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Integrated Machine Learning and Chemoinformatics-Based Screening of Mycotic Compounds against Kinesin Spindle ProteinEg5 for Lung Cancer Therapy

Among the various types of cancer, lung cancer is the second most-diagnosed cancer worldwide. The kinesin spindle protein, Eg5, is a vital protein behind bipolar mitotic spindle establishment and maintenance during mitosis. Eg5 has been reported to contribute to cancer cell migration and angiogenesi...

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Autores principales: Maiti, Priyanka, Sharma, Priyanka, Nand, Mahesha, Bhatt, Indra D., Ramakrishnan, Muthannan Andavar, Mathpal, Shalini, Joshi, Tushar, Pant, Ragini, Mahmud, Shafi, Simal-Gandara, Jesus, Alshehri, Sultan, Ghoneim, Mohammed M., Alruwaily, Maha, Awadh, Ahmed Abdullah Al, Alshahrani, Mohammed Merae, Chandra, Subhash
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8911701/
https://www.ncbi.nlm.nih.gov/pubmed/35268740
http://dx.doi.org/10.3390/molecules27051639
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author Maiti, Priyanka
Sharma, Priyanka
Nand, Mahesha
Bhatt, Indra D.
Ramakrishnan, Muthannan Andavar
Mathpal, Shalini
Joshi, Tushar
Pant, Ragini
Mahmud, Shafi
Simal-Gandara, Jesus
Alshehri, Sultan
Ghoneim, Mohammed M.
Alruwaily, Maha
Awadh, Ahmed Abdullah Al
Alshahrani, Mohammed Merae
Chandra, Subhash
author_facet Maiti, Priyanka
Sharma, Priyanka
Nand, Mahesha
Bhatt, Indra D.
Ramakrishnan, Muthannan Andavar
Mathpal, Shalini
Joshi, Tushar
Pant, Ragini
Mahmud, Shafi
Simal-Gandara, Jesus
Alshehri, Sultan
Ghoneim, Mohammed M.
Alruwaily, Maha
Awadh, Ahmed Abdullah Al
Alshahrani, Mohammed Merae
Chandra, Subhash
author_sort Maiti, Priyanka
collection PubMed
description Among the various types of cancer, lung cancer is the second most-diagnosed cancer worldwide. The kinesin spindle protein, Eg5, is a vital protein behind bipolar mitotic spindle establishment and maintenance during mitosis. Eg5 has been reported to contribute to cancer cell migration and angiogenesis impairment and has no role in resting, non-dividing cells. Thus, it could be considered as a vital target against several cancers, such as renal cancer, lung cancer, urothelial carcinoma, prostate cancer, squamous cell carcinoma, etc. In recent years, fungal secondary metabolites from the Indian Himalayan Region (IHR) have been identified as an important lead source in the drug development pipeline. Therefore, the present study aims to identify potential mycotic secondary metabolites against the Eg5 protein by applying integrated machine learning, chemoinformatics based in silico-screening methods and molecular dynamic simulation targeting lung cancer. Initially, a library of 1830 mycotic secondary metabolites was screened by a predictive machine-learning model developed based on the random forest algorithm with high sensitivity (1) and an ROC area of 0.99. Further, 319 out of 1830 compounds screened with active potential by the model were evaluated for their drug-likeness properties by applying four filters simultaneously, viz., Lipinski’s rule, CMC-50 like rule, Veber rule, and Ghose filter. A total of 13 compounds passed from all the above filters were considered for molecular docking, functional group analysis, and cell line cytotoxicity prediction. Finally, four hit mycotic secondary metabolites found in fungi from the IHR were screened viz., (−)-Cochlactone-A, Phelligridin C, Sterenin E, and Cyathusal A. All compounds have efficient binding potential with Eg5, containing functional groups like aromatic rings, rings, carboxylic acid esters, and carbonyl and with cell line cytotoxicity against lung cancer cell lines, namely, MCF-7, NCI-H226, NCI-H522, A549, and NCI H187. Further, the molecular dynamics simulation study confirms the docked complex rigidity and stability by exploring root mean square deviations, root mean square fluctuations, and radius of gyration analysis from 100 ns simulation trajectories. The screened compounds could be used further to develop effective drugs against lung and other types of cancer.
