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Identification of potent aldose reductase inhibitors as antidiabetic (Anti-hyperglycemic) agents using QSAR based virtual Screening, molecular Docking, MD simulation and MMGBSA approaches

The aldose reductase (AR) enzyme is an important target enzyme in the development of therapeutics against hyperglycaemia induced health complications such as retinopathy, etc. In the present study, a quantitative structure activity relationship (QSAR) evaluation of a dataset of 226 reported AR inhib...

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Autores principales: Bakal, Ravindra L., Jawarkar, Rahul D., Manwar, J.V., Jaiswal, Minal S., Ghosh, Arabinda, Gandhi, Ajaykumar, Zaki, Magdi E.A., Al-Hussain, Sami, Samad, Abdul, Masand, Vijay H., Mukerjee, Nobendu, Nasir Abbas Bukhari, Syed, Sharma, Praveen, Lewaa, Israa
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9257878/
https://www.ncbi.nlm.nih.gov/pubmed/35812153
http://dx.doi.org/10.1016/j.jsps.2022.04.003
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author Bakal, Ravindra L.
Jawarkar, Rahul D.
Manwar, J.V.
Jaiswal, Minal S.
Ghosh, Arabinda
Gandhi, Ajaykumar
Zaki, Magdi E.A.
Al-Hussain, Sami
Samad, Abdul
Masand, Vijay H.
Mukerjee, Nobendu
Nasir Abbas Bukhari, Syed
Sharma, Praveen
Lewaa, Israa
author_facet Bakal, Ravindra L.
Jawarkar, Rahul D.
Manwar, J.V.
Jaiswal, Minal S.
Ghosh, Arabinda
Gandhi, Ajaykumar
Zaki, Magdi E.A.
Al-Hussain, Sami
Samad, Abdul
Masand, Vijay H.
Mukerjee, Nobendu
Nasir Abbas Bukhari, Syed
Sharma, Praveen
Lewaa, Israa
author_sort Bakal, Ravindra L.
collection PubMed
description The aldose reductase (AR) enzyme is an important target enzyme in the development of therapeutics against hyperglycaemia induced health complications such as retinopathy, etc. In the present study, a quantitative structure activity relationship (QSAR) evaluation of a dataset of 226 reported AR inhibitor (ARi) molecules is performed using a genetic algorithm – multi linear regression (GA-MLR) technique. Multi-criteria decision making (MCDM) analysis furnished two five variables based QSAR models with acceptably high performance reflected in various statistical parameters such as, R(2) = 0.79–0.80, Q(2)(LOO) = 0.78–0.79, Q(2)(LMO) = 0.78–0.79. The QSAR model analysis revealed some of the molecular features that play crucial role in deciding inhibitory potency of the molecule against AR such as; hydrophobic Nitrogen within 2 Å of the center of mass of the molecule, non-ring Carbon separated by three and four bonds from hydrogen bond donor atoms, number of sp2 hybridized Oxygen separated by four bonds from sp2 hybridized Carbon atoms, etc. 14 in silico generated hits, using a compound 18 (a most potent ARi from present dataset with pIC(50) = 8.04 M) as a template, on QSAR based virtual screening (QSAR-VS) furnished a scaffold 5 with better ARi activity (pIC(50) = 8.05 M) than template compound 18. Furthermore, molecular docking of compound 18 (Docking Score = –7.91 kcal/mol) and scaffold 5 (Docking Score = –8.08 kcal/mol) against AR, divulged that they both occupy the specific pocket(s) in AR receptor binding sites through hydrogen bonding and hydrophobic interactions. Molecular dynamic simulation (MDS) and MMGBSA studies right back the docking results by revealing the fact that binding site residues interact with scaffold 5 and compound 18 to produce a stable complex similar to co-crystallized ligand's conformation. The QSAR analysis, molecular docking, and MDS results are all in agreement and complementary. QSAR-VS successfully identified a more potent novel ARi and can be used in the development of therapeutic agents to treat diabetes.
