logo
Loading...
Biocatalysed synthesis planning using data-driven learning

Biology

Biocatalysed synthesis planning using data-driven learning

D. Probst, M. Manica, et al.

This paper introduces cutting-edge forward and backward prediction models utilizing the Molecular Transformer, designed specifically to tackle the complexities of predicting enzymatic activity and enzyme selectivity on substrates that have not yet been reported. Conducted by Daniel Probst, Matteo Manica, Yves Gaetan Nana Teukam, Alessandro Castrogiovanni, Federico Paratore, and Teodoro Laino, the research employs the newly compiled ECREACT dataset and provides unprecedented accuracy in enzyme-catalysed reaction predictions.... show more
Abstract
Enzyme catalysts are an integral part of green chemistry strategies towards a more sustainable and resource-efficient chemical synthesis. However, the use of biocatalysed reactions in retrosynthetic planning clashes with the difficulties in predicting the enzymatic activity on unreported substrates and enzyme-specific stereo- and regioselectivity. As of now, only rule-based systems support retrosynthetic planning using biocatalysis, while initial data-driven approaches are limited to forward predictions. Here, we extend the data-driven forward reaction as well as retrosynthetic pathway prediction models based on the Molecular Transformer architecture to biocatalysis. The enzymatic knowledge is learned from an extensive data set of publicly available biochemical reactions with the aid of a new class token scheme based on the enzyme commission classification number, which captures catalysis patterns among different enzymes belonging to the same hierarchy. The forward reaction prediction model (top-1 accuracy of 49.6%), the retrosynthetic pathway (top-1 single-step round-trip accuracy of 39.6%) and the curated data set are made publicly available to facilitate the adoption of enzymatic catalysis in the design of greener chemistry processes.
Publisher
Nature Communications
Published On
Feb 18, 2022
Authors
Daniel Probst, Matteo Manica, Yves Gaetan Nana Teukam, Alessandro Castrogiovanni, Federico Paratore, Teodoro Laino
Tags
Molecular Transformer
enzyme-catalysed reactions
enzyme commission
ECREACT
prediction models
enzymatic activity
selectivity
Listen, Learn & Level Up
Over 10,000 hours of research content in 25+ fields, available in 12+ languages.
No more digging through PDFs, just hit play and absorb the world's latest research in your language, on your time.
listen to research audio papers with researchbunny