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Prediction of gene essentiality using machine learning and genome-scale metabolic models

Lilli J. Freischem, View ORCID ProfileMauricio Barahona, View ORCID ProfileDiego A. Oyarzún
doi: https://doi.org/10.1101/2022.03.31.486520
Lilli J. Freischem
1School of Informatics, The University of Edinburgh, Edinburgh, UK
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Mauricio Barahona
2Department of Mathematics, Imperial College London, London, UK
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Diego A. Oyarzún
1School of Informatics, The University of Edinburgh, Edinburgh, UK
3School of Biological Sciences, The University of Edinburgh, Edinburgh, UK
4The Alan Turing Institute, London, UK
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  • For correspondence: d.oyarzun@ed.ac.uk
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Abstract

The identification of essential genes, i.e. those that impair cell survival when deleted, requires large growth assays of knock-out strains. The complexity and cost of such experiments has triggered a growing interest in computational methods for gene essentiality prediction. In the case of metabolic genes, Flux Balance Analysis (FBA) is widely employed to predict essentiality under the assumption that cells maximize their growth rate. However, this approach implicitly assumes that knock-out strains optimize the same objectives as the wild-type, which excludes cases in which deletions cause large changes in cell physiology to meet other objectives for survival. Here we resolve this limitation with a novel machine learning approach that predicts essentiality directly from wild-type flux distributions. We first project the wild-type FBA solution onto a mass flow graph, a digraph with reactions as nodes and edge weights proportional to the mass transfer between reactions, and then train binary classifiers on the connectivity of graph nodes. We demonstrate the efficacy of this approach using the most complete metabolic model of Escherichia coli, achieving near state-of-the art prediction accuracy for essential genes. Our approach suggests that wild-type FBA solutions contain enough information to predict essentiality, without the need to assume optimality of deletion strains.

  • machine learning
  • gene essentiality
  • flux balance analysis
  • metabolic modelling
  • network science

Competing Interest Statement

The authors have declared no competing interest.

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
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Posted March 31, 2022.
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Prediction of gene essentiality using machine learning and genome-scale metabolic models
Lilli J. Freischem, Mauricio Barahona, Diego A. Oyarzún
bioRxiv 2022.03.31.486520; doi: https://doi.org/10.1101/2022.03.31.486520
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Prediction of gene essentiality using machine learning and genome-scale metabolic models
Lilli J. Freischem, Mauricio Barahona, Diego A. Oyarzún
bioRxiv 2022.03.31.486520; doi: https://doi.org/10.1101/2022.03.31.486520

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