Literature DB >> 26712642

A hierarchical Bayesian framework for force field selection in molecular dynamics simulations.

S Wu1, P Angelikopoulos1, C Papadimitriou2, R Moser3, P Koumoutsakos4.   

Abstract

We present a hierarchical Bayesian framework for the selection of force fields in molecular dynamics (MD) simulations. The framework associates the variability of the optimal parameters of the MD potentials under different environmental conditions with the corresponding variability in experimental data. The high computational cost associated with the hierarchical Bayesian framework is reduced by orders of magnitude through a parallelized Transitional Markov Chain Monte Carlo method combined with the Laplace Asymptotic Approximation. The suitability of the hierarchical approach is demonstrated by performing MD simulations with prescribed parameters to obtain data for transport coefficients under different conditions, which are then used to infer and evaluate the parameters of the MD model. We demonstrate the selection of MD models based on experimental data and verify that the hierarchical model can accurately quantify the uncertainty across experiments; improve the posterior probability density function estimation of the parameters, thus, improve predictions on future experiments; identify the most plausible force field to describe the underlying structure of a given dataset. The framework and associated software are applicable to a wide range of nanoscale simulations associated with experimental data with a hierarchical structure.
© 2015 The Author(s).

Keywords:  hierarchical Bayesian; model selection; molecular dynamics

Year:  2016        PMID: 26712642     DOI: 10.1098/rsta.2015.0032

Source DB:  PubMed          Journal:  Philos Trans A Math Phys Eng Sci        ISSN: 1364-503X            Impact factor:   4.226


  5 in total

1.  Toward Learned Chemical Perception of Force Field Typing Rules.

Authors:  Camila Zanette; Caitlin C Bannan; Christopher I Bayly; Josh Fass; Michael K Gilson; Michael R Shirts; John D Chodera; David L Mobley
Journal:  J Chem Theory Comput       Date:  2018-12-24       Impact factor: 6.006

2.  Data-Driven Mapping of Gas-Phase Quantum Calculations to General Force Field Lennard-Jones Parameters.

Authors:  Sophie M Kantonen; Hari S Muddana; Michael Schauperl; Niel M Henriksen; Lee-Ping Wang; Michael K Gilson
Journal:  J Chem Theory Comput       Date:  2020-01-17       Impact factor: 6.006

3.  Bayesian-Inference-Driven Model Parametrization and Model Selection for 2CLJQ Fluid Models.

Authors:  Owen C Madin; Simon Boothroyd; Richard A Messerly; Josh Fass; John D Chodera; Michael R Shirts
Journal:  J Chem Inf Model       Date:  2022-02-07       Impact factor: 6.162

4.  Data driven inference for the repulsive exponent of the Lennard-Jones potential in molecular dynamics simulations.

Authors:  Lina Kulakova; Georgios Arampatzis; Panagiotis Angelikopoulos; Panagiotis Hadjidoukas; Costas Papadimitriou; Petros Koumoutsakos
Journal:  Sci Rep       Date:  2017-11-29       Impact factor: 4.379

5.  Bayesian selection for coarse-grained models of liquid water.

Authors:  Julija Zavadlav; Georgios Arampatzis; Petros Koumoutsakos
Journal:  Sci Rep       Date:  2019-01-14       Impact factor: 4.379

  5 in total

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