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spelling pubmed-89117012022-03-11 Integrated Machine Learning and Chemoinformatics-Based Screening of Mycotic Compounds against Kinesin Spindle ProteinEg5 for Lung Cancer Therapy Maiti, Priyanka Sharma, Priyanka Nand, Mahesha Bhatt, Indra D. Ramakrishnan, Muthannan Andavar Mathpal, Shalini Joshi, Tushar Pant, Ragini Mahmud, Shafi Simal-Gandara, Jesus Alshehri, Sultan Ghoneim, Mohammed M. Alruwaily, Maha Awadh, Ahmed Abdullah Al Alshahrani, Mohammed Merae Chandra, Subhash Molecules Article Among the various types of cancer, lung cancer is the second most-diagnosed cancer worldwide. The kinesin spindle protein, Eg5, is a vital protein behind bipolar mitotic spindle establishment and maintenance during mitosis. Eg5 has been reported to contribute to cancer cell migration and angiogenesis impairment and has no role in resting, non-dividing cells. Thus, it could be considered as a vital target against several cancers, such as renal cancer, lung cancer, urothelial carcinoma, prostate cancer, squamous cell carcinoma, etc. In recent years, fungal secondary metabolites from the Indian Himalayan Region (IHR) have been identified as an important lead source in the drug development pipeline. Therefore, the present study aims to identify potential mycotic secondary metabolites against the Eg5 protein by applying integrated machine learning, chemoinformatics based in silico-screening methods and molecular dynamic simulation targeting lung cancer. Initially, a library of 1830 mycotic secondary metabolites was screened by a predictive machine-learning model developed based on the random forest algorithm with high sensitivity (1) and an ROC area of 0.99. Further, 319 out of 1830 compounds screened with active potential by the model were evaluated for their drug-likeness properties by applying four filters simultaneously, viz., Lipinski’s rule, CMC-50 like rule, Veber rule, and Ghose filter. A total of 13 compounds passed from all the above filters were considered for molecular docking, functional group analysis, and cell line cytotoxicity prediction. Finally, four hit mycotic secondary metabolites found in fungi from the IHR were screened viz., (−)-Cochlactone-A, Phelligridin C, Sterenin E, and Cyathusal A. All compounds have efficient binding potential with Eg5, containing functional groups like aromatic rings, rings, carboxylic acid esters, and carbonyl and with cell line cytotoxicity against lung cancer cell lines, namely, MCF-7, NCI-H226, NCI-H522, A549, and NCI H187. Further, the molecular dynamics simulation study confirms the docked complex rigidity and stability by exploring root mean square deviations, root mean square fluctuations, and radius of gyration analysis from 100 ns simulation trajectories. The screened compounds could be used further to develop effective drugs against lung and other types of cancer. MDPI 2022-03-02 /pmc/articles/PMC8911701/ /pubmed/35268740 http://dx.doi.org/10.3390/molecules27051639 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
Maiti, Priyanka
Sharma, Priyanka
Nand, Mahesha
Bhatt, Indra D.
Ramakrishnan, Muthannan Andavar
Mathpal, Shalini
Joshi, Tushar
Pant, Ragini
Mahmud, Shafi
Simal-Gandara, Jesus
Alshehri, Sultan
Ghoneim, Mohammed M.
Alruwaily, Maha
Awadh, Ahmed Abdullah Al
Alshahrani, Mohammed Merae
Chandra, Subhash
Integrated Machine Learning and Chemoinformatics-Based Screening of Mycotic Compounds against Kinesin Spindle ProteinEg5 for Lung Cancer Therapy
title Integrated Machine Learning and Chemoinformatics-Based Screening of Mycotic Compounds against Kinesin Spindle ProteinEg5 for Lung Cancer Therapy
title_full Integrated Machine Learning and Chemoinformatics-Based Screening of Mycotic Compounds against Kinesin Spindle ProteinEg5 for Lung Cancer Therapy
title_fullStr Integrated Machine Learning and Chemoinformatics-Based Screening of Mycotic Compounds against Kinesin Spindle ProteinEg5 for Lung Cancer Therapy
title_full_unstemmed Integrated Machine Learning and Chemoinformatics-Based Screening of Mycotic Compounds against Kinesin Spindle ProteinEg5 for Lung Cancer Therapy
title_short Integrated Machine Learning and Chemoinformatics-Based Screening of Mycotic Compounds against Kinesin Spindle ProteinEg5 for Lung Cancer Therapy
title_sort integrated machine learning and chemoinformatics-based screening of mycotic compounds against kinesin spindle proteineg5 for lung cancer therapy
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8911701/
https://www.ncbi.nlm.nih.gov/pubmed/35268740
http://dx.doi.org/10.3390/molecules27051639
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