PLoS Computational Biology (Oct 2024)

Metabolic modelling as a powerful tool to identify critical components of Pneumocystis growth medium.

  • Olga A Nev,
  • Elena Zamaraeva,
  • Romain De Oliveira,
  • Ilia Ryzhkov,
  • Lucian Duvenage,
  • Wassim Abou-Jaoudé,
  • Djomangan Adama Ouattara,
  • Jennifer Claire Hoving,
  • Ivana Gudelj,
  • Alistair J P Brown

DOI
https://doi.org/10.1371/journal.pcbi.1012545
Journal volume & issue
Vol. 20, no. 10
p. e1012545

Abstract

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Establishing suitable in vitro culture conditions for microorganisms is crucial for dissecting their biology and empowering potential applications. However, a significant number of bacterial and fungal species, including Pneumocystis jirovecii, remain unculturable, hampering research efforts. P. jirovecii is a deadly pathogen of humans that causes life-threatening pneumonia in immunocompromised individuals and transplant patients. Despite the major impact of Pneumocystis on human health, limited progress has been made in dissecting the pathobiology of this fungus. This is largely due to the fact that its experimental dissection has been constrained by the inability to culture the organism in vitro. We present a comprehensive in silico genome-scale metabolic model of Pneumocystis growth and metabolism, to identify metabolic requirements and imbalances that hinder growth in vitro. We utilise recently published genome data and available information in the literature as well as bioinformatics and software tools to develop and validate the model. In addition, we employ relaxed Flux Balance Analysis and Reinforcement Learning approaches to make predictions regarding metabolic fluxes and to identify critical components of the Pneumocystis growth medium. Our findings offer insights into the biology of Pneumocystis and provide a novel strategy to overcome the longstanding challenge of culturing this pathogen in vitro.