1. InDeep: 3D fully convolutional neural networks to assist in silico drug design on protein–protein interactions.
- Author
-
Mallet, Vincent, Ruano, Luis Checa, Franel, Alexandra Moine, Nilges, Michael, Druart, Karen, Bouvier, Guillaume, and Sperandio, Olivier
- Subjects
- *
CONVOLUTIONAL neural networks , *PROTEIN-protein interactions , *MOLECULAR structure , *MOLECULAR dynamics , *BINDING sites - Abstract
Motivation Protein–protein interactions (PPIs) are key elements in numerous biological pathways and the subject of a growing number of drug discovery projects including against infectious diseases. Designing drugs on PPI targets remains a difficult task and requires extensive efforts to qualify a given interaction as an eligible target. To this end, besides the evident need to determine the role of PPIs in disease-associated pathways and their experimental characterization as therapeutics targets, prediction of their capacity to be bound by other protein partners or modulated by future drugs is of primary importance. Results We present InDeep, a tool for predicting functional binding sites within proteins that could either host protein epitopes or future drugs. Leveraging deep learning on a curated dataset of PPIs, this tool can proceed to enhanced functional binding site predictions either on experimental structures or along molecular dynamics trajectories. The benchmark of InDeep demonstrates that our tool outperforms state-of-the-art ligandable binding sites predictors when assessing PPI targets but also conventional targets. This offers new opportunities to assist drug design projects on PPIs by identifying pertinent binding pockets at or in the vicinity of PPI interfaces. Availability and implementation The tool is available on GitLab at https://gitlab.pasteur.fr/InDeep/InDeep. Supplementary information Supplementary data are available at Bioinformatics online. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF