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Navigating protein landscapes with a machine-learned transferable coarse-grained model

Authors :
Charron, Nicholas E.
Musil, Felix
Guljas, Andrea
Chen, Yaoyi
Bonneau, Klara
Pasos-Trejo, Aldo S.
Venturin, Jacopo
Gusew, Daria
Zaporozhets, Iryna
Krämer, Andreas
Templeton, Clark
Kelkar, Atharva
Durumeric, Aleksander E. P.
Olsson, Simon
Pérez, Adrià
Majewski, Maciej
Husic, Brooke E.
Patel, Ankit
De Fabritiis, Gianni
Noé, Frank
Clementi, Cecilia
Publication Year :
2023

Abstract

The most popular and universally predictive protein simulation models employ all-atom molecular dynamics (MD), but they come at extreme computational cost. The development of a universal, computationally efficient coarse-grained (CG) model with similar prediction performance has been a long-standing challenge. By combining recent deep learning methods with a large and diverse training set of all-atom protein simulations, we here develop a bottom-up CG force field with chemical transferability, which can be used for extrapolative molecular dynamics on new sequences not used during model parametrization. We demonstrate that the model successfully predicts folded structures, intermediates, metastable folded and unfolded basins, and the fluctuations of intrinsically disordered proteins while it is several orders of magnitude faster than an all-atom model. This showcases the feasibility of a universal and computationally efficient machine-learned CG model for proteins.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.18278
Document Type :
Working Paper