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Multiple machine learning methods aided virtual screening of Na(V)1.5 inhibitors

Na(v)1.5 sodium channels contribute to the generation of the rapid upstroke of the myocardial action potential and thereby play a central role in the excitability of myocardial cells. At present, the patch clamp method is the gold standard for ion channel inhibitor screening. However, this method ha...

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Autores principales: Kong, Weikaixin, Huang, Weiran, Peng, Chao, Zhang, Bowen, Duan, Guifang, Ma, Weining, Huang, Zhuo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9843531/
https://www.ncbi.nlm.nih.gov/pubmed/36573431
http://dx.doi.org/10.1111/jcmm.17652
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author Kong, Weikaixin
Huang, Weiran
Peng, Chao
Zhang, Bowen
Duan, Guifang
Ma, Weining
Huang, Zhuo
author_facet Kong, Weikaixin
Huang, Weiran
Peng, Chao
Zhang, Bowen
Duan, Guifang
Ma, Weining
Huang, Zhuo
author_sort Kong, Weikaixin
collection PubMed
description Na(v)1.5 sodium channels contribute to the generation of the rapid upstroke of the myocardial action potential and thereby play a central role in the excitability of myocardial cells. At present, the patch clamp method is the gold standard for ion channel inhibitor screening. However, this method has disadvantages such as high technical difficulty, high cost and low speed. In this study, novel machine learning models to screen chemical blockers were developed to overcome the above shortage. The data from the ChEMBL Database were employed to establish the machine learning models. Firstly, six molecular fingerprints together with five machine learning algorithms were used to develop 30 classification models to predict effective inhibitors. A validation and a test set were used to evaluate the performance of the models. Subsequently, the privileged substructures tightly associated with the inhibition of the Na(v)1.5 ion channel were extracted using the bioalerts Python package. In the validation set, the RF‐Graph model performed best. Similarly, RF‐Graph produced the best result in the test set in which the Prediction Accuracy (Q) was 0.9309 and Matthew's correlation coefficient was 0.8627, further indicating the model had high classification ability. The results of the privileged substructures indicated Sulfa structures and fragments with large Steric hindrance tend to block Na(v)1.5. In the unsupervised learning task of identifying sulfa drugs, MACCS and Graph fingerprints had good results. In summary, effective machine learning models have been constructed which help to screen potential inhibitors of the Na(v)1.5 ion channel and key privileged substructures with high affinity were also extracted.
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spelling pubmed-98435312023-01-23 Multiple machine learning methods aided virtual screening of Na(V)1.5 inhibitors Kong, Weikaixin Huang, Weiran Peng, Chao Zhang, Bowen Duan, Guifang Ma, Weining Huang, Zhuo J Cell Mol Med Original Articles Na(v)1.5 sodium channels contribute to the generation of the rapid upstroke of the myocardial action potential and thereby play a central role in the excitability of myocardial cells. At present, the patch clamp method is the gold standard for ion channel inhibitor screening. However, this method has disadvantages such as high technical difficulty, high cost and low speed. In this study, novel machine learning models to screen chemical blockers were developed to overcome the above shortage. The data from the ChEMBL Database were employed to establish the machine learning models. Firstly, six molecular fingerprints together with five machine learning algorithms were used to develop 30 classification models to predict effective inhibitors. A validation and a test set were used to evaluate the performance of the models. Subsequently, the privileged substructures tightly associated with the inhibition of the Na(v)1.5 ion channel were extracted using the bioalerts Python package. In the validation set, the RF‐Graph model performed best. Similarly, RF‐Graph produced the best result in the test set in which the Prediction Accuracy (Q) was 0.9309 and Matthew's correlation coefficient was 0.8627, further indicating the model had high classification ability. The results of the privileged substructures indicated Sulfa structures and fragments with large Steric hindrance tend to block Na(v)1.5. In the unsupervised learning task of identifying sulfa drugs, MACCS and Graph fingerprints had good results. In summary, effective machine learning models have been constructed which help to screen potential inhibitors of the Na(v)1.5 ion channel and key privileged substructures with high affinity were also extracted. John Wiley and Sons Inc. 2022-12-27 /pmc/articles/PMC9843531/ /pubmed/36573431 http://dx.doi.org/10.1111/jcmm.17652 Text en © 2022 The Authors. Journal of Cellular and Molecular Medicine published by Foundation for Cellular and Molecular Medicine and John Wiley & Sons Ltd. https://creativecommons.org/licenses/by/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Articles
Kong, Weikaixin
Huang, Weiran
Peng, Chao
Zhang, Bowen
Duan, Guifang
Ma, Weining
Huang, Zhuo
Multiple machine learning methods aided virtual screening of Na(V)1.5 inhibitors
title Multiple machine learning methods aided virtual screening of Na(V)1.5 inhibitors
title_full Multiple machine learning methods aided virtual screening of Na(V)1.5 inhibitors
title_fullStr Multiple machine learning methods aided virtual screening of Na(V)1.5 inhibitors
title_full_unstemmed Multiple machine learning methods aided virtual screening of Na(V)1.5 inhibitors
title_short Multiple machine learning methods aided virtual screening of Na(V)1.5 inhibitors
title_sort multiple machine learning methods aided virtual screening of na(v)1.5 inhibitors
topic Original Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9843531/
https://www.ncbi.nlm.nih.gov/pubmed/36573431
http://dx.doi.org/10.1111/jcmm.17652
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