Abstract
Message-passing neural networks (MPNNs) on molecular graphs generate continuous and differentiable encodings of small molecules with state-of-the-art performance on protein-ligand complex scoring tasks. Here, we describe the Protein-Graph Network (PGN) package, an open-source toolkit that constructs ligand-receptor graphs based on atom proximity and allows users to rapidly apply and evaluate MPNN architectures for a broad range of tasks. We demonstrate the utility of PGN by introducing benchmarks for affinity and docking score prediction tasks. Graph networks generalize better than fingerprint-based models and perform strongly for the docking score prediction task. Overall, MPNNs with Proximity Graph data structures augment the prediction of ligand-receptor complex properties when ligand-receptor data are available.
Supplementary materials
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Supporting Information
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Code availability, Supporting Methods, Supporting Tables S1-S15, SI Figures 1-6, and Supplemental References.
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PGN GitHub Repository
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Open-source code repository for the Proximity Graph Networks (PGN) package developed in this study. It contains the complete source code and fully trained graph network models and weights. It includes all toolkit components and scripts for common tasks and usage.
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