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Reweighting from Molecular Mechanics Force Fields to the ANI-2x Neural Network Potential.
Tkaczyk, Sara; Karwounopoulos, Johannes; Schöller, Andreas; Woodcock, H Lee; Langer, Thierry; Boresch, Stefan; Wieder, Marcus.
Afiliação
  • Tkaczyk S; Department of Pharmaceutical Sciences, Pharmaceutical Chemistry Division, University of Vienna, Josef-Holaubek-Platz 2, 1090 Vienna, Austria.
  • Karwounopoulos J; Vienna Doctoral School of Pharmaceutical, Nutritional and Sport Sciences (PhaNuSpo), University of Vienna, 1090 Vienna, Austria.
  • Schöller A; Faculty of Chemistry, Institute of Computational Biological Chemistry, University of Vienna, Währingerstrasse 17, 1090 Vienna, Austria.
  • Woodcock HL; Vienna Doctoral School of Chemistry (DoSChem), University of Vienna, Währingerstrasse 42, 1090 Vienna, Austria.
  • Langer T; Faculty of Chemistry, Institute of Computational Biological Chemistry, University of Vienna, Währingerstrasse 17, 1090 Vienna, Austria.
  • Boresch S; Vienna Doctoral School of Chemistry (DoSChem), University of Vienna, Währingerstrasse 42, 1090 Vienna, Austria.
  • Wieder M; Department of Chemistry, University of South Florida, 4202 E. Fowler Ave., CHE205, Tampa, Florida 33620-5250, United States.
J Chem Theory Comput ; 20(7): 2719-2728, 2024 Apr 09.
Article em En | MEDLINE | ID: mdl-38527958
ABSTRACT
To achieve chemical accuracy in free energy calculations, it is necessary to accurately describe the system's potential energy surface and efficiently sample configurations from its Boltzmann distribution. While neural network potentials (NNPs) have shown significantly higher accuracy than classical molecular mechanics (MM) force fields, they have a limited range of applicability and are considerably slower than MM potentials, often by orders of magnitude. To address this challenge, Rufa et al. [Rufa et al. bioRxiv 2020, 10.1101/2020.07.29.227959.] suggested a two-stage approach that uses a fast and established MM alchemical energy protocol, followed by reweighting the results using NNPs, known as endstate correction or indirect free energy calculation. This study systematically investigates the accuracy and robustness of reweighting from an MM reference to a neural network target potential (ANI-2x) for an established data set in vacuum, using single-step free-energy perturbation (FEP) and nonequilibrium (NEQ) switching simulation. We assess the influence of longer switching lengths and the impact of slow degrees of freedom on outliers in the work distribution and compare the results to those of multistate equilibrium free energy simulations. Our results demonstrate that free energy calculations between NNPs and MM potentials should be preferably performed using NEQ switching simulations to obtain accurate free energy estimates. NEQ switching simulations between the MM potentials and NNPs are efficient, robust, and trivial to implement.

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article