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Improving Enzyme Fitness with Machine Learning

David Patsch, Rebecca Buller

2023CHIMIA International Journal for Chemistry14 citationsDOIOpen Access PDF

Abstract

The combinatorial composition of proteins has triggered the application of machine learning in enzyme engineering. By predicting how protein sequence encodes function, researchers aim to leverage machine learning models to select a reduced number of optimized sequences for laboratory measurement with the aim to lower costs and shorten timelines of enzyme engineering campaigns. In this review, we will highlight successful algorithm-aided protein engineering examples, including work carried out within the NCCR Catalysis. In this context, we will discuss the underlying computational methods developed to improve enzyme properties such as enantioselectivity, regioselectivity, activity, and stability. Considering the rapid maturing of computational techniques, we expect that their continued application in enzyme engineering campaigns will be key to deliver additional powerful biocatalysts for sustainable chemical synthesis.

Topics & Concepts

Protein engineeringLeverage (statistics)TimelineComputer scienceContext (archaeology)Artificial intelligenceMachine learningDirected evolutionBiochemical engineeringEnzymeEngineeringChemistryBiochemistryBiologyMathematicsPaleontologyMutantStatisticsGeneEnzyme Catalysis and ImmobilizationAdvanced Proteomics Techniques and ApplicationsProtein Structure and Dynamics
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