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Deep learning of dynamically responsive chemical Hamiltonians with semiempirical quantum mechanics

Conventional machine-learning (ML) models in computational chemistry learn to directly predict molecular properties using quantum chemistry only for reference data. While these heuristic ML methods show quantum-level accuracy with speeds several orders of magnitude faster than traditional quantum ch...

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Autores principales: Zhou, Guoqing, Lubbers, Nicholas, Barros, Kipton, Tretiak, Sergei, Nebgen, Benjamin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: National Academy of Sciences 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9271210/
https://www.ncbi.nlm.nih.gov/pubmed/35776544
http://dx.doi.org/10.1073/pnas.2120333119
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author Zhou, Guoqing
Lubbers, Nicholas
Barros, Kipton
Tretiak, Sergei
Nebgen, Benjamin
author_facet Zhou, Guoqing
Lubbers, Nicholas
Barros, Kipton
Tretiak, Sergei
Nebgen, Benjamin
author_sort Zhou, Guoqing
collection PubMed
description Conventional machine-learning (ML) models in computational chemistry learn to directly predict molecular properties using quantum chemistry only for reference data. While these heuristic ML methods show quantum-level accuracy with speeds several orders of magnitude faster than traditional quantum chemistry methods, they suffer from poor extensibility and transferability; i.e., their accuracy degrades on large or new chemical systems. Incorporating quantum chemistry frameworks into the ML models directly solves this problem. Here we take the structure of semiempirical quantum mechanics (SEQM) methods to construct dynamically responsive Hamiltonians. SEQM methods use empirical parameters fitted to experimental properties to construct reduced-order Hamiltonians, facilitating much faster calculations than ab initio methods but with compromised accuracy. By replacing these static parameters with machine-learned dynamic values inferred from the local environment, we greatly improve the accuracy of the SEQM methods. Trained on molecular energies and atomic forces, these dynamically generated Hamiltonian parameters show a strong correlation with atomic hybridization and bonding. Trained with only about 60,000 small organic molecular conformers, the resulting model retains interpretability, extensibility, and transferability when testing on much larger chemical systems and predicting various molecular properties. Overall, this work demonstrates the virtues of incorporating physics-based descriptions with ML to develop models that are simultaneously accurate, transferable, and interpretable.
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spelling pubmed-92712102022-07-11 Deep learning of dynamically responsive chemical Hamiltonians with semiempirical quantum mechanics Zhou, Guoqing Lubbers, Nicholas Barros, Kipton Tretiak, Sergei Nebgen, Benjamin Proc Natl Acad Sci U S A Physical Sciences Conventional machine-learning (ML) models in computational chemistry learn to directly predict molecular properties using quantum chemistry only for reference data. While these heuristic ML methods show quantum-level accuracy with speeds several orders of magnitude faster than traditional quantum chemistry methods, they suffer from poor extensibility and transferability; i.e., their accuracy degrades on large or new chemical systems. Incorporating quantum chemistry frameworks into the ML models directly solves this problem. Here we take the structure of semiempirical quantum mechanics (SEQM) methods to construct dynamically responsive Hamiltonians. SEQM methods use empirical parameters fitted to experimental properties to construct reduced-order Hamiltonians, facilitating much faster calculations than ab initio methods but with compromised accuracy. By replacing these static parameters with machine-learned dynamic values inferred from the local environment, we greatly improve the accuracy of the SEQM methods. Trained on molecular energies and atomic forces, these dynamically generated Hamiltonian parameters show a strong correlation with atomic hybridization and bonding. Trained with only about 60,000 small organic molecular conformers, the resulting model retains interpretability, extensibility, and transferability when testing on much larger chemical systems and predicting various molecular properties. Overall, this work demonstrates the virtues of incorporating physics-based descriptions with ML to develop models that are simultaneously accurate, transferable, and interpretable. National Academy of Sciences 2022-07-01 2022-07-05 /pmc/articles/PMC9271210/ /pubmed/35776544 http://dx.doi.org/10.1073/pnas.2120333119 Text en Copyright © 2022 the Author(s). Published by PNAS. https://creativecommons.org/licenses/by/4.0/This open access article is distributed under Creative Commons Attribution License 4.0 (CC BY) (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Physical Sciences
Zhou, Guoqing
Lubbers, Nicholas
Barros, Kipton
Tretiak, Sergei
Nebgen, Benjamin
Deep learning of dynamically responsive chemical Hamiltonians with semiempirical quantum mechanics
title Deep learning of dynamically responsive chemical Hamiltonians with semiempirical quantum mechanics
title_full Deep learning of dynamically responsive chemical Hamiltonians with semiempirical quantum mechanics
title_fullStr Deep learning of dynamically responsive chemical Hamiltonians with semiempirical quantum mechanics
title_full_unstemmed Deep learning of dynamically responsive chemical Hamiltonians with semiempirical quantum mechanics
title_short Deep learning of dynamically responsive chemical Hamiltonians with semiempirical quantum mechanics
title_sort deep learning of dynamically responsive chemical hamiltonians with semiempirical quantum mechanics
topic Physical Sciences
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9271210/
https://www.ncbi.nlm.nih.gov/pubmed/35776544
http://dx.doi.org/10.1073/pnas.2120333119
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