Scientific Data (Jul 2024)

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 Hahn,
  • Laura Perez-Benito,
  • Jonas Verhoeven,
  • Gary Tresadern,
  • Joerg Kurt Wegner,
  • Hugo Ceulemans,
  • Alexandre Tkatchenko

DOI
https://doi.org/10.1038/s41597-024-03521-8
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 14

Abstract

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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.