Modelling peptide-protein complexes: docking, simulations and machine learning

QRB Discov. 2022 Sep 19:3:e17. doi: 10.1017/qrd.2022.14. eCollection 2022.

Abstract

Peptides mediate up to 40% of protein interactions, their high specificity and ability to bind in places where small molecules cannot make them potential drug candidates. However, predicting peptide-protein complexes remains more challenging than protein-protein or protein-small molecule interactions, in part due to the high flexibility peptides have. In this review, we look at the advances in docking, molecular simulations and machine learning to tackle problems related to peptides such as predicting structures, binding affinities or even kinetics. We specifically focus on explaining the number of docking programmes and force fields used in molecular simulations, so a prospective user can have an educated guess as to why choose one modelling tool or another to address their scientific questions.

Keywords: Docking; force field; machine learning; molecular dynamics simulation; peptide binding; peptide–protein interaction; scoring.