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spelling pubmed-92578782022-07-07 Identification of potent aldose reductase inhibitors as antidiabetic (Anti-hyperglycemic) agents using QSAR based virtual Screening, molecular Docking, MD simulation and MMGBSA approaches Bakal, Ravindra L. Jawarkar, Rahul D. Manwar, J.V. Jaiswal, Minal S. Ghosh, Arabinda Gandhi, Ajaykumar Zaki, Magdi E.A. Al-Hussain, Sami Samad, Abdul Masand, Vijay H. Mukerjee, Nobendu Nasir Abbas Bukhari, Syed Sharma, Praveen Lewaa, Israa Saudi Pharm J Original Article The aldose reductase (AR) enzyme is an important target enzyme in the development of therapeutics against hyperglycaemia induced health complications such as retinopathy, etc. In the present study, a quantitative structure activity relationship (QSAR) evaluation of a dataset of 226 reported AR inhibitor (ARi) molecules is performed using a genetic algorithm – multi linear regression (GA-MLR) technique. Multi-criteria decision making (MCDM) analysis furnished two five variables based QSAR models with acceptably high performance reflected in various statistical parameters such as, R(2) = 0.79–0.80, Q(2)(LOO) = 0.78–0.79, Q(2)(LMO) = 0.78–0.79. The QSAR model analysis revealed some of the molecular features that play crucial role in deciding inhibitory potency of the molecule against AR such as; hydrophobic Nitrogen within 2 Å of the center of mass of the molecule, non-ring Carbon separated by three and four bonds from hydrogen bond donor atoms, number of sp2 hybridized Oxygen separated by four bonds from sp2 hybridized Carbon atoms, etc. 14 in silico generated hits, using a compound 18 (a most potent ARi from present dataset with pIC(50) = 8.04 M) as a template, on QSAR based virtual screening (QSAR-VS) furnished a scaffold 5 with better ARi activity (pIC(50) = 8.05 M) than template compound 18. Furthermore, molecular docking of compound 18 (Docking Score = –7.91 kcal/mol) and scaffold 5 (Docking Score = –8.08 kcal/mol) against AR, divulged that they both occupy the specific pocket(s) in AR receptor binding sites through hydrogen bonding and hydrophobic interactions. Molecular dynamic simulation (MDS) and MMGBSA studies right back the docking results by revealing the fact that binding site residues interact with scaffold 5 and compound 18 to produce a stable complex similar to co-crystallized ligand's conformation. The QSAR analysis, molecular docking, and MDS results are all in agreement and complementary. QSAR-VS successfully identified a more potent novel ARi and can be used in the development of therapeutic agents to treat diabetes. Elsevier 2022-06 2022-04-07 /pmc/articles/PMC9257878/ /pubmed/35812153 http://dx.doi.org/10.1016/j.jsps.2022.04.003 Text en © 2022 The Author(s) https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Original Article
Bakal, Ravindra L.
Jawarkar, Rahul D.
Manwar, J.V.
Jaiswal, Minal S.
Ghosh, Arabinda
Gandhi, Ajaykumar
Zaki, Magdi E.A.
Al-Hussain, Sami
Samad, Abdul
Masand, Vijay H.
Mukerjee, Nobendu
Nasir Abbas Bukhari, Syed
Sharma, Praveen
Lewaa, Israa
Identification of potent aldose reductase inhibitors as antidiabetic (Anti-hyperglycemic) agents using QSAR based virtual Screening, molecular Docking, MD simulation and MMGBSA approaches
title Identification of potent aldose reductase inhibitors as antidiabetic (Anti-hyperglycemic) agents using QSAR based virtual Screening, molecular Docking, MD simulation and MMGBSA approaches
title_full Identification of potent aldose reductase inhibitors as antidiabetic (Anti-hyperglycemic) agents using QSAR based virtual Screening, molecular Docking, MD simulation and MMGBSA approaches
title_fullStr Identification of potent aldose reductase inhibitors as antidiabetic (Anti-hyperglycemic) agents using QSAR based virtual Screening, molecular Docking, MD simulation and MMGBSA approaches
title_full_unstemmed Identification of potent aldose reductase inhibitors as antidiabetic (Anti-hyperglycemic) agents using QSAR based virtual Screening, molecular Docking, MD simulation and MMGBSA approaches
title_short Identification of potent aldose reductase inhibitors as antidiabetic (Anti-hyperglycemic) agents using QSAR based virtual Screening, molecular Docking, MD simulation and MMGBSA approaches
title_sort identification of potent aldose reductase inhibitors as antidiabetic (anti-hyperglycemic) agents using qsar based virtual screening, molecular docking, md simulation and mmgbsa approaches
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9257878/
https://www.ncbi.nlm.nih.gov/pubmed/35812153
http://dx.doi.org/10.1016/j.jsps.2022.04.003
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