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Deep Learning Coordinate-Free Quantum Chemistry.
Matlock, Matthew K; Hoffman, Max; Dang, Na Le; Folmsbee, Dakota L; Langkamp, Luke A; Hutchison, Geoffrey R; Kumar, Neeraj; Sarullo, Kathryn; Swamidass, S Joshua.
Afiliação
  • Matlock MK; Department of Pathology and Immunology, Washington University in St. Louis, Saint Louis, Missouri 63130, United States.
  • Hoffman M; Department of Pathology and Immunology, Washington University in St. Louis, Saint Louis, Missouri 63130, United States.
  • Dang NL; Department of Pathology and Immunology, Washington University in St. Louis, Saint Louis, Missouri 63130, United States.
  • Folmsbee DL; Department of Chemistry, University of Pittsburgh, Pittsburgh, Pennsylvania 15260, United States.
  • Langkamp LA; Department of Chemistry, University of Pittsburgh, Pittsburgh, Pennsylvania 15260, United States.
  • Hutchison GR; Department of Chemistry, University of Pittsburgh, Pittsburgh, Pennsylvania 15260, United States.
  • Kumar N; Department of Chemical and Petroleum Engineering, University of Pittsburgh, Pittsburgh, Pennsylvania 15260, United States.
  • Sarullo K; Pacific Northwest National Laboratory, Computational Biology and Bioinformatics Group, Richland, Washington 99354, United States.
  • Swamidass SJ; Department of Pathology and Immunology, Washington University in St. Louis, Saint Louis, Missouri 63130, United States.
J Phys Chem A ; 125(40): 8978-8986, 2021 Oct 14.
Article em En | MEDLINE | ID: mdl-34609871
ABSTRACT
Computing quantum chemical properties of small molecules and polymers can provide insights valuable into physicists, chemists, and biologists when designing new materials, catalysts, biological probes, and drugs. Deep learning can compute quantum chemical properties accurately in a fraction of time required by commonly used methods such as density functional theory. Most current approaches to deep learning in quantum chemistry begin with geometric information from experimentally derived molecular structures or pre-calculated atom coordinates. These approaches have many useful applications, but they can be costly in time and computational resources. In this study, we demonstrate that accurate quantum chemical computations can be performed without geometric information by operating in the coordinate-free domain using deep learning on graph encodings. Coordinate-free methods rely only on molecular graphs, the connectivity of atoms and bonds, without atom coordinates or bond distances. We also find that the choice of graph-encoding architecture substantially affects the performance of these methods. The structures of these graph-encoding architectures provide an opportunity to probe an important, outstanding question in quantum mechanics what types of quantum chemical properties can be represented by local variable models? We find that Wave, a local variable model, accurately calculates the quantum chemical properties, while graph convolutional architectures require global variables. Furthermore, local variable Wave models outperform global variable graph convolution models on complex molecules with large, correlated systems.

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Prognostic_studies Idioma: En Revista: J Phys Chem A Assunto da revista: QUIMICA Ano de publicação: 2021 Tipo de documento: Article País de afiliação: Estados Unidos

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Prognostic_studies Idioma: En Revista: J Phys Chem A Assunto da revista: QUIMICA Ano de publicação: 2021 Tipo de documento: Article País de afiliação: Estados Unidos