Cargando…

Deep Learning and Structure-Based Virtual Screening for Drug Discovery against NEK7: A Novel Target for the Treatment of Cancer

NIMA-related kinase7 (NEK7) plays a multifunctional role in cell division and NLRP3 inflammasone activation. A typical expression or any mutation in the genetic makeup of NEK7 leads to the development of cancer malignancies and fatal inflammatory disease, i.e., breast cancer, non-small cell lung can...

Descripción completa

Detalles Bibliográficos
Autores principales: Aziz, Mubashir, Ejaz, Syeda Abida, Zargar, Seema, Akhtar, Naveed, Aborode, Abdullahi Tunde, A. Wani, Tanveer, Batiha, Gaber El-Saber, Siddique, Farhan, Alqarni, Mohammed, Akintola, Ashraf Akintayo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9268522/
https://www.ncbi.nlm.nih.gov/pubmed/35807344
http://dx.doi.org/10.3390/molecules27134098
_version_ 1784744004611473408
author Aziz, Mubashir
Ejaz, Syeda Abida
Zargar, Seema
Akhtar, Naveed
Aborode, Abdullahi Tunde
A. Wani, Tanveer
Batiha, Gaber El-Saber
Siddique, Farhan
Alqarni, Mohammed
Akintola, Ashraf Akintayo
author_facet Aziz, Mubashir
Ejaz, Syeda Abida
Zargar, Seema
Akhtar, Naveed
Aborode, Abdullahi Tunde
A. Wani, Tanveer
Batiha, Gaber El-Saber
Siddique, Farhan
Alqarni, Mohammed
Akintola, Ashraf Akintayo
author_sort Aziz, Mubashir
collection PubMed
description NIMA-related kinase7 (NEK7) plays a multifunctional role in cell division and NLRP3 inflammasone activation. A typical expression or any mutation in the genetic makeup of NEK7 leads to the development of cancer malignancies and fatal inflammatory disease, i.e., breast cancer, non-small cell lung cancer, gout, rheumatoid arthritis, and liver cirrhosis. Therefore, NEK7 is a promising target for drug development against various cancer malignancies. The combination of drug repurposing and structure-based virtual screening of large libraries of compounds has dramatically improved the development of anticancer drugs. The current study focused on the virtual screening of 1200 benzene sulphonamide derivatives retrieved from the PubChem database by selecting and docking validation of the crystal structure of NEK7 protein (PDB ID: 2WQN). The compounds library was subjected to virtual screening using Auto Dock Vina. The binding energies of screened compounds were compared to standard Dabrafenib. In particular, compound 762 exhibited excellent binding energy of −42.67 kJ/mol, better than Dabrafenib (−33.89 kJ/mol). Selected drug candidates showed a reactive profile that was comparable to standard Dabrafenib. To characterize the stability of protein–ligand complexes, molecular dynamic simulations were performed, providing insight into the molecular interactions. The NEK7–Dabrafenib complex showed stability throughout the simulated trajectory. In addition, binding affinities, pIC50, and ADMET profiles of drug candidates were predicted using deep learning models. Deep learning models predicted the binding affinity of compound 762 best among all derivatives, which supports the findings of virtual screening. These findings suggest that top hits can serve as potential inhibitors of NEK7. Moreover, it is recommended to explore the inhibitory potential of identified hits compounds through in-vitro and in-vivo approaches.
format Online
Article
Text
id pubmed-9268522
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-92685222022-07-09 Deep Learning and Structure-Based Virtual Screening for Drug Discovery against NEK7: A Novel Target for the Treatment of Cancer Aziz, Mubashir Ejaz, Syeda Abida Zargar, Seema Akhtar, Naveed Aborode, Abdullahi Tunde A. Wani, Tanveer Batiha, Gaber El-Saber Siddique, Farhan Alqarni, Mohammed Akintola, Ashraf Akintayo Molecules Article NIMA-related kinase7 (NEK7) plays a multifunctional role in cell division and NLRP3 inflammasone activation. A typical expression or any mutation in the genetic makeup of NEK7 leads to the development of cancer malignancies and fatal inflammatory disease, i.e., breast cancer, non-small cell lung cancer, gout, rheumatoid arthritis, and liver cirrhosis. Therefore, NEK7 is a promising target for drug development against various cancer malignancies. The combination of drug