On the Frustration to Predict Binding Affinities from Protein-Ligand Structures with Deep Neural Networks.

Journal: Journal of medicinal chemistry
Published Date:

Abstract

Accurate prediction of binding affinities from protein-ligand atomic coordinates remains a major challenge in early stages of drug discovery. Using modular message passing graph neural networks describing both the ligand and the protein in their free and bound states, we unambiguously evidence that an explicit description of protein-ligand noncovalent interactions does not provide any advantage with respect to ligand or protein descriptors. Simple models, inferring binding affinities of test samples from that of the closest ligands or proteins in the training set, already exhibit good performances, suggesting that memorization largely dominates true learning in the deep neural networks. The current study suggests considering only noncovalent interactions while omitting their protein and ligand atomic environments. Removing all hidden biases probably requires much denser protein-ligand training matrices and a coordinated effort of the drug design community to solve the necessary protein-ligand structures.

Authors

  • Mikhail Volkov
    Laboratoire d'innovation thérapeutique, UMR7200 CNRS-Université de Strasbourg, 74 route du Rhin, Illkirch 67400, France.
  • Joseph-André Turk
    Iktos, 65 rue de Prony, Paris 75017, France.
  • Nicolas Drizard
    Iktos, 65 rue de Prony, Paris 75017, France.
  • Nicolas Martin
    IRT b-com, 1219 avenue des Champs Blancs, 35510, Cesson-Sevigne, France.
  • Brice Hoffmann
    Iktos, 65 rue de Prony, Paris 75017, France.
  • Yann Gaston-Mathé
    Iktos, 65 rue de Prony, Paris 75017, France.
  • Didier Rognan
    Laboratoire d'Innovation Thérapeutique, UMR 7200 CNRS-Université de Strasbourg, 67400 Illkirch, France.