Cargando…

Scalable hybrid deep neural networks/polarizable potentials biomolecular simulations including long-range effects

Deep-HP is a scalable extension of the Tinker-HP multi-GPU molecular dynamics (MD) package enabling the use of Pytorch/TensorFlow Deep Neural Network (DNN) models. Deep-HP increases DNNs' MD capabilities by orders of magnitude offering access to ns simulations for 100k-atom biosystems while off...

Descripción completa

Detalles Bibliográficos
Autores principales: Jaffrelot Inizan, Théo, Plé, Thomas, Adjoua, Olivier, Ren, Pengyu, Gökcan, Hatice, Isayev, Olexandr, Lagardère, Louis, Piquemal, Jean-Philip
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Royal Society of Chemistry 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10208042/
https://www.ncbi.nlm.nih.gov/pubmed/37234902
http://dx.doi.org/10.1039/d2sc04815a
_version_ 1785046586861027328
author Jaffrelot Inizan, Théo
Plé, Thomas
Adjoua, Olivier
Ren, Pengyu
Gökcan, Hatice
Isayev, Olexandr
Lagardère, Louis
Piquemal, Jean-Philip
author_facet Jaffrelot Inizan, Théo
Plé, Thomas
Adjoua, Olivier
Ren, Pengyu
Gökcan, Hatice
Isayev, Olexandr
Lagardère, Louis
Piquemal, Jean-Philip
author_sort Jaffrelot Inizan, Théo
collection PubMed
description Deep-HP is a scalable extension of the Tinker-HP multi-GPU molecular dynamics (MD) package enabling the use of Pytorch/TensorFlow Deep Neural Network (DNN) models. Deep-HP increases DNNs' MD capabilities by orders of magnitude offering access to ns simulations for 100k-atom biosystems while offering the possibility of coupling DNNs to any classical (FFs) and many-body polarizable (PFFs) force fields. It allows therefore the introduction of the ANI-2X/AMOEBA hybrid polarizable potential designed for ligand binding studies where solvent–solvent and solvent–solute interactions are computed with the AMOEBA PFF while solute–solute ones are computed by the ANI-2X DNN. ANI-2X/AMOEBA explicitly includes AMOEBA's physical long-range interactions via an efficient Particle Mesh Ewald implementation while preserving ANI-2X's solute short-range quantum mechanical accuracy. The DNN/PFF partition can be user-defined allowing for hybrid simulations to include key ingredients of biosimulation such as polarizable solvents, polarizable counter ions, etc.… ANI-2X/AMOEBA is accelerated using a multiple-timestep strategy focusing on the model's contributions to low-frequency modes of nuclear forces. It primarily evaluates AMOEBA forces while including ANI-2X ones only via correction-steps resulting in an order of magnitude acceleration over standard Velocity Verlet integration. Simulating more than 10 μs, we compute charged/uncharged ligand solvation free energies in 4 solvents, and absolute binding free energies of host–guest complexes from SAMPL challenges. ANI-2X/AMOEBA average errors are discussed in terms of statistical uncertainty and appear in the range of chemical accuracy compared to experiment. The availability of the Deep-HP computational platform opens the path towards large-scale hybrid DNN simulations, at force-field cost, in biophysics and drug discovery.
format Online
Article
Text
id pubmed-10208042
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher The Royal Society of Chemistry
record_format MEDLINE/PubMed
spelling pubmed-102080422023-05-25 Scalable hybrid deep neural networks/polarizable potentials biomolecular simulations including long-range effects Jaffrelot Inizan, Théo Plé, Thomas Adjoua, Olivier Ren, Pengyu Gökcan, Hatice Isayev, Olexandr Lagardère, Louis Piquemal, Jean-Philip Chem Sci Chemistry Deep-HP is a scalable extension of the Tinker-HP multi-GPU molecular dynamics (MD) package enabling the use of Pytorch/TensorFlow Deep Neural Network (DNN) models. Deep-HP increases DNNs' MD capabilities by orders of magnitude offering access to ns simulations for 100k-atom biosystems while offering the possibility of coupling DNNs