Ao_2023_Chembiochem__e202300754

Reference

Title : Data-Driven Protein Engineering for Improving Catalytic Activity and Selectivity - Ao_2023_Chembiochem__e202300754
Author(s) : Ao YF , Dorr M , Menke MJ , Born S , Heuson E , Bornscheuer U
Ref : Chembiochem , :e202300754 , 2023
Abstract :

Protein engineering is essential for altering the substrate scope, catalytic activity and selectivity of enzymes for applications in biocatalysis. However, traditional approaches, such as directed evolution and rational design, encounter the challenge in dealing with the experimental screening process of a large protein mutation space. Machine learning methods allow the approximation of protein fitness landscapes and the identification of catalytic patterns using limited experimental data, thus providing a new avenue to guide protein engineering campaigns. In this concept article, we review machine learning models that have been developed to assess enzyme-substrate-catalysis performance relationships aiming to improve enzymes through data-driven protein engineering. Furthermore, we prospect the future development of this field to provide additional strategies and tools for achieving desired activities and selectivities.

PubMedSearch : Ao_2023_Chembiochem__e202300754
PubMedID: 38029350

Related information

Citations formats

Ao YF, Dorr M, Menke MJ, Born S, Heuson E, Bornscheuer U (2023)
Data-Driven Protein Engineering for Improving Catalytic Activity and Selectivity
Chembiochem :e202300754

Ao YF, Dorr M, Menke MJ, Born S, Heuson E, Bornscheuer U (2023)
Chembiochem :e202300754