Affiliation:
1. Department of Chemistry, Arak Branch, Islamic Azad University, Arak, Iran
Abstract
Aim and Objective:
Sulfonamides (sulfa drugs) are compounds with a wide range of biological
activities and they are the basis of several groups of drugs. Quantitative Structure-Property
Relationship (QSPR) models are derived to predict the logarithm of water/ 1-octanol partition coefficients
(logP) of sulfa drugs.
Materials and Methods:
A data set of 43 sulfa drugs was randomly divided into 3 groups: training,
test and validation sets consisting of 70%, 15% and 15% of data point, respectively. A large number
of molecular descriptors were calculated with Dragon software. The Genetic Algorithm -
Multiple Linear Regressions (GA-MLR) and genetic algorithm -artificial neural network (GAANN)
were employed to design the QSPR models. The possible molecular geometries of sulfa
drugs were optimized at B3LYP/6-31G* level with Gaussian 98 software. The molecular descriptors
derived from the Dragon software were used to build a predictive model for prediction
logP of mentioned compounds. The Genetic Algorithm (GA) method was applied to select the most
relevant molecular descriptors.
Results:
The R2
and MSE values of the MLR model were calculated to be 0.312 and 5.074 respectively.
R2
coefficients were 0.9869, 0.9944 and 0.9601for the training, test and validation sets of the
ANN model, respectively.
Conclusion:
Comparison of the results revealed that the application the GA-ANN method gave better
results than GA-MLR method.
Publisher
Bentham Science Publishers Ltd.
Subject
Drug Discovery,Molecular Medicine,General Medicine
Cited by
8 articles.
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