Computational and Structural Biotechnology Journal (Jan 2022)

Protein–protein interaction prediction with deep learning: A comprehensive review

  • Farzan Soleymani,
  • Eric Paquet,
  • Herna Viktor,
  • Wojtek Michalowski,
  • Davide Spinello

Journal volume & issue
Vol. 20
pp. 5316 – 5341

Abstract

Read online

Most proteins perform their biological function by interacting with themselves or other molecules. Thus, one may obtain biological insights into protein functions, disease prevalence, and therapy development by identifying protein–protein interactions (PPI). However, finding the interacting and non-interacting protein pairs through experimental approaches is labour-intensive and time-consuming, owing to the variety of proteins. Hence, protein–protein interaction and protein–ligand binding problems have drawn attention in the fields of bioinformatics and computer-aided drug discovery. Deep learning methods paved the way for scientists to predict the 3-D structure of proteins from genomes, predict the functions and attributes of a protein, and modify and design new proteins to provide desired functions. This review focuses on recent deep learning methods applied to problems including predicting protein functions, protein–protein interaction and their sites, protein–ligand binding, and protein design.

Keywords