Abstract

Accurate quantification of protein-ligand interactions remains a key challenge to structure-based drug design. However, traditional machine learning (ML)-based methods based on handcrafted descriptors, one-dimensional protein sequences, and/or two-dimensional graph representations limit their capability to learn the generalized molecular interactions in 3D space. Here, we proposed a novel deep graph representation learning framework named InteractionGraphNet (IGN) to learn the protein-ligand interactions from the 3D structures of protein-ligand complexes. In IGN, two independent graph convolution modules were stacked to sequentially learn the intramolecular and intermolecular interactions, and the learned intermolecular interactions can be efficiently used for subsequent tasks. Extensive binding affinity prediction, large-scale structure-based virtual screening, and pose prediction experiments demonstrated that IGN achieved better or competitive performance against other state-of-the-art ML-based baselines and docking programs. More importantly, such state-of-the-art performance was proven from the successful learning of the key features in protein-ligand interactions instead of just memorizing certain biased patterns from data.

Keywords

Computer scienceGraphArtificial intelligenceProtein ligandIntramolecular forceDocking (animal)Deep learningIntermolecular forceLigand (biochemistry)Machine learningChemistryTheoretical computer scienceStereochemistry

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Publication Info

Year
2021
Type
article
Volume
64
Issue
24
Pages
18209-18232
Citations
212
Access
Closed

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Cite This

Dejun Jiang, Chang‐Yu Hsieh, Zhenhua Wu et al. (2021). InteractionGraphNet: A Novel and Efficient Deep Graph Representation Learning Framework for Accurate Protein–Ligand Interaction Predictions. Journal of Medicinal Chemistry , 64 (24) , 18209-18232. https://doi.org/10.1021/acs.jmedchem.1c01830

Identifiers

DOI
10.1021/acs.jmedchem.1c01830