Volume 252, 2024

Computation-guided engineering of distal mutations in an artificial enzyme

Abstract

Artificial enzymes are valuable biocatalysts able to perform new-to-nature transformations with the precision and (enantio-)selectivity of natural enzymes. Although they are highly engineered biocatalysts, they often cannot reach catalytic rates akin those of their natural counterparts, slowing down their application in real-world industrial processes. Typically, their designs only optimise the chemistry inside the active site, while overlooking the role of protein dynamics on catalysis. In this work, we show how the catalytic performance of an already engineered artificial enzyme can be further improved by distal mutations that affect the conformational equilibrium of the protein. To this end, we subjected a specialised artificial enzyme based on the lactococcal multidrug resistance regulator (LmrR) to an innovative algorithm that quickly inspects the whole protein sequence space for hotpots which affect the protein dynamics. From an initial predicted selection of 73 variants, two variants with mutations distant by more than 11 Å from the catalytic pAF residue showed increased catalytic activity towards the new-to-nature hydrazone formation reaction. Their recombination displayed a 66% higher turnover number and 14 °C higher thermostability. Microsecond time scale molecular dynamics simulations evidenced a shift in the distribution of productive enzyme conformations, which are the result of a cascade of interactions initiated by the introduced mutations.

Graphical abstract: Computation-guided engineering of distal mutations in an artificial enzyme

  • This article is part of the themed collection: Biocatalysis

Associated articles

Supplementary files

Article information

Article type
Paper
Submitted
28 Marts 2024
Accepted
22 Apr. 2024
First published
22 Apr. 2024
This article is Open Access
Creative Commons BY-NC license

Faraday Discuss., 2024,252, 262-278

Computation-guided engineering of distal mutations in an artificial enzyme

F. Casilli, M. Canyelles-Niño, G. Roelfes and L. Alonso-Cotchico, Faraday Discuss., 2024, 252, 262 DOI: 10.1039/D4FD00069B

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