Literature DB >> 33818085

Machine Learning in QM/MM Molecular Dynamics Simulations of Condensed-Phase Systems.

Lennard Böselt1, Moritz Thürlemann1, Sereina Riniker1.   

Abstract

Quantum mechanics/molecular mechanics (QM/MM) molecular dynamics (MD) simulations have been developed to simulate molecular systems, where an explicit description of changes in the electronic structure is necessary. However, QM/MM MD simulations are computationally expensive compared to fully classical simulations as all valence electrons are treated explicitly and a self-consistent field (SCF) procedure is required. Recently, approaches have been proposed to replace the QM description with machine-learned (ML) models. However, condensed-phase systems pose a challenge for these approaches due to long-range interactions. Here, we establish a workflow, which incorporates the MM environment as an element type in a high-dimensional neural network potential (HDNNP). The fitted HDNNP describes the potential-energy surface of the QM particles with an electrostatic embedding scheme. Thus, the MM particles feel a force from the polarized QM particles. To achieve chemical accuracy, we find that even simple systems require models with a strong gradient regularization, a large number of data points, and a substantial number of parameters. To address this issue, we extend our approach to a Δ-learning scheme, where the ML model learns the difference between a reference method (density functional theory (DFT)) and a cheaper semiempirical method (density functional tight binding (DFTB)). We show that such a scheme reaches the accuracy of the DFT reference method while requiring significantly less parameters. Furthermore, the Δ-learning scheme is capable of correctly incorporating long-range interactions within a cutoff of 1.4 nm. It is validated by performing MD simulations of retinoic acid in water and the interaction between S-adenoslymethioniat and cytosine in water. The presented results indicate that Δ-learning is a promising approach for (QM)ML/MM MD simulations of condensed-phase systems.

Entities:  

Year:  2021        PMID: 33818085     DOI: 10.1021/acs.jctc.0c01112

Source DB:  PubMed          Journal:  J Chem Theory Comput        ISSN: 1549-9618            Impact factor:   6.006


  7 in total

1.  Machine-Learning-Assisted Free Energy Simulation of Solution-Phase and Enzyme Reactions.

Authors:  Xiaoliang Pan; Junjie Yang; Richard Van; Evgeny Epifanovsky; Junming Ho; Jing Huang; Jingzhi Pu; Ye Mei; Kwangho Nam; Yihan Shao
Journal:  J Chem Theory Comput       Date:  2021-09-01       Impact factor: 6.578

Review 2.  Enhanced-Sampling Simulations for the Estimation of Ligand Binding Kinetics: Current Status and Perspective.

Authors:  Katya Ahmad; Andrea Rizzi; Riccardo Capelli; Davide Mandelli; Wenping Lyu; Paolo Carloni
Journal:  Front Mol Biosci       Date:  2022-06-08

3.  Affordable Ab Initio Path Integral for Thermodynamic Properties via Molecular Dynamics Simulations Using Semiempirical Reference Potential.

Authors:  Yuanfei Xue; Jia-Ning Wang; Wenxin Hu; Jun Zheng; Yongle Li; Xiaoliang Pan; Yan Mo; Yihan Shao; Lu Wang; Ye Mei
Journal:  J Phys Chem A       Date:  2021-12-12       Impact factor: 2.944

4.  Double proton transfer in hydrated formic acid dimer: Interplay of spatial symmetry and solvent-generated force on reactivity.

Authors:  Kai Töpfer; Silvan Käser; Markus Meuwly
Journal:  Phys Chem Chem Phys       Date:  2022-06-08       Impact factor: 3.945

5.  Reaction Path-Force Matching in Collective Variables: Determining Ab Initio QM/MM Free Energy Profiles by Fitting Mean Force.

Authors:  Bryant Kim; Ryan Snyder; Mulpuri Nagaraju; Yan Zhou; Pedro Ojeda-May; Seth Keeton; Mellisa Hege; Yihan Shao; Jingzhi Pu
Journal:  J Chem Theory Comput       Date:  2021-07-20       Impact factor: 6.578

6.  BuRNN: Buffer Region Neural Network Approach for Polarizable-Embedding Neural Network/Molecular Mechanics Simulations.

Authors:  Bettina Lier; Peter Poliak; Philipp Marquetand; Julia Westermayr; Chris Oostenbrink
Journal:  J Phys Chem Lett       Date:  2022-04-25       Impact factor: 6.888

7.  Mechanistic Insights into Enzyme Catalysis from Explaining Machine-Learned Quantum Mechanical and Molecular Mechanical Minimum Energy Pathways.

Authors:  Zilin Song; Francesco Trozzi; Hao Tian; Chao Yin; Peng Tao
Journal:  ACS Phys Chem Au       Date:  2022-05-18
  7 in total

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