15 Years of molecular simulation of drug-binding kinetics

Expert Opin Drug Discov. 2023 Jul-Dec;18(12):1333-1348. doi: 10.1080/17460441.2023.2264770. Epub 2023 Nov 1.

Abstract

Introduction: Drug-binding kinetics has been increasingly recognized as an important factor to be considered in drug discovery. Long residence time could prolong the action of some drugs while produce toxicity on others. Early evaluation of the binding kinetics of drug candidates could reduce attrition rate late in the drug discovery process. Computational prediction of drug-binding kinetics is useful as compounds can be evaluated even before they are made. However, simulation of drug-binding kinetics is a challenging problem because of the long-time scale involved. Nevertheless, significant progress has been made.

Areas covered: This review illustrates the rapid evolution of qualitative to quantitative molecular dynamics-based methods that have been developed over the last 15 years.

Expert opinion: The development of new methods based on molecular dynamics simulations now enables computation of absolute association/dissociation rate constants. Cheaper methods capable of identifying candidates with fast or slow binding kinetics, or rank-ordering rate constants are also available. Together, these methods have generated useful insights into the molecular mechanisms of drug-binding kinetics, and the design of drug candidates with therapeutically favorable kinetics. Although predicting absolute rate constants is still expensive and challenging, rapid improvement is expected in the coming years with the continuing refinement of current technologies, development of new methodologies, and the utilization of machine learning.

Keywords: Drug-binding kinetics; Markov State Model; machine learning; metadynamics simulation; milestoning simulation; scaled, steered, or random accelerated molecular dynamics; umbrella-sampling simulation; weighted ensemble simulation.

Publication types

  • Review
  • Research Support, N.I.H., Extramural

MeSH terms

  • Drug Discovery*
  • Humans
  • Kinetics
  • Ligands
  • Machine Learning
  • Molecular Dynamics Simulation*
  • Protein Binding

Substances

  • Ligands