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Computational Network Pharmacology–Based Strategy to Capture Key Functional Components and Decode the Mechanism of Chai-Hu-Shu-Gan-San in Treating Depression

Traditional Chinese medicine (TCM) usually plays therapeutic roles on complex diseases in the form of formulas. However, the multicomponent and multitarget characteristics of formulas bring great challenges to the mechanism analysis and secondary development of TCM in treating complex diseases. Mode...

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Autores principales: Wang, Kexin, Li, Kai, Chen, Yupeng, Wei, Genxia, Yu, Hailang, Li, Yi, Meng, Wei, Wang, Handuo, Gao, Li, Lu, Aiping, Peng, Junxiang, Guan, Daogang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8633106/
https://www.ncbi.nlm.nih.gov/pubmed/34867413
http://dx.doi.org/10.3389/fphar.2021.782060
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author Wang, Kexin
Li, Kai
Chen, Yupeng
Wei, Genxia
Yu, Hailang
Li, Yi
Meng, Wei
Wang, Handuo
Gao, Li
Lu, Aiping
Peng, Junxiang
Guan, Daogang
author_facet Wang, Kexin
Li, Kai
Chen, Yupeng
Wei, Genxia
Yu, Hailang
Li, Yi
Meng, Wei
Wang, Handuo
Gao, Li
Lu, Aiping
Peng, Junxiang
Guan, Daogang
author_sort Wang, Kexin
collection PubMed
description Traditional Chinese medicine (TCM) usually plays therapeutic roles on complex diseases in the form of formulas. However, the multicomponent and multitarget characteristics of formulas bring great challenges to the mechanism analysis and secondary development of TCM in treating complex diseases. Modern bioinformatics provides a new opportunity for the optimization of TCM formulas. In this report, a new bioinformatics analysis of a computational network pharmacology model was designed, which takes Chai-Hu-Shu-Gan-San (CHSGS) treatment of depression as the case. In this model, effective intervention space was constructed to depict the core network of the intervention effect transferred from component targets to pathogenic genes based on a novel node importance calculation method. The intervention-response proteins were selected from the effective intervention space, and the core group of functional components (CGFC) was selected based on these intervention-response proteins. Results show that the enriched pathways and GO terms of intervention-response proteins in effective intervention space could cover 95.3 and 95.7% of the common pathways and GO terms that respond to the major functional therapeutic effects. Additionally, 71 components from 1,012 components were predicted as CGFC, the targets of CGFC enriched in 174 pathways which cover the 86.19% enriched pathways of pathogenic genes. Based on the CGFC, two major mechanism chains were inferred and validated. Finally, the core components in CGFC were evaluated by in vitro experiments. These results indicate that the proposed model with good accuracy in screening the CGFC and inferring potential mechanisms in the formula of TCM, which provides reference for the optimization and mechanism analysis of the formula in TCM.
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spelling pubmed-86331062021-12-02 Computational Network Pharmacology–Based Strategy to Capture Key Functional Components and Decode the Mechanism of Chai-Hu-Shu-Gan-San in Treating Depression Wang, Kexin Li, Kai Chen, Yupeng Wei, Genxia Yu, Hailang Li, Yi Meng, Wei Wang, Handuo Gao, Li Lu, Aiping Peng, Junxiang Guan, Daogang Front Pharmacol Pharmacology Traditional Chinese medicine (TCM) usually plays therapeutic roles on complex diseases in the form of formulas. However, the multicomponent and multitarget characteristics of formulas bring great challenges to the mechanism analysis and secondary development of TCM in treating complex diseases. Modern bioinformatics provides a new opportunity for the optimization of TCM formulas. In this report, a new bioinformatics analysis of a computational network pharmacology model was designed, which takes Chai-Hu-Shu-Gan-San (CHSGS) treatment of depression as the case. In this model, effective intervention space was constructed to depict the core network of the intervention effect transferred from component targets to pathogenic genes based on a novel node importance calculation method. The intervention-response proteins were selected from the effective intervention space, and the core group of functional components (CGFC) was selected based on these intervention-response proteins. Results show that the enriched pathways and GO terms of intervention-response proteins in effective intervention space could cover 95.3 and 95.7% of the common pathways and GO terms that respond to the major functional therapeutic effects. Additionally, 71 components from 1,012 components were predicted as CGFC, the targets of CGFC enriched in 174 pathways which cover the 86.19% enriched pathways of pathogenic genes. Based on the CGFC, two major mechanism chains were inferred and validated. Finally, the core components in CGFC were evaluated by in vitro experiments. These results indicate that the proposed model with good accuracy in screening the CGFC and inferring potential mechanisms in the formula of TCM, which provides reference for the optimization and mechanism analysis of the formula in TCM. Frontiers Media S.A. 2021-11-12 /pmc/articles/PMC8633106/ /pubmed/34867413 http://dx.doi.org/10.3389/fphar.2021.782060 Text en Copyright © 2021 Wang, Li, Chen, Wei, Yu, Li, Meng, Wang, Gao, Lu, Peng and Guan. 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 Pharmacology
Wang, Kexin
Li, Kai
Chen, Yupeng
Wei, Genxia
Yu, Hailang
Li, Yi
Meng, Wei
Wang, Handuo
Gao, Li
Lu, Aiping
Peng, Junxiang
Guan, Daogang
Computational Network Pharmacology–Based Strategy to Capture Key Functional Components and Decode the Mechanism of Chai-Hu-Shu-Gan-San in Treating Depression
title Computational Network Pharmacology–Based Strategy to Capture Key Functional Components and Decode the Mechanism of Chai-Hu-Shu-Gan-San in Treating Depression
title_full Computational Network Pharmacology–Based Strategy to Capture Key Functional Components and Decode the Mechanism of Chai-Hu-Shu-Gan-San in Treating Depression
title_fullStr Computational Network Pharmacology–Based Strategy to Capture Key Functional Components and Decode the Mechanism of Chai-Hu-Shu-Gan-San in Treating Depression
title_full_unstemmed Computational Network Pharmacology–Based Strategy to Capture Key Functional Components and Decode the Mechanism of Chai-Hu-Shu-Gan-San in Treating Depression
title_short Computational Network Pharmacology–Based Strategy to Capture Key Functional Components and Decode the Mechanism of Chai-Hu-Shu-Gan-San in Treating Depression
title_sort computational network pharmacology–based strategy to capture key functional components and decode the mechanism of chai-hu-shu-gan-san in treating depression
topic Pharmacology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8633106/
https://www.ncbi.nlm.nih.gov/pubmed/34867413
http://dx.doi.org/10.3389/fphar.2021.782060
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