• Title of article

    Quantitative structure activity relationship (QSAR) study of octanol-water partition coefficients of some of environmental toxic of petroleum substances

  • Author/Authors

    Shahpar ، Mehrdad Ilam Petrochemical Company , Esmaeilpoor ، Sharmin - Payame Noor University

  • Pages
    14
  • From page
    116
  • To page
    129
  • Abstract
    Life and its extraction fuels climate change. We performed studies upon an extended series of petroleum hydrocarbons, with octanol-water partition coefficients (log Kow), by using the quantitative structure-activity relationship (QSAR) methods that imply analysis of correlations and representation of models. A suitable set of molecular descriptors was calculated and the genetic algorithm (GA) was employed to select those descriptors, resulting in the best-fit models. The partial least squares PLS (PLS) was utilized to construct the linear QSAR model. The best GA-PLS model contains 27 selected descriptors in 10 latent variables space. The R2 and RMSE for training and test sets were (0.827, 0.088) and (0.716, 0.185), respectively. Inspection of the results reveals a higher R2 and lowers the RMSE value parameter for the data set GA-PLS. The GA-PLS linear model has good statistical quality with low prediction error. This is the first research on the QSAR which uses GA-PLS for the presiction octanol-water partition coefficients of some of the environmental toxic of the petroleum substances.
  • Keywords
    Petroleum substances , Genetic Algorithm , QSAR
  • Journal title
    Asian Journal of Green Chemistry
  • Serial Year
    2017
  • Journal title
    Asian Journal of Green Chemistry
  • Record number

    2461290