Title of article :
Prediction of IC50 Values of 2−benzyloxy benzamide Derivatives using Multiple Linear Regression and Artificial Neural Network Methods
Author/Authors :
MASOOMI SEFIDDASHTI, FARIBA Department of Chemistry - Faculty of Sciences - Shahrekord University - P. O. Box 115 - Shahrekord, Iran , HADDADI, HEDAYAT Department of Chemistry - Faculty of Sciences - Shahrekord University - P. O. Box 115 - Shahrekord, Iran , ASADPOUR, SAEID Department of Chemistry - Faculty of Sciences - Shahrekord University - P. O. Box 115 - Shahrekord, Iran , GHANAVATI NASAB, SHIMA Department of Chemistry - Faculty of Sciences - Shahrekord University - P. O. Box 115 - Shahrekord, Iran
Pages :
21
From page :
179
To page :
199
Abstract :
In this study, six molecular descriptors were selected from a pool of variables using stepwise regression to built a QSAR model for a series of 2-benzyloxy benzamide derivatives as an SMS2 inhibitor to reduce atherosclerosis. Simple multiple linear regression (MLR) and a nonlinear method, artificial neural network (ANN), were used to modeling the bioactivities of the compounds. Modeling was carried out in total with 34 compounds of 2-benzyl oxybenzamide derivatives. PCA was used to divide the compounds into two groups of two training series and tests. The model was constructed with 27 combinations as training set, then the validity and predictive ability of the model were evaluated with the remaining 7 combinations. While the MLR provides an acceptable model for predictions, the ANN-based model significantly improves the predictive ability. In ANN model the average relative error (RE%) of prediction set is lower than 1% and square correlation coefficient (R2) is 0.9912.
Keywords :
SMS2 inhibitor , benzyloxy benzamide derivatives , QSAR , Multiple Linear Regression (MLR) , Artificial neural network (ANN)
Journal title :
Iranian Journal of Mathematical Chemistry
Serial Year :
2020
Record number :
2580009
Link To Document :
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