Scientific Reports (May 2022)

Predicting target–ligand interactions with graph convolutional networks for interpretable pharmaceutical discovery

  • Paola Ruiz Puentes,
  • Laura Rueda-Gensini,
  • Natalia Valderrama,
  • Isabela Hernández,
  • Cristina González,
  • Laura Daza,
  • Carolina Muñoz-Camargo,
  • Juan C. Cruz,
  • Pablo Arbeláez

DOI
https://doi.org/10.1038/s41598-022-12180-x
Journal volume & issue
Vol. 12, no. 1
pp. 1 – 17

Abstract

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Abstract Drug Discovery is an active research area that demands great investments and generates low returns due to its inherent complexity and great costs. To identify potential therapeutic candidates more effectively, we propose protein–ligand with adversarial augmentations network (PLA-Net), a deep learning-based approach to predict target–ligand interactions. PLA-Net consists of a two-module deep graph convolutional network that considers ligands’ and targets’ most relevant chemical information, successfully combining them to find their binding capability. Moreover, we generate adversarial data augmentations that preserve relevant biological backgrounds and improve the interpretability of our model, highlighting the relevant substructures of the ligands reported to interact with the protein targets. Our experiments demonstrate that the joint ligand–target information and the adversarial augmentations significantly increase the interaction prediction performance. PLA-Net achieves 86.52% in mean average precision for 102 target proteins with perfect performance for 30 of them, in a curated version of actives as decoys dataset. Lastly, we accurately predict pharmacologically-relevant molecules when screening the ligands of ChEMBL and drug repurposing Hub datasets with the perfect-scoring targets.