Skittles: GNN-Assisted Pseudo-Ligands Generation and Its Application for Binding Sites Classification and Affinity Prediction.

Journal: Proteins
Published Date:

Abstract

Nowadays, multiple solutions are known for identifying ligand-protein binding sites. Another important task is labeling each point of a binding site with the appropriate atom type, a process known as pseudo-ligand generation. The number of solutions for pseudo-ligand generation is limited, and, to our knowledge, the influence of machine learning techniques has not been studied previously. Here, we describe Skittles, a new graph neural network-assisted pseudo-ligand generation approach, and compare it with known force-field-based methods. We also demonstrate the application of Skittles-based data for solving several important problems in structural biology, including ligand-protein binding site classification and ligand-protein affinity prediction.

Authors

  • Sergei Evteev
    Dukhov Automatics Research Institute (VNIIA), Moscow, Russian Federation.
  • Alexey Ereshchenko
    Dukhov Automatics Research Institute (VNIIA), Moscow, Russian Federation.
  • Denis Adjugim
    Dukhov Automatics Research Institute (VNIIA), Moscow, Russian Federation.
  • Alexey Vyacheslavov
    Dukhov Automatics Research Institute (VNIIA), Moscow, Russian Federation.
  • Anna Pastukhova
    Dukhov Automatics Research Institute (VNIIA), Moscow, Russian Federation.
  • Alexander Malyshev
    Dukhov Automatics Research Institute (VNIIA), Moscow, Russian Federation.
  • Victor Terentiev
    Dukhov Automatics Research Institute (VNIIA), Moscow, Russian Federation.
  • Yan Ivanenkov
    Pharma.AI Department , Insilico Medicine, Inc. , Baltimore , Maryland 21218 , United States.