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Combining Force Fields and Neural Networks for an Accurate Representation of Chemically Diverse Molecular Interactions

[Image: see text] A key goal of molecular modeling is the accurate reproduction of the true quantum mechanical potential energy of arbitrary molecular ensembles with a tractable classical approximation. The challenges are that analytical expressions found in general purpose force fields struggle to...

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Autores principales: Illarionov, Alexey, Sakipov, Serzhan, Pereyaslavets, Leonid, Kurnikov, Igor V., Kamath, Ganesh, Butin, Oleg, Voronina, Ekaterina, Ivahnenko, Ilya, Leontyev, Igor, Nawrocki, Grzegorz, Darkhovskiy, Mikhail, Olevanov, Michael, Cherniavskyi, Yevhen K., Lock, Christopher, Greenslade, Sean, Sankaranarayanan, Subramanian KRS, Kurnikova, Maria G., Potoff, Jeffrey, Kornberg, Roger D., Levitt, Michael, Fain, Boris
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2023
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10623557/
https://www.ncbi.nlm.nih.gov/pubmed/37856313
http://dx.doi.org/10.1021/jacs.3c07628
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author Illarionov, Alexey
Sakipov, Serzhan
Pereyaslavets, Leonid
Kurnikov, Igor V.
Kamath, Ganesh
Butin, Oleg
Voronina, Ekaterina
Ivahnenko, Ilya
Leontyev, Igor
Nawrocki, Grzegorz
Darkhovskiy, Mikhail
Olevanov, Michael
Cherniavskyi, Yevhen K.
Lock, Christopher
Greenslade, Sean
Sankaranarayanan, Subramanian KRS
Kurnikova, Maria G.
Potoff, Jeffrey
Kornberg, Roger D.
Levitt, Michael
Fain, Boris
author_facet Illarionov, Alexey
Sakipov, Serzhan
Pereyaslavets, Leonid
Kurnikov, Igor V.
Kamath, Ganesh
Butin, Oleg
Voronina, Ekaterina
Ivahnenko, Ilya
Leontyev, Igor
Nawrocki, Grzegorz
Darkhovskiy, Mikhail
Olevanov, Michael
Cherniavskyi, Yevhen K.
Lock, Christopher
Greenslade, Sean
Sankaranarayanan, Subramanian KRS
Kurnikova, Maria G.
Potoff, Jeffrey
Kornberg, Roger D.
Levitt, Michael
Fain, Boris
author_sort Illarionov, Alexey
collection PubMed
description [Image: see text] A key goal of molecular modeling is the accurate reproduction of the true quantum mechanical potential energy of arbitrary molecular ensembles with a tractable classical approximation. The challenges are that analytical expressions found in general purpose force fields struggle to faithfully represent the intermolecular quantum potential energy surface at close distances and in strong interaction regimes; that the more accurate neural network approximations do not capture crucial physics concepts, e.g., nonadditive inductive contributions and application of electric fields; and that the ultra-accurate narrowly targeted models have difficulty generalizing to the entire chemical space. We therefore designed a hybrid wide-coverage intermolecular interaction model consisting of an analytically polarizable force field combined with a short-range neural network correction for the total intermolecular interaction energy. Here, we describe the methodology and apply the model to accurately determine the properties of water, the free energy of solvation of neutral and charged molecules, and the binding free energy of ligands to proteins. The correction is subtyped for distinct chemical species to match the underlying force field, to segment and reduce the amount of quantum training data, and to increase accuracy and computational speed. For the systems considered, the hybrid ab initio parametrized Hamiltonian reproduces the two-body dimer quantum mechanics (QM) energies to within 0.03 kcal/mol and the nonadditive many-molecule contributions to within 2%. Simulations of molecular systems using this interaction model run at speeds of several nanoseconds per day.
