Nature Communications (May 2023)

A general model to predict small molecule substrates of enzymes based on machine and deep learning

  • Alexander Kroll,
  • Sahasra Ranjan,
  • Martin K. M. Engqvist,
  • Martin J. Lercher

DOI
https://doi.org/10.1038/s41467-023-38347-2
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 13

Abstract

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Abstract For most proteins annotated as enzymes, it is unknown which primary and/or secondary reactions they catalyze. Experimental characterizations of potential substrates are time-consuming and costly. Machine learning predictions could provide an efficient alternative, but are hampered by a lack of information regarding enzyme non-substrates, as available training data comprises mainly positive examples. Here, we present ESP, a general machine-learning model for the prediction of enzyme-substrate pairs with an accuracy of over 91% on independent and diverse test data. ESP can be applied successfully across widely different enzymes and a broad range of metabolites included in the training data, outperforming models designed for individual, well-studied enzyme families. ESP represents enzymes through a modified transformer model, and is trained on data augmented with randomly sampled small molecules assigned as non-substrates. By facilitating easy in silico testing of potential substrates, the ESP web server may support both basic and applied science.