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Molecular geometric deep learning

Cong Shen, Jiawei Luo, Kelin Xia

2023Cell Reports Methods26 citationsDOIOpen Access PDF

Abstract

Molecular representation learning plays an important role in molecular property prediction. Existing molecular property prediction models rely on the de facto standard of covalent-bond-based molecular graphs for representing molecular topology at the atomic level and totally ignore the non-covalent interactions within the molecule. In this study, we propose a molecular geometric deep learning model to predict the properties of molecules that aims to comprehensively consider the information of covalent and non-covalent interactions of molecules. The essential idea is to incorporate a more general molecular representation into geometric deep learning (GDL) models. We systematically test molecular GDL (Mol-GDL) on fourteen commonly used benchmark datasets. The results show that Mol-GDL can achieve a better performance than state-of-the-art (SOTA) methods. Extensive tests have demonstrated the important role of non-covalent interactions in molecular property prediction and the effectiveness of Mol-GDL models.

Topics & Concepts

Covalent bondRepresentation (politics)Benchmark (surveying)MoleculeProperty (philosophy)Molecular modelMolecular descriptorDe factoComputer scienceDeep learningArtificial intelligenceChemistryBiological systemMachine learningQuantitative structure–activity relationshipStereochemistryBiologyOrganic chemistryLawEpistemologyPolitical sciencePhilosophyGeodesyGeographyPoliticsComputational Drug Discovery MethodsMachine Learning in Materials ScienceProtein Structure and Dynamics
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