Monte Carlo optimization based QSAR modeling of angiotensin II receptor antagonists
DOI:
https://doi.org/10.17344/acsi.2023.8081Keywords:
Angiotensin II receptor antagonists, hypertension, QSAR, Molecular modeling, Drug designAbstract
The pathogenesis of essential hypertension, congestive heart failure, and reno-vascular hypertension is related to angiotensin II. This study presents QSAR modeling for a set of compounds acting as angiotensin II receptor antagonists based on the Monte Carlo optimization with molecular graph-based and SMILES notation based descriptors. Conformation independent QSAR models were developed for three random splits. Various statistical approaches were used to assess the statistical quality of the developed models, and the obtained results were very good. This study used a novel statistical metric known as the index of ideality of correlation for the final assessment of the model, and the results that were obtained suggested that the model was good. Also, molecular fragments which account for the increases and/or decreases of a studied activity were defined and then used for the computer-aided design of new compounds as potential angiotensin II receptor antagonists.
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21.08.2023
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Biomedical applications
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Copyright (c) 1970 Nemanja Nikolić, Tomislav Kostić, Mlađan Golubović, Tamara Nikolić, Marija Marinković, Velimir Perić, Sara Mladenović, Aleksandar Veselinovic

This work is licensed under a Creative Commons Attribution 4.0 International License.
Except where otherwise noted, articles in this journal are published under the Creative Commons Attribution 4.0 International License