Computer-aided identification of lung cancer inhibitors through homology modeling and virtual screening

Abstract Background Lung cancer is the most often event cancer around the world and the first leading cause of cancer death in human beings. Rab39a protein is implicated in vesicular trafficking and fusion of phagosomes with lysosomes. Rab39a is overexpressed in lung cancer, which converts normal ce...

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Main Author: Aboubakr Haredi Abdelmonsef
Format: Article
Language:English
Published: SpringerOpen 2019-08-01
Series:Egyptian Journal of Medical Human Genetics
Subjects:
Online Access:http://link.springer.com/article/10.1186/s43042-019-0008-3
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spelling doaj-1dbcb7abfcdb46d5b5629c1189e113782020-11-25T03:26:37ZengSpringerOpenEgyptian Journal of Medical Human Genetics2090-24412019-08-0120111410.1186/s43042-019-0008-3Computer-aided identification of lung cancer inhibitors through homology modeling and virtual screeningAboubakr Haredi Abdelmonsef0Department of Chemistry, Faculty of Science, South Valley UniversityAbstract Background Lung cancer is the most often event cancer around the world and the first leading cause of cancer death in human beings. Rab39a protein is implicated in vesicular trafficking and fusion of phagosomes with lysosomes. Rab39a is overexpressed in lung cancer, which converts normal cells to abnormal cells that reproduce quickly, and resists programmed cell death that usually kills aberrant cells. Aim In the present study, the structure-based drug discovery approach is applied to identify new lead structures as cancer drug candidates against Rab39a. Methods A valid three-dimensional (3D) model of Rab39a generation, the prediction of protein–protein interactions (Rab39a/DENND5B) and active site identification were achieved by computational techniques. Results Our studies suggest that the amino acid residues from PHE28 to LYS63 are important for binding with the ligand molecules. Subsequently, the virtual screening study was carried out with ligand databases against the active site of Rab39a. Conclusion The ligand molecules with hetero amine moieties and amide group (-CONH-) have shown good value of docking score and agreeable ADME properties, so they were prioritized as potential inhibitors of Rab39a protein. Hence, Rab39a has emerged as a therapeutic target for drug development towards lung cancer.http://link.springer.com/article/10.1186/s43042-019-0008-3Lung cancerRab39aHomology modelingVirtual screeningADME
collection DOAJ
language English
format Article
sources DOAJ
author Aboubakr Haredi Abdelmonsef
spellingShingle Aboubakr Haredi Abdelmonsef
Computer-aided identification of lung cancer inhibitors through homology modeling and virtual screening
Egyptian Journal of Medical Human Genetics
Lung cancer
Rab39a
Homology modeling
Virtual screening
ADME
author_facet Aboubakr Haredi Abdelmonsef
author_sort Aboubakr Haredi Abdelmonsef
title Computer-aided identification of lung cancer inhibitors through homology modeling and virtual screening
title_short Computer-aided identification of lung cancer inhibitors through homology modeling and virtual screening
title_full Computer-aided identification of lung cancer inhibitors through homology modeling and virtual screening
title_fullStr Computer-aided identification of lung cancer inhibitors through homology modeling and virtual screening
title_full_unstemmed Computer-aided identification of lung cancer inhibitors through homology modeling and virtual screening
title_sort computer-aided identification of lung cancer inhibitors through homology modeling and virtual screening
publisher SpringerOpen
series Egyptian Journal of Medical Human Genetics
issn 2090-2441
publishDate 2019-08-01
description Abstract Background Lung cancer is the most often event cancer around the world and the first leading cause of cancer death in human beings. Rab39a protein is implicated in vesicular trafficking and fusion of phagosomes with lysosomes. Rab39a is overexpressed in lung cancer, which converts normal cells to abnormal cells that reproduce quickly, and resists programmed cell death that usually kills aberrant cells. Aim In the present study, the structure-based drug discovery approach is applied to identify new lead structures as cancer drug candidates against Rab39a. Methods A valid three-dimensional (3D) model of Rab39a generation, the prediction of protein–protein interactions (Rab39a/DENND5B) and active site identification were achieved by computational techniques. Results Our studies suggest that the amino acid residues from PHE28 to LYS63 are important for binding with the ligand molecules. Subsequently, the virtual screening study was carried out with ligand databases against the active site of Rab39a. Conclusion The ligand molecules with hetero amine moieties and amide group (-CONH-) have shown good value of docking score and agreeable ADME properties, so they were prioritized as potential inhibitors of Rab39a protein. Hence, Rab39a has emerged as a therapeutic target for drug development towards lung cancer.
topic Lung cancer
Rab39a
Homology modeling
Virtual screening
ADME
url http://link.springer.com/article/10.1186/s43042-019-0008-3
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