Literature DB >> 30134694

Reweighted autoencoded variational Bayes for enhanced sampling (RAVE).

João Marcelo Lamim Ribeiro1, Pablo Bravo2, Yihang Wang3, Pratyush Tiwary1.   

Abstract

Here we propose the reweighted autoencoded variational Bayes for enhanced sampling (RAVE) method, a new iterative scheme that uses the deep learning framework of variational autoencoders to enhance sampling in molecular simulations. RAVE involves iterations between molecular simulations and deep learning in order to produce an increasingly accurate probability distribution along a low-dimensional latent space that captures the key features of the molecular simulation trajectory. Using the Kullback-Leibler divergence between this latent space distribution and the distribution of various trial reaction coordinates sampled from the molecular simulation, RAVE determines an optimum, yet nonetheless physically interpretable, reaction coordinate and optimum probability distribution. Both then directly serve as the biasing protocol for a new biased simulation, which is once again fed into the deep learning module with appropriate weights accounting for the bias, the procedure continuing until estimates of desirable thermodynamic observables are converged. Unlike recent methods using deep learning for enhanced sampling purposes, RAVE stands out in that (a) it naturally produces a physically interpretable reaction coordinate, (b) is independent of existing enhanced sampling protocols to enhance the fluctuations along the latent space identified via deep learning, and (c) it provides the ability to easily filter out spurious solutions learned by the deep learning procedure. The usefulness and reliability of RAVE is demonstrated by applying it to model potentials of increasing complexity, including computation of the binding free energy profile for a hydrophobic ligand-substrate system in explicit water with dissociation time of more than 3 min, in computer time at least twenty times less than that needed for umbrella sampling or metadynamics.

Entities:  

Year:  2018        PMID: 30134694     DOI: 10.1063/1.5025487

Source DB:  PubMed          Journal:  J Chem Phys        ISSN: 0021-9606            Impact factor:   3.488


  26 in total

Review 1.  Machine Learning Force Fields and Coarse-Grained Variables in Molecular Dynamics: Application to Materials and Biological Systems.

Authors:  Paraskevi Gkeka; Gabriel Stoltz; Amir Barati Farimani; Zineb Belkacemi; Michele Ceriotti; John D Chodera; Aaron R Dinner; Andrew L Ferguson; Jean-Bernard Maillet; Hervé Minoux; Christine Peter; Fabio Pietrucci; Ana Silveira; Alexandre Tkatchenko; Zofia Trstanova; Rafal Wiewiora; Tony Lelièvre
Journal:  J Chem Theory Comput       Date:  2020-07-16       Impact factor: 6.006

2.  Characterizing Protein-Ligand Binding Using Atomistic Simulation and Machine Learning: Application to Drug Resistance in HIV-1 Protease.

Authors:  Troy W Whitfield; Debra A Ragland; Konstantin B Zeldovich; Celia A Schiffer
Journal:  J Chem Theory Comput       Date:  2020-01-16       Impact factor: 6.006

3.  Neural networks-based variationally enhanced sampling.

Authors:  Luigi Bonati; Yue-Yu Zhang; Michele Parrinello
Journal:  Proc Natl Acad Sci U S A       Date:  2019-08-15       Impact factor: 11.205

4.  Variational embedding of protein folding simulations using Gaussian mixture variational autoencoders.

Authors:  Mahdi Ghorbani; Samarjeet Prasad; Jeffery B Klauda; Bernard R Brooks
Journal:  J Chem Phys       Date:  2021-11-21       Impact factor: 3.488

5.  Deep learning the slow modes for rare events sampling.

Authors:  Luigi Bonati; GiovanniMaria Piccini; Michele Parrinello
Journal:  Proc Natl Acad Sci U S A       Date:  2021-11-02       Impact factor: 11.205

Review 6.  Protein Function Analysis through Machine Learning.

Authors:  Chris Avery; John Patterson; Tyler Grear; Theodore Frater; Donald J Jacobs
Journal:  Biomolecules       Date:  2022-09-06

7.  The Next Frontier for Designing Switchable Proteins: Rational Enhancement of Kinetics.

Authors:  Anthony T Bogetti; Maria F Presti; Stewart N Loh; Lillian T Chong
Journal:  J Phys Chem B       Date:  2021-07-29       Impact factor: 2.991

8.  Unsupervised Learning Methods for Molecular Simulation Data.

Authors:  Aldo Glielmo; Brooke E Husic; Alex Rodriguez; Cecilia Clementi; Frank Noé; Alessandro Laio
Journal:  Chem Rev       Date:  2021-05-04       Impact factor: 60.622

9.  Confronting pitfalls of AI-augmented molecular dynamics using statistical physics.

Authors:  Shashank Pant; Zachary Smith; Yihang Wang; Emad Tajkhorshid; Pratyush Tiwary
Journal:  J Chem Phys       Date:  2020-12-21       Impact factor: 3.488

10.  WESTPA 2.0: High-Performance Upgrades for Weighted Ensemble Simulations and Analysis of Longer-Timescale Applications.

Authors:  John D Russo; She Zhang; Jeremy M G Leung; Anthony T Bogetti; Jeff P Thompson; Alex J DeGrave; Paul A Torrillo; A J Pratt; Kim F Wong; Junchao Xia; Jeremy Copperman; Joshua L Adelman; Matthew C Zwier; David N LeBard; Daniel M Zuckerman; Lillian T Chong
Journal:  J Chem Theory Comput       Date:  2022-01-19       Impact factor: 6.006

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