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Enhancing computational enzyme design by a maximum entropy strategy.


ABSTRACT: Although computational enzyme design is of great importance, the advances utilizing physics-based approaches have been slow, and further progress is urgently needed. One promising direction is using machine learning, but such strategies have not been established as effective tools for predicting the catalytic power of enzymes. Here, we show that the statistical energy inferred from homologous sequences with the maximum entropy (MaxEnt) principle significantly correlates with enzyme catalysis and stability at the active site region and the more distant region, respectively. This finding decodes enzyme architecture and offers a connection between enzyme evolution and the physical chemistry of enzyme catalysis, and it deepens our understanding of the stability-activity trade-off hypothesis for enzymes. Overall, the strong correlations found here provide a powerful way of guiding enzyme design.

SUBMITTER: Xie WJ 

PROVIDER: S-EPMC8851541 | biostudies-literature | 2022 Feb

REPOSITORIES: biostudies-literature

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Enhancing computational enzyme design by a maximum entropy strategy.

Xie Wen Jun WJ   Asadi Mojgan M   Warshel Arieh A  

Proceedings of the National Academy of Sciences of the United States of America 20220201 7


Although computational enzyme design is of great importance, the advances utilizing physics-based approaches have been slow, and further progress is urgently needed. One promising direction is using machine learning, but such strategies have not been established as effective tools for predicting the catalytic power of enzymes. Here, we show that the statistical energy inferred from homologous sequences with the maximum entropy (MaxEnt) principle significantly correlates with enzyme catalysis and  ...[more]

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