QSPR Modeling and Experimental Determination of the Antioxidant Activity of Some Polycyclic Compounds in the Radical-Chain Oxidation Reaction of Organic Substrates

Molecules. 2022 Oct 2;27(19):6511. doi: 10.3390/molecules27196511.

Abstract

The present work addresses the quantitative structure−antioxidant activity relationship in a series of 148 sulfur-containing alkylphenols, natural phenols, chromane, betulonic and betulinic acids, and 20-hydroxyecdysone using GUSAR2019 software. Statistically significant valid models were constructed to predict the parameter logk7, where k7 is the rate constant for the oxidation chain termination by the antioxidant molecule. These results can be used to search for new potentially effective antioxidants in virtual libraries and databases and adequately predict logk7 for test samples. A combination of MNA- and QNA-descriptors with three whole molecule descriptors (topological length, topological volume, and lipophilicity) was used to develop six statistically significant valid consensus QSPR models, which have a satisfactory accuracy in predicting logk7 for training and test set structures: R2TR > 0.6; Q2TR > 0.5; R2TS > 0.5. Our theoretical prediction of logk7 for antioxidants AO1 and AO2, based on consensus models agrees well with the experimental value of the measure in this paper. Thus, the descriptor calculation algorithms implemented in the GUSAR2019 software allowed us to model the kinetic parameters of the reactions underlying the liquid-phase oxidation of organic hydrocarbons.

Keywords: GUSAR2019 program; MNA descriptors; QNA descriptors; QSAR models; QSPR models; antioxidant activity; antioxidants.

MeSH terms

  • Antioxidants / pharmacology
  • Ecdysterone
  • Hydrocarbons
  • Phenols
  • Polycyclic Compounds*
  • Quantitative Structure-Activity Relationship*
  • Sulfur

Substances

  • Antioxidants
  • Hydrocarbons
  • Phenols
  • Polycyclic Compounds
  • Ecdysterone
  • Sulfur