Data from: Interacting networks of resistance, virulence and core machinery genes identified by genome-wide epistasis analysis

Description

Recent advances in the scale and diversity of population genomic datasets for bacteria now provide the potential for genome-wide patterns of co-evolution to be studied at the resolution of individual bases. Here we describe a new statistical method, genomeDCA, which uses recent advances in computational structural biology to identify the polymorphic loci under the strongest co-evolutionary pressures. We apply genomeDCA to two large population data sets representing the major human pathogens Streptococcus pneumoniae (pneumococcus) and Streptococcus pyogenes (group A Streptococcus). For pneumococcus we identified 5,199 putative epistatic interactions between 1,936 sites. Over three-quarters of the links were between sites within the pbp2x, pbp1a and pbp2b genes, the sequences of which are critical in determining non-susceptibility to beta-lactam antibiotics. A network-based analysis found these genes were also coupled to that encoding dihydrofolate reductase, changes to which underlie trimethoprim resistance. Distinct from these antibiotic resistance genes, a large network component of 384 protein coding sequences encompassed many genes critical in basic cellular functions, while another distinct component included genes associated with virulence. The group A Streptococcus (GAS) data set population represents a clonal population with relatively little genetic variation and a high level of linkage disequilibrium across the genome. Despite this, we were able to pinpoint two RNA pseudouridine synthases, which were each strongly linked to a separate set of loci across the chromosome, representing biologically plausible targets of co-selection. The population genomic analysis method applied here identifies statistically significantly co-evolving locus pairs, potentially arising from fitness selection interdependence reflecting underlying protein-protein interactions, or genes whose product activities contribute to the same phenotype. This discovery approach greatly enhances the future potential of epistasis analysis for systems biology, and can complement genome-wide association studies as a means of formulating hypotheses for targeted experimental work.
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Year of publication

2017

Type of data

Authors

Department of Computer Science

Claire Chewapreecha - Contributor

Erik Aurell - Contributor

James M. Musser - Contributor

Jukka Corander - Contributor

Julian Parkhill - Contributor

Maiju Pesonen - Contributor

Nicholas J Croucher - Contributor

Paul Turner - Contributor

Santeri Puranen Orcid -palvelun logo - Contributor

Simon R Harris - Contributor

Stephen B. Beres - Contributor

Stephen D Bentley - Contributor

Yingying Xu Orcid -palvelun logo - Contributor

Marcin Skwark - Creator

Chinese Academy of Sciences - Contributor

Cornell University - Contributor

Dryad Digital Repository - Publisher

Houston Methodist Hospital - Contributor

Imperial College London - Contributor

KTH Royal Institute of Technology - Contributor

University of Cambridge - Contributor

University of Helsinki - Contributor

University of Oslo - Contributor

University of Oxford - Contributor

Vanderbilt University - Contributor

Wellcome Trust Sanger Institute - Contributor

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Fields of science

Computer and information sciences

Language

Open access

Open

License

Creative Commons CC0 1.0 Universal (CC0 1.0) Public Domain Dedication

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