| Literature DB >> 33629765 |
Yiming Jin1,2, Linus O Johannissen1, Sam Hay1.
Abstract
Molecular dynamics (MD) simulations are a popular method of studying protein structure and function, but are unable to reliably sample all relevant conformational space in reasonable computational timescales. A range of enhanced sampling methods are available that can improve conformational sampling, but these do not offer a complete solution. We present here a proof-of-principle method of combining MD simulation with machine learning to explore protein conformational space. An autoencoder is used to map snapshots from MD simulations onto a user-defined conformational landscape defined by principal components analysis or specific structural features, and we show that we can predict, with useful accuracy, conformations that are not present in the training data. This method offers a new approach to the prediction of new low energy/physically realistic structures of conformationally dynamic proteins and allows an alternative approach to enhanced sampling of MD simulations.Entities:
Keywords: Calmodulin; autoencoder; conformational landscape; molecular dynamics; protein
Year: 2021 PMID: 33629765 DOI: 10.1002/prot.26068
Source DB: PubMed Journal: Proteins ISSN: 0887-3585