Machine learning-accelerated quantum mechanics-based atomistic simulations for industrial applications

J Comput Aided Mol Des. 2021 Apr;35(4):557-586. doi: 10.1007/s10822-020-00346-6. Epub 2020 Oct 9.

Abstract

Atomistic simulations have become an invaluable tool for industrial applications ranging from the optimization of protein-ligand interactions for drug discovery to the design of new materials for energy applications. Here we review recent advances in the use of machine learning (ML) methods for accelerated simulations based on a quantum mechanical (QM) description of the system. We show how recent progress in ML methods has dramatically extended the applicability range of conventional QM-based simulations, allowing to calculate industrially relevant properties with enhanced accuracy, at reduced computational cost, and for length and time scales that would have otherwise not been accessible. We illustrate the benefits of ML-accelerated atomistic simulations for industrial R&D processes by showcasing relevant applications from two very different areas, drug discovery (pharmaceuticals) and energy materials. Writing from the perspective of both a molecular and a materials modeling scientist, this review aims to provide a unified picture of the impact of ML-accelerated atomistic simulations on the pharmaceutical, chemical, and materials industries and gives an outlook on the exciting opportunities that could emerge in the future.

Keywords: Drug discovery; Energy materials; Industrial applications; Machine learning; Neural networks; Quantum mechanics.

MeSH terms

  • Drug Design
  • Drug Discovery* / methods
  • Ligands
  • Machine Learning*
  • Models, Molecular
  • Pharmaceutical Preparations / chemistry
  • Quantum Theory*

Substances

  • Ligands
  • Pharmaceutical Preparations