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GraphVAMPNet, using graph neural networks and variational approach to Markov processes for dynamical modeling of biomolecules.

Authors :
Ghorbani, Mahdi
Prasad, Samarjeet
Klauda, Jeffery B.
Brooks, Bernard R.
Source :
Journal of Chemical Physics; 5/14/2022, Vol. 156 Issue 18, p1-14, 14p
Publication Year :
2022

Abstract

Finding a low dimensional representation of data from long-timescale trajectories of biomolecular processes, such as protein folding or ligand–receptor binding, is of fundamental importance, and kinetic models, such as Markov modeling, have proven useful in describing the kinetics of these systems. Recently, an unsupervised machine learning technique called VAMPNet was introduced to learn the low dimensional representation and the linear dynamical model in an end-to-end manner. VAMPNet is based on the variational approach for Markov processes and relies on neural networks to learn the coarse-grained dynamics. In this paper, we combine VAMPNet and graph neural networks to generate an end-to-end framework to efficiently learn high-level dynamics and metastable states from the long-timescale molecular dynamics trajectories. This method bears the advantages of graph representation learning and uses graph message passing operations to generate an embedding for each datapoint, which is used in the VAMPNet to generate a coarse-grained dynamical model. This type of molecular representation results in a higher resolution and a more interpretable Markov model than the standard VAMPNet, enabling a more detailed kinetic study of the biomolecular processes. Our GraphVAMPNet approach is also enhanced with an attention mechanism to find the important residues for classification into different metastable states. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00219606
Volume :
156
Issue :
18
Database :
Complementary Index
Journal :
Journal of Chemical Physics
Publication Type :
Academic Journal
Accession number :
156860916
Full Text :
https://doi.org/10.1063/5.0085607