One-shot optimization of multiple enzyme parameters: Tailoring glucose oxidase for pH and electron mediators

Biotechnol Bioeng. 2020 Jan;117(1):17-29. doi: 10.1002/bit.27169. Epub 2019 Oct 1.

Abstract

Enzymes are biological catalysts with many industrial applications, but natural enzymes are usually unsuitable for industrial processes because they are not optimized for the process conditions. The properties of enzymes can be improved by directed evolution, which involves multiple rounds of mutagenesis and screening. By using mathematical models to predict the structure-activity relationship of an enzyme, and by defining the optimal combination of mutations in silico, we can significantly reduce the number of bench experiments needed, and hence the time and investment required to develop an optimized product. Here, we applied our innovative sequence-activity relationship methodology (innov'SAR) to improve glucose oxidase activity in the presence of different mediators across a range of pH values. Using this machine learning approach, a predictive model was developed and the optimal combination of mutations was determined, leading to a glucose oxidase mutant (P1) with greater specificity for the mediators ferrocene-methanol (12-fold) and nitrosoaniline (8-fold), compared to the wild-type enzyme, and better performance in three pH-adjusted buffers. The kcat /KM ratio of P1 increased by up to 121 folds compared to the wild type enzyme at pH 5.5 in the presence of ferrocene methanol.

Keywords: artificial intelligence; directed evolution; multiple parameter improvement; protein sequence activity relationship; protein spectrum; rational screening.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Amino Acid Sequence
  • Directed Molecular Evolution / methods*
  • Ferrous Compounds / metabolism
  • Glucose / metabolism
  • Glucose Oxidase* / chemistry
  • Glucose Oxidase* / genetics
  • Glucose Oxidase* / metabolism
  • Hydrogen-Ion Concentration
  • Kinetics
  • Machine Learning*
  • Models, Statistical
  • Mutagenesis, Site-Directed / methods*
  • Mutation*
  • Nitrosamines / metabolism

Substances

  • Ferrous Compounds
  • Nitrosamines
  • ferrocenemethanol
  • Glucose Oxidase
  • Glucose