Machine-guided path sampling to discover mechanisms of molecular self-organization

Open Access
Authors
Publication date 04-2023
Journal Nature Computational Science
Volume | Issue number 3 | 4
Pages (from-to) 334-345
Number of pages 21
Organisations
  • Faculty of Science (FNWI) - Van 't Hoff Institute for Molecular Sciences (HIMS)
Abstract

Molecular self-organization driven by concerted many-body interactions produces the ordered structures that define both inanimate and living matter. Here we present an autonomous path sampling algorithm that integrates deep learning and transition path theory to discover the mechanism of molecular self-organization phenomena. The algorithm uses the outcome of newly initiated trajectories to construct, validate and—if needed—update quantitative mechanistic models. Closing the learning cycle, the models guide the sampling to enhance the sampling of rare assembly events. Symbolic regression condenses the learned mechanism into a human-interpretable form in terms of relevant physical observables. Applied to ion association in solution, gas-hydrate crystal formation, polymer folding and membrane-protein assembly, we capture the many-body solvent motions governing the assembly process, identify the variables of classical nucleation theory, uncover the folding mechanism at different levels of resolution and reveal competing assembly pathways. The mechanistic descriptions are transferable across thermodynamic states and chemical space.

Document type Article
Note With supplementary files.
Language English
Related dataset Machine-guided path sampling to discover mechanisms of molecular self-organization (Training and validation data)
Published at https://doi.org/10.1038/s43588-023-00428-z
Other links https://www.scopus.com/pages/publications/85153403611
Downloads
s43588-023-00428-z (Final published version)
Supplementary materials
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