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Assessing the Accuracy and Efficiency of Free Energy Differences Obtained from Reweighted Flow-Based Probabilistic Generative Models.
Olehnovics, Edgar; Liu, Yifei Michelle; Mehio, Nada; Sheikh, Ahmad Y; Shirts, Michael R; Salvalaglio, Matteo.
Afiliação
  • Olehnovics E; Thomas Young Centre and Department of Chemical Engineering, University College London, London WC1E 7JE, U.K.
  • Liu YM; Molecular Profiling and Drug Delivery, Research & Development, AbbVie Bioresearch Center, Worcester, Massachusetts 01605, United States.
  • Mehio N; Molecular Profiling and Drug Delivery, Research & Development, AbbVie Inc, North Chicago, Illinois 60064, United States.
  • Sheikh AY; Molecular Profiling and Drug Delivery, Research & Development, AbbVie Inc, North Chicago, Illinois 60064, United States.
  • Shirts MR; University of Colorado Boulder, Boulder, Colorado 80309, United States.
  • Salvalaglio M; Thomas Young Centre and Department of Chemical Engineering, University College London, London WC1E 7JE, U.K.
J Chem Theory Comput ; 20(14): 5913-5922, 2024 Jul 23.
Article em En | MEDLINE | ID: mdl-38984825
ABSTRACT
Computing free energy differences between metastable states characterized by nonoverlapping Boltzmann distributions is often a computationally intensive endeavor, usually requiring chains of intermediate states to connect them. Targeted free energy perturbation (TFEP) can significantly lower the computational cost of FEP calculations by choosing a set of invertible maps used to directly connect the distributions of interest, achieving the necessary statistically significant overlaps without sampling any intermediate states. Probabilistic generative models (PGMs) based on normalizing flow architectures can make it much easier via machine learning to train invertible maps needed for TFEP. However, the accuracy and applicability of approaches based on empirically learned maps depend crucially on the choice of reweighting method adopted to estimate the free energy differences. In this work, we assess the accuracy, rate of convergence, and data efficiency of different free energy estimators, including exponential averaging, Bennett acceptance ratio (BAR), and multistate Bennett acceptance ratio (MBAR), in reweighting PGMs trained by maximum likelihood on limited amounts of molecular dynamics data sampled only from end-states of interest. We carry out the comparisons on a set of simple but representative case studies, including conformational ensembles of alanine dipeptide and ibuprofen. Our results indicate that BAR and MBAR are both data efficient and robust, even in the presence of significant model overfitting in the generation of invertible maps. This analysis can serve as a stepping stone for the deployment of efficient and quantitatively accurate ML-based free energy calculation methods in complex systems.

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