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基于网络分析的药物靶点识别:以四逆汤中的活性成分为例。

Drug target identification using network analysis: Taking active components in Sini decoction as an example.

作者信息

Chen Si, Jiang Hailong, Cao Yan, Wang Yun, Hu Ziheng, Zhu Zhenyu, Chai Yifeng

机构信息

School of Pharmacy, Second Military Medical University, 325 Guohe Road, Shanghai, 200433, China.

School of Pharmacy, University of Pittsburgh, 3501 Terrace Street, Pittsburgh, PA, 15261, USA.

出版信息

Sci Rep. 2016 Apr 20;6:24245. doi: 10.1038/srep24245.

Abstract

Identifying the molecular targets for the beneficial effects of active small-molecule compounds simultaneously is an important and currently unmet challenge. In this study, we firstly proposed network analysis by integrating data from network pharmacology and metabolomics to identify targets of active components in sini decoction (SND) simultaneously against heart failure. To begin with, 48 potential active components in SND against heart failure were predicted by serum pharmacochemistry, text mining and similarity match. Then, we employed network pharmacology including text mining and molecular docking to identify the potential targets of these components. The key enriched processes, pathways and related diseases of these target proteins were analyzed by STRING database. At last, network analysis was conducted to identify most possible targets of components in SND. Among the 25 targets predicted by network analysis, tumor necrosis factor α (TNF-α) was firstly experimentally validated in molecular and cellular level. Results indicated that hypaconitine, mesaconitine, higenamine and quercetin in SND can directly bind to TNF-α, reduce the TNF-α-mediated cytotoxicity on L929 cells and exert anti-myocardial cell apoptosis effects. We envisage that network analysis will also be useful in target identification of a bioactive compound.

摘要

同时确定活性小分子化合物有益作用的分子靶点是一项重要且目前尚未解决的挑战。在本研究中,我们首先提出通过整合网络药理学和代谢组学数据进行网络分析,以同时确定四逆汤(SND)中活性成分针对心力衰竭的靶点。首先,通过血清药物化学、文本挖掘和相似性匹配预测了SND中48种针对心力衰竭的潜在活性成分。然后,我们采用包括文本挖掘和分子对接在内的网络药理学方法来确定这些成分的潜在靶点。通过STRING数据库分析了这些靶蛋白的关键富集过程、途径和相关疾病。最后,进行网络分析以确定SND中成分最可能的靶点。在通过网络分析预测的25个靶点中,肿瘤坏死因子α(TNF-α)首先在分子和细胞水平上得到实验验证。结果表明,SND中的次乌头碱、新乌头碱、去甲乌药碱和槲皮素可直接与TNF-α结合,降低TNF-α对L929细胞的细胞毒性,并发挥抗心肌细胞凋亡作用。我们设想网络分析在生物活性化合物的靶点鉴定中也将有用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e0b1/4837341/2f6db76477e5/srep24245-f1.jpg

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