Publication | Open Access
DiffDock-PP: Rigid Protein-Protein Docking with Diffusion Models
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2023
Year
Protein AssemblyProtein FoldingMedicineProtein-small Molecule DockingComputational BiologyNatural SciencesMolecular BiologyStructural BiologyRigid Protein-protein DockingProtein Structure PredictionProtein ModelingSystems BiologyMolecular DockingTarget PredictionProtein BioinformaticsBiophysicsDrug Discovery
Understanding how proteins structurally interact is crucial to modern biology, with applications in drug discovery and protein design. Recent machine learning methods have formulated protein-small molecule docking as a generative problem with significant performance boosts over both traditional and deep learning baselines. In this work, we propose a similar approach for rigid protein-protein docking: DiffDock-PP is a diffusion generative model that learns to translate and rotate unbound protein structures into their bound conformations. We achieve state-of-the-art performance on DIPS with a median C-RMSD of 4.85, outperforming all considered baselines. Additionally, DiffDock-PP is faster than all search-based methods and generates reliable confidence estimates for its predictions. Our code is publicly available at $\texttt{https://github.com/ketatam/DiffDock-PP}$