Title of article :
Predicting the Anticonvulsant Activities of Phenylacetanilides Using Quantitativestructure- activity-relationship and Artificial Neural Network Methods
Author/Authors :
Yousefi, Javad Faculty of Chemistry - Semnan University - Semnan, Iran , Sajjadi, S. Maryam Faculty of Chemistry - Semnan University - Semnan, Iran , Bagheri, Ahmad Faculty of Chemistry - Semnan University - Semnan, Iran
Abstract :
In this study, the anticonvulsant activity of phenylacetanilides compounds was predicted using QSAR and artificial neural network
(ANN) models. Variety kinds of molecular descriptors were computed using Dragon for 30 monosubstituted phenylacetanilides. Then,
seven out of 1600 descriptors were selected and used in ANN analysis. The complete set of 30 compounds was randomly divided into a
training set of 80%, a test set of 10%, and a validation set of 10% compounds. Moreover, multiple linear regression (MLR) analysis was
utilized to build a linear model by using the same descriptors and the results of this linear model were compared with the nonlinear ANN
analysis. Correlation coefficient (R2) and mean squared error (MSE) of the ANN and MLR models (for the whole dataset) were 0.85,
0.06816; and 0.6, 0.09792, respectively. The higher R2 of ANN method revealed that the relationship between the descriptors and
anticonvulsant activity of the compounds is non-linear.
Keywords :
QSAR , Molecular descriptors , Artificial neural network , Anticonvulsant activity6
Journal title :
Analytical and Bioanalytical Chemistry Research