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spelling pubmed-106235572023-11-04 Combining Force Fields and Neural Networks for an Accurate Representation of Chemically Diverse Molecular Interactions Illarionov, Alexey Sakipov, Serzhan Pereyaslavets, Leonid Kurnikov, Igor V. Kamath, Ganesh Butin, Oleg Voronina, Ekaterina Ivahnenko, Ilya Leontyev, Igor Nawrocki, Grzegorz Darkhovskiy, Mikhail Olevanov, Michael Cherniavskyi, Yevhen K. Lock, Christopher Greenslade, Sean Sankaranarayanan, Subramanian KRS Kurnikova, Maria G. Potoff, Jeffrey Kornberg, Roger D. Levitt, Michael Fain, Boris J Am Chem Soc [Image: see text] A key goal of molecular modeling is the accurate reproduction of the true quantum mechanical potential energy of arbitrary molecular ensembles with a tractable classical approximation. The challenges are that analytical expressions found in general purpose force fields struggle to faithfully represent the intermolecular quantum potential energy surface at close distances and in strong interaction regimes; that the more accurate neural network approximations do not capture crucial physics concepts, e.g., nonadditive inductive contributions and application of electric fields; and that the ultra-accurate narrowly targeted models have difficulty generalizing to the entire chemical space. We therefore designed a hybrid wide-coverage intermolecular interaction model consisting of an analytically polarizable force field combined with a short-range neural network correction for the total intermolecular interaction energy. Here, we describe the methodology and apply the model to accurately determine the properties of water, the free energy of solvation of neutral and charged molecules, and the binding free energy of ligands to proteins. The correction is subtyped for distinct chemical species to match the underlying force field, to segment and reduce the amount of quantum training data, and to increase accuracy and computational speed. For the systems considered, the hybrid ab initio parametrized Hamiltonian reproduces the two-body dimer quantum mechanics (QM) energies to within 0.03 kcal/mol and the nonadditive many-molecule contributions to within 2%. Simulations of molecular systems using this interaction model run at speeds of several nanoseconds per day. American Chemical Society 2023-10-19 /pmc/articles/PMC10623557/ /pubmed/37856313 http://dx.doi.org/10.1021/jacs.3c07628 Text en © 2023 The Authors. Published by American Chemical Society https://creativecommons.org/licenses/by-nc-nd/4.0/Permits non-commercial access and re-use, provided that author attribution and integrity are maintained; but does not permit creation of adaptations or other derivative works (https://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Illarionov, Alexey
Sakipov, Serzhan
Pereyaslavets, Leonid
Kurnikov, Igor V.
Kamath, Ganesh
Butin, Oleg
Voronina, Ekaterina
Ivahnenko, Ilya
Leontyev, Igor
Nawrocki, Grzegorz
Darkhovskiy, Mikhail
Olevanov, Michael
Cherniavskyi, Yevhen K.
Lock, Christopher
Greenslade, Sean
Sankaranarayanan, Subramanian KRS
Kurnikova, Maria G.
Potoff, Jeffrey
Kornberg, Roger D.
Levitt, Michael
Fain, Boris
Combining Force Fields and Neural Networks for an Accurate Representation of Chemically Diverse Molecular Interactions
title Combining Force Fields and Neural Networks for an Accurate Representation of Chemically Diverse Molecular Interactions
title_full Combining Force Fields and Neural Networks for an Accurate Representation of Chemically Diverse Molecular Interactions
title_fullStr Combining Force Fields and Neural Networks for an Accurate Representation of Chemically Diverse Molecular Interactions
title_full_unstemmed Combining Force Fields and Neural Networks for an Accurate Representation of Chemically Diverse Molecular Interactions
title_short Combining Force Fields and Neural Networks for an Accurate Representation of Chemically Diverse Molecular Interactions
title_sort combining force fields and neural networks for an accurate representation of chemically diverse molecular interactions
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10623557/
https://www.ncbi.nlm.nih.gov/pubmed/37856313
http://dx.doi.org/10.1021/jacs.3c07628
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