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arxiv: 2211.02130 · v1 · pith:HDT7FPGKnew · submitted 2022-11-03 · 💻 cs.LG · q-bio.QM

A 3D-Shape Similarity-based Contrastive Approach to Molecular Representation Learning

classification 💻 cs.LG q-bio.QM
keywords molecularrepresentationshapecontrastiveframeworkgraphlearningmolclass
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Molecular shape and geometry dictate key biophysical recognition processes, yet many graph neural networks disregard 3D information for molecular property prediction. Here, we propose a new contrastive-learning procedure for graph neural networks, Molecular Contrastive Learning from Shape Similarity (MolCLaSS), that implicitly learns a three-dimensional representation. Rather than directly encoding or targeting three-dimensional poses, MolCLaSS matches a similarity objective based on Gaussian overlays to learn a meaningful representation of molecular shape. We demonstrate how this framework naturally captures key aspects of three-dimensionality that two-dimensional representations cannot and provides an inductive framework for scaffold hopping.

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