Litcius/Paper detail

Computationally predicting binding affinity in protein–ligand complexes: free energy-based simulations and machine learning-based scoring functions

Debby D. Wang, Mengxu Zhu, Hong Yan

2020Briefings in Bioinformatics72 citationsDOI

Abstract

Accurately predicting protein-ligand binding affinities can substantially facilitate the drug discovery process, but it remains as a difficult problem. To tackle the challenge, many computational methods have been proposed. Among these methods, free energy-based simulations and machine learning-based scoring functions can potentially provide accurate predictions. In this paper, we review these two classes of methods, following a number of thermodynamic cycles for the free energy-based simulations and a feature-representation taxonomy for the machine learning-based scoring functions. More recent deep learning-based predictions, where a hierarchy of feature representations are generally extracted, are also reviewed. Strengths and weaknesses of the two classes of methods, coupled with future directions for improvements, are comparatively discussed.

Topics & Concepts

Computer scienceArtificial intelligenceMachine learningStrengths and weaknessesHierarchyRepresentation (politics)Feature (linguistics)Process (computing)Energy (signal processing)AffinitiesTaxonomy (biology)Binding affinitiesDrug discoveryBioinformaticsMathematicsChemistryStatisticsPolitical scienceMarket economyBiologyPhilosophyReceptorBotanyEconomicsStereochemistryEpistemologyOperating systemPoliticsBiochemistryLawLinguisticsComputational Drug Discovery MethodsProtein Structure and DynamicsMachine Learning in Materials Science