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Development and evaluation of a deep learning model for protein-ligand binding affinity prediction

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arxiv 1712.07042 v2 pith:GVOUZ4GA submitted 2017-12-19 stat.ML cs.LGq-bio.BM

Development and evaluation of a deep learning model for protein-ligand binding affinity prediction

classification stat.ML cs.LGq-bio.BM
keywords modeldeeplearningaffinitybindingdiscoverynetworkscoring
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Structure based ligand discovery is one of the most successful approaches for augmenting the drug discovery process. Currently, there is a notable shift towards machine learning (ML) methodologies to aid such procedures. Deep learning has recently gained considerable attention as it allows the model to "learn" to extract features that are relevant for the task at hand. We have developed a novel deep neural network estimating the binding affinity of ligand-receptor complexes. The complex is represented with a 3D grid, and the model utilizes a 3D convolution to produce a feature map of this representation, treating the atoms of both proteins and ligands in the same manner. Our network was tested on the CASF "scoring power" benchmark and Astex Diverse Set and outperformed classical scoring functions. The model, together with usage instructions and examples, is available as a git repository at http://gitlab.com/cheminfIBB/pafnucy

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  1. h-MINT: Modeling Pocket-Ligand Binding with Hierarchical Molecular Interaction Network

    cs.LG 2026-04 unverdicted novelty 7.0

    h-MINT improves ligand-protein binding affinity prediction by 2-4% and virtual screening metrics by 1-3% via overlapping fragment tokenization and hierarchical modeling.