Monte Carlo optimization based QSAR modeling, molecular docking studies, and ADMET predictions of compounds with antiMES activity

被引:0
|
作者
Biljana Živadinović
Jelena Stamenović
Jelena Živadinović
Lazar Živadinović
Aleksandar Živadinović
Miloš Stojanović
Milan Lazarević
Dušan Sokolović
Aleksandar M. Veselinović
机构
[1] University Clinical Center Niš,Clinic for Neurology
[2] University of Niš,Faculty of Medicine
[3] University Clinical Center Niš,Clinic for Anesthesiology and Intensive Care
[4] General Hospital,Department of Biochemistry, Faculty of Medicine
[5] University of Niš,Department of Chemistry, Faculty of Medicine
[6] University of Niš,undefined
来源
Structural Chemistry | 2023年 / 34卷
关键词
QSAR; AntiMES activity; Drug design; Molecular modeling; Epilepsy therapeutics;
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中图分类号
学科分类号
摘要
The paper deals with quantitative structure–activity relationship (QSAR) modeling-based Monte Carlo optimization. The molecular descriptors involve the local molecular graph invariants and the SMILES notation for the molecules whose antiMES activity is active against maximal electroshock seizure (MES). The developed QSAR model was validated with the use of various statistical parameters, such as the correlation coefficient, cross-validated correlation coefficient, standard error of estimation, mean absolute error, root-mean-square error Rm2, MAE-based metrics, the Fischer ratio, as well as the correlation ideality index. Along with the robustness of the developed QSAR model, the used statistical methods yielded an excellent predictability potential. The discovered molecular fragments utilized for the preparation of the computer-aided design of the new compounds were thought to have led to the increase and decrease of the examined activity. Molecular docking studies were referred to when making the final assessment of the designed inhibitors. This emphasized excellent correlation with QSAR modeling results. The computation of physicochemical descriptors was conducted in order to predict ADME parameters, pharmacokinetic properties, the drug-like nature and medicinal chemistry friendliness, with the aim of supporting drug discovery. Based on the results, all the designed molecules indicate the presence of high drug-likeness.
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页码:2225 / 2235
页数:10
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