Title of article :
Prediction of IC50 of 2,5-diaminobenzophenone organic derivatives antimalarial compounds using informatics-aided genetic algorithm
Author/Authors :
Heidarimoghadam ، Rashid - Hamadan University of Medical Sciences , Mortazavi ، Shima - Islamic Azad University, Hamedan Branch , Farmany ، Abbas - Hamadan University of Medical Sciences
Pages :
13
From page :
437
To page :
449
Abstract :
In the present paper, informatics-aided quantitative structure activity relationship (QSAR) models using genetic algorithm-partial least square (GA-PLS), genetic algorithm-Kernel partial least square (KPLS), and Levenberg-Marquardt artificial neural network (LM ANN) approach were constructed to access the antimalarial activity (pIC50) of 2,5-diaminobenzophenone derivatives. Comparison of errors and correlation coefficients was obtained by the models as it illustrated that the LM ANN approach works with a high correlation coefficient and low prediction error. This model was applied to the prediction of pIC50 values of 2,5-diaminobenzophenone derivatives.
Keywords :
P. falciparum malaria , antimalarial compounds , 2 , 5 , diaminobenzophenones , QSAR
Journal title :
Iranian Chemical Communication
Serial Year :
2018
Journal title :
Iranian Chemical Communication
Record number :
2461112
Link To Document :
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