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GotEnzymes: an extensive database of enzyme parameter predictions.

Feiran LiYu ChenMihail AntonJens B Nielsen
Published in: Nucleic acids research (2022)
Enzyme parameters are essential for quantitatively understanding, modelling, and engineering cells. However, experimental measurements cover only a small fraction of known enzyme-compound pairs in model organisms, much less in other organisms. Artificial intelligence (AI) techniques have accelerated the pace of exploring enzyme properties by predicting these in a high-throughput manner. Here, we present GotEnzymes, an extensive database with enzyme parameter predictions by AI approaches, which is publicly available at https://metabolicatlas.org/gotenzymes for interactive web exploration and programmatic access. The first release of this data resource contains predicted turnover numbers of over 25.7 million enzyme-compound pairs across 8099 organisms. We believe that GotEnzymes, with the readily-predicted enzyme parameters, would bring a speed boost to biological research covering both experimental and computational fields that involve working with candidate enzymes.
Keyphrases
  • artificial intelligence
  • high throughput
  • big data
  • machine learning
  • deep learning
  • electronic health record
  • adverse drug
  • oxidative stress