QSAR Modeling and Molecular Docking Studies of New Substituted Pyrazolyl-Pyrimidinones as Potent HIV-1 Inhibitors
- Authors: Hamdache B.1, Tabti K.2, Er-rajy M.3, Dib M.4, ElFarouki K.1, Ouchetto K.1, Elhalaoui M.3, Hafid A.1, Khouili M.1, Ouchetto H.1
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Affiliations:
- Laboratory of Molecular Chemistry, Materials, and Catalysis, Faculty of Science and Technology, Sultan Moulay Slimane University
- Molecular and Computational Chemistry, NSMC Laboratory, Faculty of Science, Moulay Ismail University of Meknes
- LIMAS Laboratory, Faculty of Sciences Dhar El Mahraz, Sidi Mohamed Ben Abdellah University
- Laboratory of Applied Chemistry and Environment, Mineral Solid Chemistry Team, Faculty of Sciences, Mohammed First University
- Issue: Vol 18, No 3 (2024)
- Pages: 157-175
- Section: Biochemistry
- URL: https://gynecology.orscience.ru/2212-7968/article/view/643919
- DOI: https://doi.org/10.2174/0122127968317638241014090751
- ID: 643919
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Abstract
Background:Pyrazolyl-pyrimidinone derivatives are important heterocyclic compounds. A novel HIV-1 (human immunodeficiency virus type 1) inhibitors based on these components were designed as potential drug candidates for AIDS (acquired immunodeficiency syndrome) therapy.
Objective:This research aims to develop a predictive mathematical model linking the biological activity and physicochemical properties of pyrazolyl-pyrimidinones derivatives and to identify the interactions between the most active compound and the HIV-1 active site.
Method:A QSAR-2D study was conducted on 40 pyrazolyl-pyrimidinone derivatives, followed by molecular docking of the most active compounds.
Results:Principal Component Analysis (PCA) was used to select the best descriptors for building QSAR models using Multiple Linear Regression (MLR), Multiple Nonlinear Regression (MNLR), and Artificial Neural Networks (ANN). The MLR model achieved R² = 0.70, Q²Cv = 0.54, and successful Y-randomization (R = 0.83). The MNLR model had an R² of 0.81 and low mean square error RMSE = 0.17, while the ANN model showed ρ = 1.5 and RMSE = 0.15. Docking studies confirmed key interactions between compounds 1 and 11 with the HIV-1 active site. The results of molecular packaging Substances 11 and 1 have the lowest energy levels of -13.26 kcal/mol and -12.5 kcal/mol, respectively, and have more than one hydrogen bond. The molecular docking validation finds RMSD = 0.821.
Conclusion:This study allowed the establishment of robust QSAR models with a good predictive capacity, confirmed by several statistical indicators, with the aim of inhibiting HIV-1. The models showed satisfactory reliability and docking studies identified key interactions between the compounds and the active sites of HIV-1, thus reinforcing their profile as promising candidates for the development of new antiviral treatments.
About the authors
Badr Hamdache
Laboratory of Molecular Chemistry, Materials, and Catalysis, Faculty of Science and Technology, Sultan Moulay Slimane University
Email: info@benthamscience.net
Kamal Tabti
Molecular and Computational Chemistry, NSMC Laboratory, Faculty of Science, Moulay Ismail University of Meknes
Email: info@benthamscience.net
Mohammed Er-rajy
LIMAS Laboratory, Faculty of Sciences Dhar El Mahraz, Sidi Mohamed Ben Abdellah University
Email: info@benthamscience.net
Mustapha Dib
Laboratory of Applied Chemistry and Environment, Mineral Solid Chemistry Team, Faculty of Sciences, Mohammed First University
Author for correspondence.
Email: info@benthamscience.net
Khadija ElFarouki
Laboratory of Molecular Chemistry, Materials, and Catalysis, Faculty of Science and Technology, Sultan Moulay Slimane University
Email: info@benthamscience.net
Khadija Ouchetto
Laboratory of Molecular Chemistry, Materials, and Catalysis, Faculty of Science and Technology, Sultan Moulay Slimane University
Email: info@benthamscience.net
Menana Elhalaoui
LIMAS Laboratory, Faculty of Sciences Dhar El Mahraz, Sidi Mohamed Ben Abdellah University
Email: info@benthamscience.net
Abderrafia Hafid
Laboratory of Molecular Chemistry, Materials, and Catalysis, Faculty of Science and Technology, Sultan Moulay Slimane University
Email: info@benthamscience.net
Mostafa Khouili
Laboratory of Molecular Chemistry, Materials, and Catalysis, Faculty of Science and Technology, Sultan Moulay Slimane University
Email: info@benthamscience.net
Hajiba Ouchetto
Laboratory of Molecular Chemistry, Materials, and Catalysis, Faculty of Science and Technology, Sultan Moulay Slimane University
Email: info@benthamscience.net
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