Algorithm-aided engineering of aliphatic halogenase WelO5* for the asymmetric late-stage functionalization of soraphens

Nat Commun. 2022 Jan 18;13(1):371. doi: 10.1038/s41467-022-27999-1.

Abstract

Late-stage functionalization of natural products offers an elegant route to create novel entities in a relevant biological target space. In this context, enzymes capable of halogenating sp3 carbons with high stereo- and regiocontrol under benign conditions have attracted particular attention. Enabled by a combination of smart library design and machine learning, we engineer the iron/α-ketoglutarate dependent halogenase WelO5* for the late-stage functionalization of the complex and chemically difficult to derivatize macrolides soraphen A and C, potent anti-fungal agents. While the wild type enzyme WelO5* does not accept the macrolide substrates, our engineering strategy leads to active halogenase variants and improves upon their apparent kcat and total turnover number by more than 90-fold and 300-fold, respectively. Notably, our machine-learning guided engineering approach is capable of predicting more active variants and allows us to switch the regio-selectivity of the halogenases facilitating the targeted analysis of the derivatized macrolides' structure-function activity in biological assays.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Algorithms*
  • Biocatalysis
  • Biotransformation
  • Fungi / physiology
  • Halogenation
  • Macrolides / chemistry
  • Macrolides / metabolism*
  • Models, Molecular
  • Oxidoreductases / chemistry
  • Oxidoreductases / metabolism*
  • Protein Engineering*

Substances

  • Macrolides
  • soraphen A
  • Oxidoreductases