to any classical (FFs) and many-body polarizable (PFFs) force fields. It allows therefore the introduction of the ANI-2X/AMOEBA hybrid polarizable potential designed for ligand binding studies where solvent–solvent and solvent–solute interactions are computed with the AMOEBA PFF while solute–solute ones are computed by the ANI-2X DNN. ANI-2X/AMOEBA explicitly includes AMOEBA's physical long-range interactions via an efficient Particle Mesh Ewald implementation while preserving ANI-2X's solute short-range quantum mechanical accuracy. The DNN/PFF partition can be user-defined allowing for hybrid simulations to include key ingredients of biosimulation such as polarizable solvents, polarizable counter ions, etc.… ANI-2X/AMOEBA is accelerated using a multiple-timestep strategy focusing on the model's contributions to low-frequency modes of nuclear forces. It primarily evaluates AMOEBA forces while including ANI-2X ones only via correction-steps resulting in an order of magnitude acceleration over standard Velocity Verlet integration. Simulating more than 10 μs, we compute charged/uncharged ligand solvation free energies in 4 solvents, and absolute binding free energies of host–guest complexes from SAMPL challenges. ANI-2X/AMOEBA average errors are discussed in terms of statistical uncertainty and appear in the range of chemical accuracy compared to experiment. The availability of the Deep-HP computational platform opens the path towards large-scale hybrid DNN simulations, at force-field cost, in biophysics and drug discovery. The Royal Society of Chemistry 2023-04-04 /pmc/articles/PMC10208042/ /pubmed/37234902 http://dx.doi.org/10.1039/d2sc04815a Text en This journal is © The Royal Society of Chemistry https://creativecommons.org/licenses/by/3.0/
spellingShingle Chemistry
Jaffrelot Inizan, Théo
Plé, Thomas
Adjoua, Olivier
Ren, Pengyu
Gökcan, Hatice
Isayev, Olexandr
Lagardère, Louis
Piquemal, Jean-Philip
Scalable hybrid deep neural networks/polarizable potentials biomolecular simulations including long-range effects
title Scalable hybrid deep neural networks/polarizable potentials biomolecular simulations including long-range effects
title_full Scalable hybrid deep neural networks/polarizable potentials biomolecular simulations including long-range effects
title_fullStr Scalable hybrid deep neural networks/polarizable potentials biomolecular simulations including long-range effects
title_full_unstemmed Scalable hybrid deep neural networks/polarizable potentials biomolecular simulations including long-range effects
title_short Scalable hybrid deep neural networks/polarizable potentials biomolecular simulations including long-range effects
title_sort scalable hybrid deep neural networks/polarizable potentials biomolecular simulations including long-range effects
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10208042/
https://www.ncbi.nlm.nih.gov/pubmed/37234902
http://dx.doi.org/10.1039/d2sc04815a
work_keys_str_mv AT jaffrelotinizantheo scalablehybriddeepneuralnetworkspolarizablepotentialsbiomolecularsimulationsincludinglongrangeeffects
AT plethomas scalablehybriddeepneuralnetworkspolarizablepotentialsbiomolecularsimulationsincludinglongrangeeffects
AT adjouaolivier scalablehybriddeepneuralnetworkspolarizablepotentialsbiomolecularsimulationsincludinglongrangeeffects
AT renpengyu scalablehybriddeepneuralnetworkspolarizablepotentialsbiomolecularsimulationsincludinglongrangeeffects
AT gokcanhatice scalablehybriddeepneuralnetworkspolarizablepotentialsbiomolecularsimulationsincludinglongrangeeffects
AT isayevolexandr scalablehybriddeepneuralnetworkspolarizablepotentialsbiomolecularsimulationsincludinglongrangeeffects
AT lagarderelouis scalablehybriddeepneuralnetworkspolarizablepotentialsbiomolecularsimulationsincludinglongrangeeffects
AT piquemaljeanphilip scalablehybriddeepneuralnetworkspolarizablepotentialsbiomolecularsimulationsincludinglongrangeeffects