Machine learning identifies key metabolic reactions in bacterial growth on different carbon sources

Mol Syst Biol. 2024 Mar;20(3):170-186. doi: 10.1038/s44320-024-00017-w. Epub 2024 Jan 30.

Abstract

Carbon source-dependent control of bacterial growth is fundamental to bacterial physiology and survival. However, pinpointing the metabolic steps important for cell growth is challenging due to the complexity of cellular networks. Here, the elastic net model and multilayer perception model that integrated genome-wide gene-deletion data and simulated flux distributions were constructed to identify metabolic reactions beneficial or detrimental to Escherichia coli grown on 30 different carbon sources. Both models outperformed traditional in silico methods by identifying not just essential reactions but also nonessential ones that promote growth. They successfully predicted metabolic reactions beneficial to cell growth, with high convergence between the models. The models revealed that biosynthetic pathways generally promote growth across various carbon sources, whereas the impact of energy-generating pathways varies with the carbon source. Intriguing predictions were experimentally validated for findings beyond experimental training data and the impact of various carbon sources on the glyoxylate shunt, pyruvate dehydrogenase reaction, and redundant purine biosynthesis reactions. These highlight the practical significance and predictive power of the models for understanding and engineering microbial metabolism.

Keywords: Bacterial Growth; Carbon Source; Deep Learning; Machine Learning; Metabolic Reaction.

MeSH terms

  • Carbon* / metabolism
  • Escherichia coli / metabolism
  • Escherichia coli Proteins* / metabolism
  • Gene Deletion
  • Machine Learning
  • Metabolic Networks and Pathways
  • Models, Biological

Substances

  • Carbon
  • Escherichia coli Proteins