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IntEnzyDB: an Integrated Structure–Kinetics Enzymology Database

Bailu Yan, Xinchun Ran, Anvita Gollu, Zihao Cheng, Xiang Zhou, Yiwen Chen, Zhongyue Yang

2022Journal of Chemical Information and Modeling21 citationsDOIOpen Access PDF

Abstract

Data-driven modeling has emerged as a new paradigm for biocatalyst design and discovery. Biocatalytic databases that integrate enzyme structure and function data are in urgent need. Here we describe IntEnzyDB as an integrated structure-kinetics database for facile statistical modeling and machine learning. IntEnzyDB employs a relational database architecture with a flattened data structure, which allows rapid data operation. This architecture also makes it easy for IntEnzyDB to incorporate more types of enzyme function data. IntEnzyDB contains enzyme kinetics and structure data from six enzyme commission classes. Using 1050 enzyme structure-kinetics pairs, we investigated the efficiency-perturbing propensities of mutations that are close or distal to the active site. The statistical results show that efficiency-enhancing mutations are globally encoded and that deleterious mutations are much more likely to occur in close mutations than in distal mutations. Finally, we describe a web interface that allows public users to access enzymology data stored in IntEnzyDB. IntEnzyDB will provide a computational facility for data-driven modeling in biocatalysis and molecular evolution.

Topics & Concepts

DatabaseBiocatalysisEnzyme kineticsComputer scienceFunction (biology)KineticsComputational biologyEnzymeData miningChemistryActive siteBiologyPhysicsGeneticsBiochemistryReaction mechanismCatalysisQuantum mechanicsMicrobial Metabolic Engineering and BioproductionProtein Structure and DynamicsEnzyme Catalysis and Immobilization
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