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Supramolecular Nature of Multicomponent Crystals Formed from 2,2'-Thiodiacetic Acid with 2,6-Diaminopurine or N9-(2-Hydroxyethyl)adenine.

Jeannette Carolina Belmont-SánchezDuane Choquesillo-LazarteMaría Eugenia García-RubiñoAntonio Matilla-HernándezJuan Niclós-GutiérrezAlfonso CastiñeirasAntonio Frontera
Published in: International journal of molecular sciences (2023)
The synthesis and characterization of the multicomponent crystals formed by 2,2'-thiodiacetic acid (H 2 tda) and 2,6-diaminopurine (Hdap) or N9-(2-hydroxyethyl)adenine (9heade) are detailed in this report. These crystals exist in a salt rather than a co-crystal form, as confirmed by single crystal X-ray diffractometry, which reflects their ionic nature. This analysis confirmed proton transfer from the 2,2'-thiodiacetic acid to the basic groups of the coformers. The new multicomponent crystals have molecular formulas [(H9heade + )(Htda - )] 1 and [(H 2 dap + ) 2 (tda 2- )]·2H 2 O 2 . These were also characterized using FTIR, 1 H and 13 C NMR and mass spectroscopies, elemental analysis, and thermogravimetric/differential scanning calorimetry (TG/DSC) analyses. In the crystal packing the ions interact with each other via O-H⋯N, O-H⋯O, N-H⋯O, and N-H⋯N hydrogen bonds, generating cyclic hydrogen-bonded motifs with graph-set notation of R22(16), R22(10), R32(10), R33(10), R22(9), R32(8), and R42(8), to form different supramolecular homo- and hetero-synthons. In addition, in the crystal packing of 2 , pairs of diaminopurinium ions display a strong anti-parallel π,π-stacking interaction, characterized by short inter-centroids and interplanar distances (3.39 and 3.24 Å, respectively) and a fairly tight angle (17.5°). These assemblies were further analyzed energetically using DFT calculations, MEP surface analysis, and QTAIM characterization.
Keyphrases
  • high resolution
  • room temperature
  • solid state
  • magnetic resonance
  • density functional theory
  • magnetic resonance imaging
  • molecular dynamics
  • molecular dynamics simulations
  • machine learning
  • electron microscopy