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Deep-learning-based target screening and similarity search for the predicted inhibitors of the pathways in Parkinson's disease

Herein, a two-step de novo approach was developed for the prediction of piperine targets and another prediction of similar (piperine) compounds from a small molecule library using a deep-learning method. Deep-learning and neural-network approaches were used for target prediction, similarity searches...

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Autores principales: Khan, Abbas, Chandra Kaushik, Aman, Ali, Syed Shujait, Ahmad, Nisar, Wei, Dong-Qing
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Royal Society of Chemistry 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9062390/
https://www.ncbi.nlm.nih.gov/pubmed/35520925
http://dx.doi.org/10.1039/c9ra01007f
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author Khan, Abbas
Chandra Kaushik, Aman
Ali, Syed Shujait
Ahmad, Nisar
Wei, Dong-Qing
author_facet Khan, Abbas
Chandra Kaushik, Aman
Ali, Syed Shujait
Ahmad, Nisar
Wei, Dong-Qing
author_sort Khan, Abbas
collection PubMed
description Herein, a two-step de novo approach was developed for the prediction of piperine targets and another prediction of similar (piperine) compounds from a small molecule library using a deep-learning method. Deep-learning and neural-network approaches were used for target prediction, similarity searches, and validation. The present approach was trained on records containing the data. The model attained an overall accuracy of around 87.5%, where the training and test set was kept as 70% and 30% (17 226/40 197), respectively. This method predicted two targets (MAO-A and MAO-B) and 101 compounds as piperine derivatives. MAO-A and MAO-B are important drug targets in Parkinson's disease. Validation of this method was also performed by considering piperine and its targets (monoamine oxidase A and B) using molecular docking, dynamics simulation and post-simulation analysis of all the selected compounds. Rasagiline, lazabemide, and selegiline were selected as controls, which are already FDA-approved drugs against these targets. Molecular docking studies of the FDA-approved drugs and the compounds we predicted using DL and neural networks were carried out against MAO-A and MAO-B. Using the molecular docking's scoring function, molecular dynamics simulation and free energy calculations as extended validation methods, it was observed that the compounds predicted herein possessed excellent inhibitory effects against the selected targets. Thus, deep learning may play a very effective role in predicting the potential compounds, their targets and can play an expanded role in computer-aided drug approaches.
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spelling pubmed-90623902022-05-04 Deep-learning-based target screening and similarity search for the predicted inhibitors of the pathways in Parkinson's disease Khan, Abbas Chandra Kaushik, Aman Ali, Syed Shujait Ahmad, Nisar Wei, Dong-Qing RSC Adv Chemistry Herein, a two-step de novo approach was developed for the prediction of piperine targets and another prediction of similar (piperine) compounds from a small molecule library using a deep-learning method. Deep-learning and neural-network approaches were used for target prediction, similarity searches, and validation. The present approach was trained on records containing the data. The model attained an overall accuracy of around 87.5%, where the training and test set was kept as 70% and 30% (17 226/40 197), respectively. This method predicted two targets (MAO-A and MAO-B) and 101 compounds as piperine derivatives. MAO-A and MAO-B are important drug targets in Parkinson's disease. Validation of this method was also performed by considering piperine and its targets (monoamine oxidase A and B) using molecular docking, dynamics simulation and post-simulation analysis of all the selected compounds. Rasagiline, lazabemide, and selegiline were selected as controls, which are already FDA-approved drugs against these targets. Molecular docking studies of the FDA-approved drugs and the compounds we predicted using DL and neural networks were carried out against MAO-A and MAO-B. Using the molecular docking's scoring function, molecular dynamics simulation and free energy calculations as extended validation methods, it was observed that the compounds predicted herein possessed excellent inhibitory effects against the selected targets. Thus, deep learning may play a very effective role in predicting the potential compounds, their targets and can play an expanded role in computer-aided drug approaches. The Royal Society of Chemistry 2019-04-02 /pmc/articles/PMC9062390/ /pubmed/35520925 http://dx.doi.org/10.1039/c9ra01007f Text en This journal is © The Royal Society of Chemistry https://creativecommons.org/licenses/by/3.0/
spellingShingle Chemistry
Khan, Abbas
Chandra Kaushik, Aman
Ali, Syed Shujait
Ahmad, Nisar
Wei, Dong-Qing
Deep-learning-based target screening and similarity search for the predicted inhibitors of the pathways in Parkinson's disease
title Deep-learning-based target screening and similarity search for the predicted inhibitors of the pathways in Parkinson's disease
title_full Deep-learning-based target screening and similarity search for the predicted inhibitors of the pathways in Parkinson's disease
title_fullStr Deep-learning-based target screening and similarity search for the predicted inhibitors of the pathways in Parkinson's disease
title_full_unstemmed Deep-learning-based target screening and similarity search for the predicted inhibitors of the pathways in Parkinson's disease
title_short Deep-learning-based target screening and similarity search for the predicted inhibitors of the pathways in Parkinson's disease
title_sort deep-learning-based target screening and similarity search for the predicted inhibitors of the pathways in parkinson's disease
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9062390/
https://www.ncbi.nlm.nih.gov/pubmed/35520925
http://dx.doi.org/10.1039/c9ra01007f
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