PLoS Computational Biology (Aug 2014)

Defining the estimated core genome of bacterial populations using a Bayesian decision model.

  • Andries J van Tonder,
  • Shilan Mistry,
  • James E Bray,
  • Dorothea M C Hill,
  • Alison J Cody,
  • Chris L Farmer,
  • Keith P Klugman,
  • Anne von Gottberg,
  • Stephen D Bentley,
  • Julian Parkhill,
  • Keith A Jolley,
  • Martin C J Maiden,
  • Angela B Brueggemann

DOI
https://doi.org/10.1371/journal.pcbi.1003788
Journal volume & issue
Vol. 10, no. 8
p. e1003788

Abstract

Read online

The bacterial core genome is of intense interest and the volume of whole genome sequence data in the public domain available to investigate it has increased dramatically. The aim of our study was to develop a model to estimate the bacterial core genome from next-generation whole genome sequencing data and use this model to identify novel genes associated with important biological functions. Five bacterial datasets were analysed, comprising 2096 genomes in total. We developed a Bayesian decision model to estimate the number of core genes, calculated pairwise evolutionary distances (p-distances) based on nucleotide sequence diversity, and plotted the median p-distance for each core gene relative to its genome location. We designed visually-informative genome diagrams to depict areas of interest in genomes. Case studies demonstrated how the model could identify areas for further study, e.g. 25% of the core genes with higher sequence diversity in the Campylobacter jejuni and Neisseria meningitidis genomes encoded hypothetical proteins. The core gene with the highest p-distance value in C. jejuni was annotated in the reference genome as a putative hydrolase, but further work revealed that it shared sequence homology with beta-lactamase/metallo-beta-lactamases (enzymes that provide resistance to a range of broad-spectrum antibiotics) and thioredoxin reductase genes (which reduce oxidative stress and are essential for DNA replication) in other C. jejuni genomes. Our Bayesian model of estimating the core genome is principled, easy to use and can be applied to large genome datasets. This study also highlighted the lack of knowledge currently available for many core genes in bacterial genomes of significant global public health importance.