Literature DB >> 32464328

Artificial intelligence and network pharmacology based investigation of pharmacological mechanism and substance basis of Xiaokewan in treating diabetes.

Chunyan Zhu1, Tingting Cai2, Ying Jin3, Jiayun Chen1, Guoqiang Liu4, Niusheng Xu4, Rong Shen5, Yuhong Chen1, Luying Han1, Suping Wang1, Caisheng Wu6, Mingshe Zhu7.   

Abstract

Xiaokewan is a typical Traditional Chinese medicine (TCM) for diabetes and contains various natural chemicals, such as lignans, flavonoids, saponins, polysaccharides, and western medicine glibenclamide. In the current study, a highly efficient system for screening hypoglycemic efficacy constituents of Xiaokewan has been developed with the integration of intelligent data acquisition, data mining, network pharmacology, and computer assisted target fishing. With the combination of background exclusion data dependent acquisition (BE-DDA) and non-targeted precise-and-thorough background-subtraction (PATBS) techniques, a novel workflow has been established for the non-targeted recognition and identification of TCM constituents in vivo, and has been applied to the exposure study of Xiaokewan in rat. In this case, an interesting correlation among drug, target, and disease can be established, by combining the screening or characterization results with the strategy of network pharmacology and multiple computer assisted techniques. Consequently, five main constituents (puerarin, daidzein, formononetin, deoxyschizandrin and glibenclamide) exposed in vivo have been selected as effective hypoglycemic components. Meanwhile, the network pharmacology experimental results showed that these five constituents could act on various drug targets, such as PI3K, PTP1B, MAPK, AKT, TNF, and NF-κB. These five constituents might be involved in the regulation of β-cell function or exhibit inflammation inhibition ability to relieve the pathophysiological process of disease from multiple links. Furthermore, the pharmacological effects of these five constituents have been verified by diabetic zebrafish model. The zebrafish model results showed that the TCM monomer mixture without glibenclamide exhibited similar hypoglycemic activity with Xiaokewan. Although the monomer mixture with glibenclamide showed better activity than Xiaokewan only, the deoxyschizandrin (TCM constituent of Xiaokewan) exhibited best hypoglycemic performance. In summary, the above results indicated that the application of both intelligent recognition technology in mass spectrometry dataset and computerized network pharmacology might provide a pioneering approach for investigating the substance basis of TCM and searching lead compounds from natural sources.
Copyright © 2020 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Background exclusion data dependent acquisition; Chinese traditional medicine; Diabetes; Metabolites; Network pharmacology; Non-targeted data mining

Mesh:

Substances:

Year:  2020        PMID: 32464328     DOI: 10.1016/j.phrs.2020.104935

Source DB:  PubMed          Journal:  Pharmacol Res        ISSN: 1043-6618            Impact factor:   7.658


  6 in total

1.  Bioactive Components and Potential Mechanism Prediction of Kui Jie Kang against Ulcerative Colitis via Systematic Pharmacology and UPLC-QE-MS Analysis.

Authors:  Jinbiao He; Chunping Wan; Xiaosi Li; Zishu Zhang; Yu Yang; Huaning Wang; Yan Qi
Journal:  Evid Based Complement Alternat Med       Date:  2022-06-21       Impact factor: 2.650

2.  Identifying potential anti-COVID-19 pharmacological components of traditional Chinese medicine Lianhuaqingwen capsule based on human exposure and ACE2 biochromatography screening.

Authors:  Xiaofei Chen; Yunlong Wu; Chun Chen; Yanqiu Gu; Chunyan Zhu; Suping Wang; Jiayun Chen; Lei Zhang; Lei Lv; Guoqing Zhang; Yongfang Yuan; Yifeng Chai; Mingshe Zhu; Caisheng Wu
Journal:  Acta Pharm Sin B       Date:  2020-10-10       Impact factor: 11.413

3.  Exploration of Q-Marker of Rhubarb Based on Intelligent Data Processing Techniques and the AUC Pooled Method.

Authors:  Jiayun Chen; Xiaojuan Jiang; Chunyan Zhu; Lu Yang; Minting Liu; Mingshe Zhu; Caisheng Wu
Journal:  Front Pharmacol       Date:  2022-03-21       Impact factor: 5.810

4.  Active components and molecular mechanism of Syringa oblata Lindl. in the treatment of endometritis based on pharmacology network prediction.

Authors:  Xiao-Zhen Wang; Xue-Jiao Song; Chang Liu; Chen Xing; Tong Wu; Yue Zhang; Jing Su; Jing-You Hao; Xue-Ying Chen; Zhi-Yun Zhang; Yan-Hua Li; Yan-Yan Liu
Journal:  Front Vet Sci       Date:  2022-07-22

Review 5.  Methodology of network pharmacology for research on Chinese herbal medicine against COVID-19: A review.

Authors:  Yi-Xuan Wang; Zhen Yang; Wen-Xiao Wang; Yu-Xi Huang; Qiao Zhang; Jia-Jia Li; Yu-Ping Tang; Shi-Jun Yue
Journal:  J Integr Med       Date:  2022-09-22

Review 6.  Unraveling the mystery of efficacy in Chinese medicine formula: New approaches and technologies for research on pharmacodynamic substances.

Authors:  Yaolei Li; Zhijian Lin; Yu Wang; Shanshan Ju; Hao Wu; Hongyu Jin; Shuangcheng Ma; Bing Zhang
Journal:  Arab J Chem       Date:  2022-09-27       Impact factor: 6.212

  6 in total

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