PLoS Computational Biology (Jan 2019)

A computational knowledge-base elucidates the response of Staphylococcus aureus to different media types.

  • Yara Seif,
  • Jonathan M Monk,
  • Nathan Mih,
  • Hannah Tsunemoto,
  • Saugat Poudel,
  • Cristal Zuniga,
  • Jared Broddrick,
  • Karsten Zengler,
  • Bernhard O Palsson

DOI
https://doi.org/10.1371/journal.pcbi.1006644
Journal volume & issue
Vol. 15, no. 1
p. e1006644

Abstract

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S. aureus is classified as a serious threat pathogen and is a priority that guides the discovery and development of new antibiotics. Despite growing knowledge of S. aureus metabolic capabilities, our understanding of its systems-level responses to different media types remains incomplete. Here, we develop a manually reconstructed genome-scale model (GEM-PRO) of metabolism with 3D protein structures for S. aureus USA300 str. JE2 containing 854 genes, 1,440 reactions, 1,327 metabolites and 673 3-dimensional protein structures. Computations were in 85% agreement with gene essentiality data from random barcode transposon site sequencing (RB-TnSeq) and 68% agreement with experimental physiological data. Comparisons of computational predictions with experimental observations highlight: 1) cases of non-essential biomass precursors; 2) metabolic genes subject to transcriptional regulation involved in Staphyloxanthin biosynthesis; 3) the essentiality of purine and amino acid biosynthesis in synthetic physiological media; and 4) a switch to aerobic fermentation upon exposure to extracellular glucose elucidated as a result of integrating time-course of quantitative exo-metabolomics data. An up-to-date GEM-PRO thus serves as a knowledge-based platform to elucidate S. aureus' metabolic response to its environment.