Scalable emulation of protein equilibrium ensembles with generative deep learning
Microsoft Research (United Kingdom) · Freie Universität Berlin · +1 more institution
Abstract
Following the sequence and structure revolutions, predicting functionally relevant protein structure changes at scale remains an outstanding challenge. We introduce BioEmu, a deep learning system that emulates protein equilibrium ensembles by generating thousands of statistically independent structures per hour on a single graphics processing unit (GPU). BioEmu integrates more than 200 milliseconds of molecular dynamics (MD) simulations, static structures, and experimental protein stabilities using new training algorithms. It captures diverse functional motions-including cryptic pocket formation, local unfolding, and domain rearrangements-and predicts relative free energies with 1 kilocalorie per mole accuracy…
Citation impact
- FWCI
- 118.95
- Percentile
- 100%
- References
- 113
Authors
28- SLSarah LewisCorresponding
Microsoft Research (United Kingdom)
- THTim HempelCorresponding
Microsoft Research (United Kingdom)
- JJJosé Jiménez-LunaCorresponding
Microsoft Research (United Kingdom)
- MGMichael GasteggerCorresponding
Microsoft Research (United Kingdom)
- YXYu XieCorresponding
Microsoft Research (United Kingdom)
Topics & keywords
- Emulation
- Scalability
- Generative grammar
- Computer science
- Artificial intelligence
- Deep learning
- Generative model
- Machine learning