Machine Learning Applied to Predicting Microorganism Growth Temperatures and Enzyme Catalytic Optima.

Journal: ACS synthetic biology
Published Date:

Abstract

Enzymes that catalyze chemical reactions at high temperatures are used for industrial biocatalysis, applications in molecular biology, and as highly evolvable starting points for protein engineering. The optimal growth temperature (OGT) of organisms is commonly used to estimate the stability of enzymes encoded in their genomes, but the number of experimentally determined OGT values are limited, particularly for thermophilic organisms. Here, we report on the development of a machine learning model that can accurately predict OGT for bacteria, archaea, and microbial eukaryotes directly from their proteome-wide 2-mer amino acid composition. The trained model is made freely available for reuse. In a subsequent step we use OGT data in combination with amino acid composition of individual enzymes to develop a second machine learning model-for prediction of enzyme catalytic temperature optima ( T). The resulting model generates enzyme T estimates that are far superior to using OGT alone. Finally, we predict T for 6.5 million enzymes, covering 4447 enzyme classes, and make the resulting data set available to researchers. This work enables simple and rapid identification of enzymes that are potentially functional at extreme temperatures.

Authors

  • Gang Li
    The Centre for Cyber Resilience and Trust, Deakin University, Australia.
  • Kersten S Rabe
    Institute for Biological Interfaces 1 (IBG 1) , Karlsruhe Institute of Technology (KIT) , Group for Molecular Evolution, 76131 Karlsruhe , Germany.
  • Jens Nielsen
    Department of Biology and Biological Engineering , Chalmers University of Technology , SE-412 96 Gothenburg , Sweden.
  • Martin K M Engqvist
    Department of Biology and Biological Engineering , Chalmers University of Technology , SE-412 96 Gothenburg , Sweden.