An evolution-based model for designing chorismate mutase enzymes

William P. Russ(The University of Texas Southwestern Medical Center), Matteo Figliuzzi(Centre National de la Recherche Scientifique), Christian Stocker(ETH Zurich), Pierre Barrat-Charlaix(Centre National de la Recherche Scientifique), Michael Socolich(University of Chicago), Peter Kast(ETH Zurich), Donald Hilvert(ETH Zurich), Rémi Monasson(Centre National de la Recherche Scientifique), Simona Cocco(Centre National de la Recherche Scientifique), Martin Weigt(Centre National de la Recherche Scientifique), Rama Ranganathan(University of Chicago)
Science
July 24, 2020
Cited by 357

Abstract

The rational design of enzymes is an important goal for both fundamental and practical reasons. Here, we describe a process to learn the constraints for specifying proteins purely from evolutionary sequence data, design and build libraries of synthetic genes, and test them for activity in vivo using a quantitative complementation assay. For chorismate mutase, a key enzyme in the biosynthesis of aromatic amino acids, we demonstrate the design of natural-like catalytic function with substantial sequence diversity. Further optimization focuses the generative model toward function in a specific genomic context. The data show that sequence-based statistical models suffice to specify proteins and provide access to an enormous space of functional sequences. This result provides a foundation for a general process for evolution-based design of artificial proteins.


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