Generation of Quantum Configurational Ensembles Using Approximate Potentials.
João MoradoPaul N MortensonJ Willem M NissinkMarcel L VerdonkRichard A WardJonathan W EssexChris-Kriton SkylarisPublished in: Journal of chemical theory and computation (2021)
Conformational analysis is of paramount importance in drug design: it is crucial to determine pharmacological properties, understand molecular recognition processes, and characterize the conformations of ligands when unbound. Molecular Mechanics (MM) simulation methods, such as Monte Carlo (MC) and molecular dynamics (MD), are usually employed to generate ensembles of structures due to their ability to extensively sample the conformational space of molecules. The accuracy of these MM-based schemes strongly depends on the functional form of the force field (FF) and its parametrization, components that often hinder their performance. High-level methods, such as ab initio MD, provide reliable structural information but are still too computationally expensive to allow for extensive sampling. Therefore, to overcome these limitations, we present a multilevel MC method that is capable of generating quantum configurational ensembles while keeping the computational cost at a minimum. We show that FF reparametrization is an efficient route to generate FFs that reproduce QM results more closely, which, in turn, can be used as low-cost models to achieve the gold standard QM accuracy. We demonstrate that the MC acceptance rate is strongly correlated with various phase space overlap measurements and that it constitutes a robust metric to evaluate the similarity between the MM and QM levels of theory. As a more advanced application, we present a self-parametrizing version of the algorithm, which combines sampling and FF parametrization in one scheme, and apply the methodology to generate the QM/MM distribution of a ligand in aqueous solution.
Keyphrases
- molecular dynamics
- low cost
- density functional theory
- monte carlo
- aqueous solution
- single molecule
- machine learning
- deep learning
- high resolution
- living cells
- emergency department
- sensitive detection
- health information
- neural network
- molecular dynamics simulations
- quantum dots
- mass spectrometry
- adverse drug
- virtual reality