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Recognizing novel drugs against Keap1 in Alzheimer’s disease using machine learning grounded computational studies

Alzheimer’s disease (AD) is the most common neurodegenerative disorder in the world, affecting an estimated 50 million individuals. The nerve cells become impaired and die due to the formation of amyloid-beta (Aβ) plaques and neurofibrillary tangles (NFTs). Dementia is one of the most common symptom...

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Autores principales: Mukerjee, Nobendu, Al-Khafaji, Khattab, Maitra, Swastika, Suhail Wadi, Jaafar, Sachdeva, Punya, Ghosh, Arabinda, Buchade, Rahul Subhash, Chaudhari, Somdatta Yashwant, Jadhav, Shailaja B., Das, Padmashree, Hasan, Mohammad Mehedi, Rahman, Md. Habibur, Albadrani, Ghadeer M., Altyar, Ahmed E., Kamel, Mohamed, Algahtani, Mohammad, Shinan, Khlood, Theyab, Abdulrahman, Abdel-Daim, Mohamed M., Ashraf, Ghulam Md., Rahman, Md. Mominur, Sharma, Rohit
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9764216/
https://www.ncbi.nlm.nih.gov/pubmed/36561895
http://dx.doi.org/10.3389/fnmol.2022.1036552
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author Mukerjee, Nobendu
Al-Khafaji, Khattab
Maitra, Swastika
Suhail Wadi, Jaafar
Sachdeva, Punya
Ghosh, Arabinda
Buchade, Rahul Subhash
Chaudhari, Somdatta Yashwant
Jadhav, Shailaja B.
Das, Padmashree
Hasan, Mohammad Mehedi
Rahman, Md. Habibur
Albadrani, Ghadeer M.
Altyar, Ahmed E.
Kamel, Mohamed
Algahtani, Mohammad
Shinan, Khlood
Theyab, Abdulrahman
Abdel-Daim, Mohamed M.
Ashraf, Ghulam Md.
Rahman, Md. Mominur
Sharma, Rohit
author_facet Mukerjee, Nobendu
Al-Khafaji, Khattab
Maitra, Swastika
Suhail Wadi, Jaafar
Sachdeva, Punya
Ghosh, Arabinda
Buchade, Rahul Subhash
Chaudhari, Somdatta Yashwant
Jadhav, Shailaja B.
Das, Padmashree
Hasan, Mohammad Mehedi
Rahman, Md. Habibur
Albadrani, Ghadeer M.
Altyar, Ahmed E.
Kamel, Mohamed
Algahtani, Mohammad
Shinan, Khlood
Theyab, Abdulrahman
Abdel-Daim, Mohamed M.
Ashraf, Ghulam Md.
Rahman, Md. Mominur
Sharma, Rohit
author_sort Mukerjee, Nobendu
collection PubMed
description Alzheimer’s disease (AD) is the most common neurodegenerative disorder in the world, affecting an estimated 50 million individuals. The nerve cells become impaired and die due to the formation of amyloid-beta (Aβ) plaques and neurofibrillary tangles (NFTs). Dementia is one of the most common symptoms seen in people with AD. Genes, lifestyle, mitochondrial dysfunction, oxidative stress, obesity, infections, and head injuries are some of the factors that can contribute to the development and progression of AD. There are just a few FDA-approved treatments without side effects in the market, and their efficacy is restricted due to their narrow target in the etiology of AD. Therefore, our aim is to identify a safe and potent treatment for Alzheimer’s disease. We chose the ursolic acid (UA) and its similar compounds as a compounds’ library. And the ChEMBL database was adopted to obtain the active and inactive chemicals against Keap1. The best Quantitative structure-activity relationship (QSAR) model was created by evaluating standard machine learning techniques, and the best model has the lowest RMSE and greatest R2 (Random Forest Regressor). We chose pIC50 of 6.5 as threshold, where the top five potent medicines (DB06841, DB04310, DB11784, DB12730, and DB12677) with the highest predicted pIC50 (7.091184, 6.900866, 6.800155, 6.768965, and 6.756439) based on QSAR analysis. Furthermore, the top five medicines utilize as ligand molecules were docked in Keap1’s binding region. The structural stability of the nominated medications was then evaluated using molecular dynamics simulations, RMSD, RMSF, Rg, and hydrogen bonding. All models are stable at 20 ns during simulation, with no major fluctuations observed. Finally, the top five medications are shown as prospective inhibitors of Keap1 and are the most promising to battle AD.
