EquiBind: Geometric Deep Learning for Drug Binding Structure Prediction
About
Predicting how a drug-like molecule binds to a specific protein target is a core problem in drug discovery. An extremely fast computational binding method would enable key applications such as fast virtual screening or drug engineering. Existing methods are computationally expensive as they rely on heavy candidate sampling coupled with scoring, ranking, and fine-tuning steps. We challenge this paradigm with EquiBind, an SE(3)-equivariant geometric deep learning model performing direct-shot prediction of both i) the receptor binding location (blind docking) and ii) the ligand's bound pose and orientation. EquiBind achieves significant speed-ups and better quality compared to traditional and recent baselines. Further, we show extra improvements when coupling it with existing fine-tuning techniques at the cost of increased running time. Finally, we propose a novel and fast fine-tuning model that adjusts torsion angles of a ligand's rotatable bonds based on closed-form global minima of the von Mises angular distance to a given input atomic point cloud, avoiding previous expensive differential evolution strategies for energy minimization.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Flexible blind self-docking | PDBbind v2020 (unseen protein receptors) | Ligand RMSD % < 2Å Success Rate0.7 | 24 | |
| Blind Docking | PDBBind Apo ESMFold proteins generated (test) | Top-1 RMSD < 2Å Acc1.7 | 21 | |
| Molecular Docking | PDBBind (unseen receptors) | Top-1 RMSD < 2Å (%)0.7 | 17 | |
| Flexible blind self-docking | PDBbind v2020 (test complexes recorded after 2019) | Ligand RMSD (25th Pctl)3.8 | 12 | |
| Blind Docking | PDBBind Holo crystal proteins (test) | Top-1 RMSD < 2Å (%)0.055 | 11 | |
| Molecular Docking | PDBBind Full (test) | Top-1 Success Rate (2Å)5.5 | 8 |