A compact review of progress and prospects of deep learning in drug discovery

J Mol Model. 2023 Mar 28;29(4):117. doi: 10.1007/s00894-023-05492-w.

Abstract

Background: Drug discovery processes, such as new drug development, drug synergy, and drug repurposing, consume significant yearly resources. Computer-aided drug discovery can effectively improve the efficiency of drug discovery. Traditional computer methods such as virtual screening and molecular docking have achieved many gratifying results in drug development. However, with the rapid growth of computer science, data structures have changed considerably; with more extensive and dimensional data and more significant amounts of data, traditional computer methods can no longer be applied well. Deep learning methods are based on deep neural network structures that can handle high-dimensional data very well, so they are used in current drug development.

Results: This review summarized the applications of deep learning methods in drug discovery, such as drug target discovery, drug de novo design, drug recommendation, drug synergy, and drug response prediction. While applying deep learning methods to drug discovery suffers from a lack of data, transfer learning is an excellent solution to this problem. Furthermore, deep learning methods can extract deeper features and have higher predictive power than other machine learning methods. Deep learning methods have great potential in drug discovery and are expected to facilitate drug discovery development.

Keywords: Deep learning; Drug design; Drug discovery; Drug reaction; Drug repositioning; Recommendation system.

Publication types

  • Review

MeSH terms

  • Deep Learning*
  • Drug Design
  • Drug Discovery / methods
  • Machine Learning
  • Molecular Docking Simulation
  • Neural Networks, Computer