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Machine learning-based prediction of enzyme substrate scope: Application to bacterial nitrilases

Proteins. 2020; 
Zhongyu Mou, Jason Eakes, Connor J Cooper, Carmen M Foster, Robert F Standaert, Mircea Podar, Mitchel J Doktycz, Jerry M Parks
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Bacterial Expression … optimized for expression in E. coli and were cloned into the pet22(b) vector at the Nde-Sal site by GenScript (Piscataway, NJ; https://www.genscript.com, Figure S10). The resulting protein contained a This article is protected by copyright. All rights reserved. Page 9 … Get A Quote

摘要

Predicting the range of substrates accepted by an enzyme from its amino acid sequence is challenging. Although sequence- and structure-based annotation approaches are often accurate for predicting broad categories of substrate specificity, they generally cannot predict which specific molecules will be accepted as substrates for a given enzyme, particularly within a class of closely related molecules. Combining targeted experimental activity data with structural modeling, ligand docking, and physicochemical properties of proteins and ligands with various machine learning models provides complementary information that can lead to accurate predictions of substrate scope for related enzymes. Here we describe such a... More

关键词

enzyme specificity, functional annotation, machine learning, modular approach, substrate scope