repurposing and structure-based virtual screening of large libraries of compounds has dramatically improved the development of anticancer drugs. The current study focused on the virtual screening of 1200 benzene sulphonamide derivatives retrieved from the PubChem database by selecting and docking validation of the crystal structure of NEK7 protein (PDB ID: 2WQN). The compounds library was subjected to virtual screening using Auto Dock Vina. The binding energies of screened compounds were compared to standard Dabrafenib. In particular, compound 762 exhibited excellent binding energy of −42.67 kJ/mol, better than Dabrafenib (−33.89 kJ/mol). Selected drug candidates showed a reactive profile that was comparable to standard Dabrafenib. To characterize the stability of protein–ligand complexes, molecular dynamic simulations were performed, providing insight into the molecular interactions. The NEK7–Dabrafenib complex showed stability throughout the simulated trajectory. In addition, binding affinities, pIC50, and ADMET profiles of drug candidates were predicted using deep learning models. Deep learning models predicted the binding affinity of compound 762 best among all derivatives, which supports the findings of virtual screening. These findings suggest that top hits can serve as potential inhibitors of NEK7. Moreover, it is recommended to explore the inhibitory potential of identified hits compounds through in-vitro and in-vivo approaches. MDPI 2022-06-25 /pmc/articles/PMC9268522/ /pubmed/35807344 http://dx.doi.org/10.3390/molecules27134098 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Aziz, Mubashir
Ejaz, Syeda Abida
Zargar, Seema
Akhtar, Naveed
Aborode, Abdullahi Tunde
A. Wani, Tanveer
Batiha, Gaber El-Saber
Siddique, Farhan
Alqarni, Mohammed
Akintola, Ashraf Akintayo
Deep Learning and Structure-Based Virtual Screening for Drug Discovery against NEK7: A Novel Target for the Treatment of Cancer
title Deep Learning and Structure-Based Virtual Screening for Drug Discovery against NEK7: A Novel Target for the Treatment of Cancer
title_full Deep Learning and Structure-Based Virtual Screening for Drug Discovery against NEK7: A Novel Target for the Treatment of Cancer
title_fullStr Deep Learning and Structure-Based Virtual Screening for Drug Discovery against NEK7: A Novel Target for the Treatment of Cancer
title_full_unstemmed Deep Learning and Structure-Based Virtual Screening for Drug Discovery against NEK7: A Novel Target for the Treatment of Cancer
title_short Deep Learning and Structure-Based Virtual Screening for Drug Discovery against NEK7: A Novel Target for the Treatment of Cancer
title_sort deep learning and structure-based virtual screening for drug discovery against nek7: a novel target for the treatment of cancer
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9268522/
https://www.ncbi.nlm.nih.gov/pubmed/35807344
http://dx.doi.org/10.3390/molecules27134098
work_keys_str_mv AT azizmubashir deeplearningandstructurebasedvirtualscreeningfordrugdiscoveryagainstnek7anoveltargetforthetreatmentofcancer
AT ejazsyedaabida deeplearningandstructurebasedvirtualscreeningfordrugdiscoveryagainstnek7anoveltargetforthetreatmentofcancer
AT zargarseema deeplearningandstructurebasedvirtualscreeningfordrugdiscoveryagainstnek7anoveltargetforthetreatmentofcancer
AT akhtarnaveed deeplearningandstructurebasedvirtualscreeningfordrugdiscoveryagainstnek7anoveltargetforthetreatmentofcancer
AT aborodeabdullahitunde deeplearningandstructurebasedvirtualscreeningfordrugdiscoveryagainstnek7anoveltargetforthetreatmentofcancer
AT awanitanveer deeplearningandstructurebasedvirtualscreeningfordrugdiscoveryagainstnek7anoveltargetforthetreatmentofcancer
AT batihagaberelsaber deeplearningandstructurebasedvirtualscreeningfordrugdiscoveryagainstnek7anoveltargetforthetreatmentofcancer
AT siddiquefarhan deeplearningandstructurebasedvirtualscreeningfordrugdiscoveryagainstnek7anoveltargetforthetreatmentofcancer
AT alqarnimohammed deeplearningandstructurebasedvirtualscreeningfordrugdiscoveryagainstnek7anoveltargetforthetreatmentofcancer
AT akintolaashrafakintayo deeplearningandstructurebasedvirtualscreeningfordrugdiscoveryagainstnek7anoveltargetforthetreatmentofcancer