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.
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