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Descriptor-Free Collective Variables from Geometric Graph Neural Networks

Authors :
Zhang, Jintu
Bonati, Luigi
Trizio, Enrico
Zhang, Odin
Kang, Yu
Hou, TingJun
Parrinello, Michele
Source :
Journal of Chemical Theory and Computation; December 2024, Vol. 20 Issue: 24 p10787-10797, 11p
Publication Year :
2024

Abstract

Enhanced sampling simulations make the computational study of rare events feasible. A large family of such methods crucially depends on the definition of some collective variables (CVs) that could provide a low-dimensional representation of the relevant physics of the process. Recently, many methods have been proposed to semiautomatize the CV design by using machine learning tools to learn the variables directly from the simulation data. However, most methods are based on feedforward neural networks and require some user-defined physical descriptors. Here, we propose bypassing this step using a graph neural network to directly use the atomic coordinates as input for the CV model. This way, we achieve a fully automatic approach to CV determination that provides variables invariant under the relevant symmetries, especially the permutational one. Furthermore, we provide different analysis tools to favor the physical interpretation of the final CV. We prove the robustness of our approach using different methods from the literature for the optimization of the CV, and we prove its efficacy on several systems, including a small peptide, an ion dissociation in explicit solvent, and a simple chemical reaction.

Details

Language :
English
ISSN :
15499618 and 15499626
Volume :
20
Issue :
24
Database :
Supplemental Index
Journal :
Journal of Chemical Theory and Computation
Publication Type :
Periodical
Accession number :
ejs68283352
Full Text :
https://doi.org/10.1021/acs.jctc.4c01197