DynamicBind: predicting ligand-specific protein-ligand complex structure with a deep equivariant generative model
Huawei Technologies (China) · Citrix (Switzerland) · +4 more institutions
Abstract
While significant advances have been made in predicting static protein structures, the inherent dynamics of proteins, modulated by ligands, are crucial for understanding protein function and facilitating drug discovery. Traditional docking methods, frequently used in studying protein-ligand interactions, typically treat proteins as rigid. While molecular dynamics simulations can propose appropriate protein conformations, they're computationally demanding due to rare transitions between biologically relevant equilibrium states. In this study, we present DynamicBind, a deep learning method that employs equivariant geometric diffusion networks to construct a smooth energy landscape, promoting efficient…
Citation impact
- FWCI
- 33.85
- Percentile
- 100%
- References
- 56
Authors
10Topics & keywords
- Drug discovery
- Virtual screening
- Computer science
- Docking (animal)
- Computational biology
- Molecular dynamics
- Protein structure
- Ligand (biochemistry)
- Affordable and clean energy