kthrn22 / Predict-Binding-Affinity-using-GNN
Predict binding affinity of ligand-protein complexes using Graph Neural Networks. The model is implemented using PyTorch Geometric and based on the method in "Predicting drug-target interaction using 3D structure-embedded graph representations from graph neural networks"
☆11Updated 2 years ago
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