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Reweighted Manifold Learning of Collective Variables from Enhanced Sampling Simulations

[Image: see text] Enhanced sampling methods are indispensable in computational chemistry and physics, where atomistic simulations cannot exhaustively sample the high-dimensional configuration space of dynamical systems due to the sampling problem. A class of such enhanced sampling methods works by i...

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Autores principales: Rydzewski, Jakub, Chen, Ming, Ghosh, Tushar K., Valsson, Omar
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2022
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9753586/
https://www.ncbi.nlm.nih.gov/pubmed/36367826
http://dx.doi.org/10.1021/acs.jctc.2c00873
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author Rydzewski, Jakub
Chen, Ming
Ghosh, Tushar K.
Valsson, Omar
author_facet Rydzewski, Jakub
Chen, Ming
Ghosh, Tushar K.
Valsson, Omar
author_sort Rydzewski, Jakub
collection PubMed
description [Image: see text] Enhanced sampling methods are indispensable in computational chemistry and physics, where atomistic simulations cannot exhaustively sample the high-dimensional configuration space of dynamical systems due to the sampling problem. A class of such enhanced sampling methods works by identifying a few slow degrees of freedom, termed collective variables (CVs), and enhancing the sampling along these CVs. Selecting CVs to analyze and drive the sampling is not trivial and often relies on chemical intuition. Despite routinely circumventing this issue using manifold learning to estimate CVs directly from standard simulations, such methods cannot provide mappings to a low-dimensional manifold from enhanced sampling simulations, as the geometry and density of the learned manifold are biased. Here, we address this crucial issue and provide a general reweighting framework based on anisotropic diffusion maps for manifold learning that takes into account that the learning data set is sampled from a biased probability distribution. We consider manifold learning methods based on constructing a Markov chain describing transition probabilities between high-dimensional samples. We show that our framework reverts the biasing effect, yielding CVs that correctly describe the equilibrium density. This advancement enables the construction of low-dimensional CVs using manifold learning directly from the data generated by enhanced sampling simulations. We call our framework reweighted manifold learning. We show that it can be used in many manifold learning techniques on data from both standard and enhanced sampling simulations.
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spelling pubmed-97535862022-12-16 Reweighted Manifold Learning of Collective Variables from Enhanced Sampling Simulations Rydzewski, Jakub Chen, Ming Ghosh, Tushar K. Valsson, Omar J Chem Theory Comput [Image: see text] Enhanced sampling methods are indispensable in computational chemistry and physics, where atomistic simulations cannot exhaustively sample the high-dimensional configuration space of dynamical systems due to the sampling problem. A class of such enhanced sampling methods works by identifying a few slow degrees of freedom, termed collective variables (CVs), and enhancing the sampling along these CVs. Selecting CVs to analyze and drive the sampling is not trivial and often relies on chemical intuition. Despite routinely circumventing this issue using manifold learning to estimate CVs directly from standard simulations, such methods cannot provide mappings to a low-dimensional manifold from enhanced sampling simulations, as the geometry and density of the learned manifold are biased. Here, we address this crucial issue and provide a general reweighting framework based on anisotropic diffusion maps for manifold learning that takes into account that the learning data set is sampled from a biased probability distribution. We consider manifold learning methods based on constructing a Markov chain describing transition probabilities between high-dimensional samples. We show that our framework reverts the biasing effect, yielding CVs that correctly describe the equilibrium density. This advancement enables the construction of low-dimensional CVs using manifold learning directly from the data generated by enhanced sampling simulations. We call our framework reweighted manifold learning. We show that it can be used in many manifold learning techniques on data from both standard and enhanced sampling simulations. American Chemical Society 2022-11-11 2022-12-13 /pmc/articles/PMC9753586/ /pubmed/36367826 http://dx.doi.org/10.1021/acs.jctc.2c00873 Text en © 2022 The Authors. Published by American Chemical Society https://creativecommons.org/licenses/by/4.0/Permits the broadest form of re-use including for commercial purposes, provided that author attribution and integrity are maintained (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Rydzewski, Jakub
Chen, Ming
Ghosh, Tushar K.
Valsson, Omar
Reweighted Manifold Learning of Collective Variables from Enhanced Sampling Simulations
title Reweighted Manifold Learning of Collective Variables from Enhanced Sampling Simulations
title_full Reweighted Manifold Learning of Collective Variables from Enhanced Sampling Simulations
title_fullStr Reweighted Manifold Learning of Collective Variables from Enhanced Sampling Simulations
title_full_unstemmed Reweighted Manifold Learning of Collective Variables from Enhanced Sampling Simulations
title_short Reweighted Manifold Learning of Collective Variables from Enhanced Sampling Simulations
title_sort reweighted manifold learning of collective variables from enhanced sampling simulations
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9753586/
https://www.ncbi.nlm.nih.gov/pubmed/36367826
http://dx.doi.org/10.1021/acs.jctc.2c00873
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