Author/Authors :
Jazayeri Farsani, Sajjad Department of Chemistry - Faculty of Sciences - University of Shahrekord, Shahrekord, Iran , Asadpour, Saeid Department of Chemistry - Faculty of Sciences - University of Shahrekord, Shahrekord, Iran , Semnani, Abolfazl Department of Chemistry - Faculty of Sciences - University of Shahrekord, Shahrekord, Iran , Ghanavati Nasab, Shima Department of Chemistry - Faculty of Sciences - University of Shahrekord, Shahrekord, Iran
Abstract :
Quantitative structure–activity relationship (QSAR) was performed to analyze naphthoquinone
derivatives as an inhibitor of indoleamine 2,3-dioxygenase pathogen via multivariate regression (MLR)
and artificial neural network. The best descriptors were picked to construct the QSAR. Two sets of
exercises and experiments were also performed using Principal Component Analysis for multiple linear
regression (MLR). A quantitative model was then proposed based on these analyses and the activity of
the compounds based on multivariate statistical analysis was interpreted. The study finally revealed that
although the MLR model can predict the activity of the compounds to some extent, the artificial neural
network (ANN) model results indicate that the predictions obtained by the neural network are much
better and more efficient than other models. The neural network was also used where three coefficients
of correlation were used. The results uncovered that the ANN model is statistically significant and has
good stability for data validation for the validation method. Share Descriptive relationships of structure
and activity were also examined.
Keywords :
Artificial neural network (ANN) , multiple linear regression (MLR) , naphthoquinone derivatives , pathogenic agent , quantitative structure–activity relationship (QSAR)