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Application of a quantitative framework to improve the accuracy of a bacterial infection model

Authors :
Gina R. Lewin
Ananya Kapur
Daniel M. Cornforth
Rebecca P. Duncan
Frances L. Diggle
Dina A. Moustafa
Simone A. Harrison
Eric P. Skaar
Walter J. Chazin
Joanna B. Goldberg
Jennifer M. Bomberger
Marvin Whiteley
Source :
Proceedings of the National Academy of Sciences. 120
Publication Year :
2023
Publisher :
Proceedings of the National Academy of Sciences, 2023.

Abstract

Laboratory models are critical to basic and translational microbiology research. Models serve multiple purposes, from providing tractable systems to study cell biology to allowing the investigation of inaccessible clinical and environmental ecosystems. Although there is a recognized need for improved model systems, there is a gap in rational approaches to accomplish this goal. We recently developed a framework for assessing the accuracy of microbial models by quantifying how closely each gene is expressed in the natural environment and in various models. The accuracy of the model is defined as the percentage of genes that are similarly expressed in the natural environment and the model. Here, we leverage this framework to develop and validate two generalizable approaches for improving model accuracy, and as proof of concept, we apply these approaches to improve models of Pseudomonas aeruginosa infecting the cystic fibrosis (CF) lung. First, we identify two models, an in vitro synthetic CF sputum medium model (SCFM2) and an epithelial cell model, that accurately recapitulate different gene sets. By combining these models, we developed the epithelial cell-SCFM2 model which improves the accuracy of over 500 genes. Second, to improve the accuracy of specific genes, we mined publicly available transcriptome data, which identified zinc limitation as a cue present in the CF lung and absent in SCFM2. Induction of zinc limitation in SCFM2 resulted in accurate expression of 90% of P. aeruginosa genes. These approaches provide generalizable, quantitative frameworks for microbiological model improvement that can be applied to any system of interest.

Subjects

Subjects :
Multidisciplinary

Details

ISSN :
10916490 and 00278424
Volume :
120
Database :
OpenAIRE
Journal :
Proceedings of the National Academy of Sciences
Accession number :
edsair.doi...........49093d5fe4b4f7b13dd40bda7b3b3145
Full Text :
https://doi.org/10.1073/pnas.2221542120