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spelling pubmed-97642162022-12-21 Recognizing novel drugs against Keap1 in Alzheimer’s disease using machine learning grounded computational studies Mukerjee, Nobendu Al-Khafaji, Khattab Maitra, Swastika Suhail Wadi, Jaafar Sachdeva, Punya Ghosh, Arabinda Buchade, Rahul Subhash Chaudhari, Somdatta Yashwant Jadhav, Shailaja B. Das, Padmashree Hasan, Mohammad Mehedi Rahman, Md. Habibur Albadrani, Ghadeer M. Altyar, Ahmed E. Kamel, Mohamed Algahtani, Mohammad Shinan, Khlood Theyab, Abdulrahman Abdel-Daim, Mohamed M. Ashraf, Ghulam Md. Rahman, Md. Mominur Sharma, Rohit Front Mol Neurosci Neuroscience Alzheimer’s disease (AD) is the most common neurodegenerative disorder in the world, affecting an estimated 50 million individuals. The nerve cells become impaired and die due to the formation of amyloid-beta (Aβ) plaques and neurofibrillary tangles (NFTs). Dementia is one of the most common symptoms seen in people with AD. Genes, lifestyle, mitochondrial dysfunction, oxidative stress, obesity, infections, and head injuries are some of the factors that can contribute to the development and progression of AD. There are just a few FDA-approved treatments without side effects in the market, and their efficacy is restricted due to their narrow target in the etiology of AD. Therefore, our aim is to identify a safe and potent treatment for Alzheimer’s disease. We chose the ursolic acid (UA) and its similar compounds as a compounds’ library. And the ChEMBL database was adopted to obtain the active and inactive chemicals against Keap1. The best Quantitative structure-activity relationship (QSAR) model was created by evaluating standard machine learning techniques, and the best model has the lowest RMSE and greatest R2 (Random Forest Regressor). We chose pIC50 of 6.5 as threshold, where the top five potent medicines (DB06841, DB04310, DB11784, DB12730, and DB12677) with the highest predicted pIC50 (7.091184, 6.900866, 6.800155, 6.768965, and 6.756439) based on QSAR analysis. Furthermore, the top five medicines utilize as ligand molecules were docked in Keap1’s binding region. The structural stability of the nominated medications was then evaluated using molecular dynamics simulations, RMSD, RMSF, Rg, and hydrogen bonding. All models are stable at 20 ns during simulation, with no major fluctuations observed. Finally, the top five medications are shown as prospective inhibitors of Keap1 and are the most promising to battle AD. Frontiers Media S.A. 2022-12-06 /pmc/articles/PMC9764216/ /pubmed/36561895 http://dx.doi.org/10.3389/fnmol.2022.1036552 Text en Copyright © 2022 Mukerjee, Al-Khafaji, Maitra, Suhail Wadi, Sachdeva, Ghosh, Buchade, Chaudhari, Jadhav, Das, Hasan, Rahman, Albadrani, Altyar, Kamel, Algahtani, Shinan, Theyab, Abdel-Daim, Ashraf, Rahman and Sharma. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neuroscience
Mukerjee, Nobendu
Al-Khafaji, Khattab
Maitra, Swastika
Suhail Wadi, Jaafar
Sachdeva, Punya
Ghosh, Arabinda
Buchade, Rahul Subhash
Chaudhari, Somdatta Yashwant
Jadhav, Shailaja B.
Das, Padmashree
Hasan, Mohammad Mehedi
Rahman, Md. Habibur
Albadrani, Ghadeer M.
Altyar, Ahmed E.
Kamel, Mohamed
Algahtani, Mohammad
Shinan, Khlood
Theyab, Abdulrahman
Abdel-Daim, Mohamed M.
Ashraf, Ghulam Md.
Rahman, Md. Mominur
Sharma, Rohit
Recognizing novel drugs against Keap1 in Alzheimer’s disease using machine learning grounded computational studies
title Recognizing novel drugs against Keap1 in Alzheimer’s disease using machine learning grounded computational studies
title_full Recognizing novel drugs against Keap1 in Alzheimer’s disease using machine learning grounded computational studies
title_fullStr Recognizing novel drugs against Keap1 in Alzheimer’s disease using machine learning grounded computational studies
title_full_unstemmed Recognizing novel drugs against Keap1 in Alzheimer’s disease using machine learning grounded computational studies
title_short Recognizing novel drugs against Keap1 in Alzheimer’s disease using machine learning grounded computational studies
title_sort recognizing novel drugs against keap1 in alzheimer’s disease using machine learning grounded computational studies
topic Neuroscience
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9764216/
https://www.ncbi.nlm.nih.gov/pubmed/36561895
http://dx.doi.org/10.3389/fnmol.2022.1036552
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