Litcius/Paper detail

graphLambda: Fusion Graph Neural Networks for Binding Affinity Prediction

Ghaith Mqawass, Petr Popov

2024Journal of Chemical Information and Modeling24 citationsDOI

Abstract

Predicting the binding affinity of protein–ligand complexes is crucial for computer-aided drug discovery (CADD) and the identification of potential drug candidates. The deep learning-based scoring functions have emerged as promising predictors of binding constants. Building on recent advancements in graph neural networks, we present graphLambda for protein–ligand binding affinity prediction, which utilizes graph convolutional, attention, and isomorphism blocks to enhance the predictive capabilities. The graphLambda model exhibits superior performance across CASF16 and CSAR HiQ NRC benchmarks and demonstrates robustness with respect to different types of train-validation set partitions. The development of graphLambda underscores the potential of graph neural networks in advancing binding affinity prediction models, contributing to more effective CADD methodologies.

Topics & Concepts

Computer scienceGraphArtificial intelligenceConvolutional neural networkRobustness (evolution)Quantitative structure–activity relationshipArtificial neural networkDrug discoveryGraph isomorphismMachine learningChemistryTheoretical computer scienceBiochemistryGeneLine graphComputational Drug Discovery MethodsProtein Structure and DynamicsMachine Learning in Materials Science