DLTKcat: deep learning-based prediction of temperature-dependent enzyme turnover rates

Brief Bioinform. 2023 Nov 22;25(1):bbad506. doi: 10.1093/bib/bbad506.

Abstract

The enzyme turnover rate, ${k}_{cat}$, quantifies enzyme kinetics by indicating the maximum efficiency of enzyme catalysis. Despite its importance, ${k}_{cat}$ values remain scarce in databases for most organisms, primarily because of the cost of experimental measurements. To predict ${k}_{cat}$ and account for its strong temperature dependence, DLTKcat was developed in this study and demonstrated superior performance (log10-scale root mean squared error = 0.88, R-squared = 0.66) than previously published models. Through two case studies, DLTKcat showed its ability to predict the effects of protein sequence mutations and temperature changes on ${k}_{cat}$ values. Although its quantitative accuracy is not high enough yet to model the responses of cellular metabolism to temperature changes, DLTKcat has the potential to eventually become a computational tool to describe the temperature dependence of biological systems.

Keywords: compound–protein interaction; deep learning; enzyme turnover rate; genome-scale metabolic modeling; temperature dependence.

MeSH terms

  • Amino Acid Sequence
  • Catalysis
  • Databases, Factual
  • Deep Learning*
  • Temperature