. Both statistical modeling of the population level co-variation of alleles across the chromosome and model-free testing of dependencies between pairs of polymorphisms have been shown to successfully uncover patterns of selection in bacterial populations. Here we introduce a model-free method, SpydrPick, whose computational efficiency enables analysis at the scale of pan-genomes of many bacteria. SpydrPick incorporates an efficient correction for population structure, which is demonstrated to maintain a very low rate of false positive findings among those SNP pairs highlighted to deviate significantly from the null hypothesis of neutral co-evolution in simulated data. We also introduce a new type of visualization of the results similar to the Manhattan plots used in genome-wide association studies, which enables rapid exploration of the identified signals of co-evolution. Application of the method to large population genomic data sets of two major human pathogens, Streptococcus pneumoniae and Neisseria meningitidis, revealed both previously identified and novel putative targets of co-selection related to virulence and antibiotic resistance, highlighting the potential of this approach to drive molecular discoveries, even in the absence of phenotypic data.
Publisher
Cold Spring Harbor Laboratory
Cited by
4 articles.
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