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通过网络药理学和实验验证研究二陈汤治疗结直肠癌的作用及机制。

Investigating the effects and mechanisms of Erchen Decoction in the treatment of colorectal cancer by network pharmacology and experimental validation.

作者信息

Shao Yanfei, Chen Jingxian, Hu Yujie, Wu Yuan, Zeng Hualin, Lin Shuying, Lai Qiying, Fan Xiaodong, Zhou Xueliang, Zheng Minhua, Gao Bizhen, Sun Jing

机构信息

Department of General Surgery, Ruijin Hospital, Shanghai Jiao Tong University School of Medicine, Shanghai, China.

Shanghai Minimally Invasive Surgery Center, Ruijin Hospital, Shanghai Jiao Tong University School of Medicine, Shanghai, China.

出版信息

Front Pharmacol. 2022 Oct 13;13:1000639. doi: 10.3389/fphar.2022.1000639. eCollection 2022.

Abstract

Erchen Decoction (ECD), a well-known traditional Chinese medicine, exerts metabolism-regulatory, immunoregulation, and anti-tumor effects. However, the action and pharmacological mechanism of ECD remain largely unclear. In the present study, we explored the effects and mechanisms of ECD in the treatment of CRC using network pharmacology, molecular docking, and systematic experimental validation. The active components of ECD were obtained from the TCMSP database and the potential targets of them were annotated by the STRING database. The CRC-related targets were identified from different databases (OMIM, DisGeNet, GeneCards, and DrugBank). The interactive targets of ECD and CRC were screened and the protein-protein interaction (PPI) networks were constructed. Then, the hub interactive targets were calculated and visualized from the PPI network using the Cytoscape software. Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway enrichment analyses were performed. In addition, the molecular docking was performed. Finally, systematic and molecular biology experiments were performed to further explore the anti-tumor effects and underlying mechanisms of ECD in CRC. A total of 116 active components and 246 targets of ECD were predicted based on the component-target network analysis. 2406 CRC-related targets were obtained from different databases and 140 intersective targets were identified between ECD and CRC. 12 hub molecules (STAT3, JUN, MAPK3, TP53, MAPK1, RELA, FOS, ESR1, IL6, MAPK14, MYC, and CDKN1A) were finally screened from PPI network. GO and KEGG pathway enrichment analyses demonstrated that the biological discrepancy was mainly focused on the tumorigenesis-, immune-, and mechanism-related pathways. Based on the experimental validation, ECD could suppress the proliferation of CRC cells by inhibiting cell cycle and promoting cell apoptosis. In addition, ECD could inhibit tumor growth in mice. Finally, the results of molecular biology experiments suggested ECD could regulate the transcriptional levels of several hub molecules during the development of CRC, including MAPKs, PPARs, TP53, and STATs. This study revealed the potential pharmacodynamic material basis and underlying molecular mechanisms of ECD in the treatment of CRC, providing a novel insight for us to find more effective anti-CRC drugs.

摘要

二陈汤(ECD)是一种著名的中药,具有调节代谢、免疫调节和抗肿瘤作用。然而,ECD的作用和药理机制仍不清楚。在本研究中,我们采用网络药理学、分子对接和系统实验验证,探讨了ECD治疗结直肠癌(CRC)的作用及机制。ECD的活性成分从中药系统药理学数据库(TCMSP)中获取,其潜在靶点通过STRING数据库注释。CRC相关靶点从不同数据库(人类孟德尔遗传数据库(OMIM)、疾病基因数据库(DisGeNet)、基因卡片数据库(GeneCards)和药物银行数据库(DrugBank))中确定。筛选出ECD与CRC的相互作用靶点,并构建蛋白质-蛋白质相互作用(PPI)网络。然后,使用Cytoscape软件从PPI网络中计算并可视化枢纽相互作用靶点。进行基因本体(GO)和京都基因与基因组百科全书(KEGG)通路富集分析。此外,还进行了分子对接。最后,进行系统生物学和分子生物学实验,进一步探讨ECD在CRC中的抗肿瘤作用及潜在机制。基于成分-靶点网络分析,共预测出ECD的116种活性成分和246个靶点。从不同数据库中获得2406个CRC相关靶点,确定ECD与CRC之间有140个交集靶点。最终从PPI网络中筛选出12个枢纽分子(信号转导与转录激活因子3(STAT3)、原癌基因蛋白Jun(JUN)、丝裂原活化蛋白激酶3(MAPK3)、肿瘤蛋白p53(TP53)、丝裂原活化蛋白激酶1(MAPK1)、信号转导与转录激活因子RelA(RELA)、原癌基因蛋白Fos(FOS)、雌激素受体1(ESR1)、白细胞介素6(IL6)、丝裂原活化蛋白激酶14(MAPK14)、原癌基因Myc(MYC)和细胞周期蛋白依赖性激酶抑制剂1A(CDKN1A))。GO和KEGG通路富集分析表明,生物学差异主要集中在肿瘤发生、免疫和机制相关通路。基于实验验证,ECD可通过抑制细胞周期和促进细胞凋亡来抑制CRC细胞的增殖。此外,ECD可抑制小鼠肿瘤生长。最后,分子生物学实验结果表明,ECD可在CRC发生发展过程中调节多个枢纽分子的转录水平,包括丝裂原活化蛋白激酶(MAPKs)、过氧化物酶体增殖物激活受体(PPARs)、TP53和信号转导与转录激活因子(STATs)。本研究揭示了ECD治疗CRC的潜在药效物质基础和潜在分子机制,为寻找更有效的抗CRC药物提供了新的见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3f49/9606229/bb129e6e3a5d/fphar-13-1000639-g001.jpg

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