Litcius/Paper detail

Dataset for quantum-mechanical exploration of conformers and solvent effects in large drug-like molecules

Leonardo Medrano Sandonas, Dries Van Rompaey, Alessio Fallani, Mathias Hilfiker, David F. Hahn, Laura Pérez‐Benito, Jonas Verhoeven, Gary Tresadern, Jörg K. Wegner, Hugo Ceulemans, Alexandre Tkatchenko

2024Scientific Data36 citationsDOIOpen Access PDF

Abstract

We here introduce the Aquamarine (AQM) dataset, an extensive quantum-mechanical (QM) dataset that contains the structural and electronic information of 59,783 low-and high-energy conformers of 1,653 molecules with a total number of atoms ranging from 2 to 92 (mean: 50.9), and containing up to 54 (mean: 28.2) non-hydrogen atoms. To gain insights into the solvent effects as well as collective dispersion interactions for drug-like molecules, we have performed QM calculations supplemented with a treatment of many-body dispersion (MBD) interactions of structures and properties in the gas phase and implicit water. Thus, AQM contains over 40 global and local physicochemical properties (including ground-state and response properties) per conformer computed at the tightly converged PBE0+MBD level of theory for gas-phase molecules, whereas PBE0+MBD with the modified Poisson-Boltzmann (MPB) model of water was used for solvated molecules. By addressing both molecule-solvent and dispersion interactions, AQM dataset can serve as a challenging benchmark for state-of-the-art machine learning methods for property modeling and de novo generation of large (solvated) molecules with pharmaceutical and biological relevance.

Topics & Concepts

Chemical physicsMoleculeConformational isomerismDispersion (optics)QuantumChemistryStatistical physicsSolvationComputational chemistryPhysicsQuantum mechanicsOrganic chemistryMachine Learning in Materials ScienceProtein Structure and DynamicsComputational Drug Discovery Methods