Deep learning allows genome-scale prediction of Michaelis constants from structural features
Journal article, 2021

AU The:Michaelis Pleaseconfirmthatallheadinglevelsarerepresentedcorrectly constant KM describes the affinity of an enzyme : for a specific substrate and is a central parameter in studies of enzyme kinetics and cellular physiology. As measurements of KM are often difficult and time-consuming, experimental estimates exist for only a minority of enzyme–substrate combinations even in model organisms. Here, we build and train an organism-independent model that successfully predicts KM values for natural enzyme–substrate combinations using machine and deep learning methods. Predictions are based on a task-specific molecular fingerprint of the substrate, generated using a graph neural network, and on a deep numerical representation of the enzyme’s amino acid sequence. We provide genome-scale KM predictions for 47 model organisms, which can be used to approximately relate metabolite concentrations to cellular physiology and to aid in the parameterization of kinetic models of cellular metabolism.

kinetics

cell metabolism

molecular fingerprinting

amino acid sequence

Michaelis constant

enzyme substrate

Author

Alexander Kroll

Heinrich Heine University Düsseldorf

Martin Engqvist

Chalmers, Biology and Biological Engineering, Systems and Synthetic Biology

David Heckmann

Heinrich Heine University Düsseldorf

Martin J. Lercher

Heinrich Heine University Düsseldorf

PLoS Biology

1544-9173 (ISSN) 1545-7885 (eISSN)

Vol. 19 10 e3001402

Subject Categories

Biological Sciences

DOI

10.1371/journal.pbio.3001402

PubMed

34665809

More information

Latest update

11/2/2021