The potential mechanism of antifluorescent lung cancer by Chinese medicine Huang Qin: Based on bioinformatics molecular, network pharmacology and imaging histology analysis

IF 1.7 4区 综合性期刊 Q2 MULTIDISCIPLINARY SCIENCES
Shi Su , Jianghan Luo , Fuling Wang , Siming Li , Yuan Gao , Lijun Yan
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引用次数: 0

Abstract

This study provides a deep analysis of the potential mechanisms and effects of the traditional Chinese medicine Scutellaria baicalensis in the treatment of non-small cell lung cancer (NSCLC). By integrating public databases and clinical resources, we adopted a comprehensive strategy combining bioinformatics, network pharmacology, and machine learning techniques to screen out tumor biomarkers closely related to the prognosis of NSCLC, and constructed an accurate predictive model to comprehensively elucidate the complex interactions between the active components of Scutellaria baicalensis and the prognosis of NSCLC. The incorporation of radiomics technology enabled us to extract high-throughput radiological features from medical images, achieving non-invasive prediction of tumor biomarker expression status, further enriching our research methods. We constructed a Scutellaria baicalensis-NSCLC interaction network, accurately calculating the intersection of drug-specific targets and disease-related targets, and utilized protein-protein interaction (PPI) networks and functional enrichment analyses to deeply explore the potential mechanisms of action between Scutellaria baicalensis components and NSCLC. With the help of machine learning tools, we successfully identified key hub genes and verified their importance in lung cancer treatment protocols through immune infiltration analysis and molecular docking studies. The study results showed that 45 active components were screened out, with 628 active component-related target sites, 3076 differentially expressed genes, and 5628 co-expressed genes related to the disease Module genes, intersecting targets 98; GO functional enrichment analysis mainly enriched to BP entries 581, cell composition CC entries 23, molecular function MF entries 30 (p.adj <0.01); KEGG pathway enrichment analysis screened out 111 significant signaling pathways (P < 0.05), mainly involving IL-17 Signaling Pathway, TNF Pathway, AGE-RAGE Signaling Pathway in diabaetic,P53 Signaling Pathway, Toll-like rector et al.; molecular docking showed that compounds have good affinity with the screened core targets GAPDHIL6, TNF, JUN, MMP9, CDH1. Machine learning predicted the intersection of core target genes, among which 5 (FABP4, XDH, GPBAR1, CA4, CDH1) were identified as key target genes for drug therapy. This study not only revealed the significant potential and mechanism of action of Scutellaria baicalensis in anti-non-small cell lung cancer but also provided new perspectives and insights for the development of multi-target drug therapy strategies. By integrating various advanced technologies and methods, we have provided a solid theoretical basis and practical guidance for precision treatment and personalized medication for NSCLC, offering new hope for lung cancer patients.
中药黄芩抗荧光肺癌的潜在机制:基于生物信息学、分子、网络药理学和影像学组织学分析
本研究深入分析了中药黄芩治疗非小细胞肺癌(NSCLC)的潜在机制和作用。通过整合公共数据库和临床资源,采用生物信息学、网络药理学和机器学习技术相结合的综合策略,筛选出与NSCLC预后密切相关的肿瘤生物标志物,构建准确的预测模型,全面阐明黄芩有效成分与NSCLC预后之间的复杂相互作用。结合放射组学技术,使我们能够从医学图像中提取高通量的放射学特征,实现对肿瘤生物标志物表达状态的无创预测,进一步丰富了我们的研究方法。我们构建了黄芩-NSCLC相互作用网络,准确计算药物特异性靶点与疾病相关靶点的交集,并利用蛋白-蛋白相互作用(PPI)网络和功能富集分析,深入探讨黄芩成分与NSCLC的潜在作用机制。在机器学习工具的帮助下,我们成功地识别了关键枢纽基因,并通过免疫浸润分析和分子对接研究验证了它们在肺癌治疗方案中的重要性。研究结果显示,共筛选出45个活性成分,其中活性成分相关靶位628个,与疾病模块基因相关的差异表达基因3076个,共表达基因5628个,交叉靶位98个;GO功能富集分析主要富集到BP条目581个,细胞成分CC条目23个,分子功能MF条目30个(p.adj <0.01);KEGG通路富集分析筛选出111条重要信号通路(P <;0.05),主要涉及IL-17信号通路、TNF信号通路、糖尿病AGE-RAGE信号通路、P53信号通路、toll样受体等;分子对接结果表明,化合物与筛选的核心靶点GAPDHIL6、TNF、JUN、MMP9、CDH1具有良好的亲和力。机器学习预测了核心靶基因的交集,其中5个(FABP4、XDH、GPBAR1、CA4、CDH1)被确定为药物治疗的关键靶基因。本研究不仅揭示了黄芩抗非小细胞肺癌的重要潜力和作用机制,也为多靶点药物治疗策略的开发提供了新的视角和见解。通过整合各种先进技术和方法,为NSCLC的精准治疗和个性化用药提供了坚实的理论基础和实践指导,为肺癌患者带来了新的希望。
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来源期刊
自引率
5.90%
发文量
130
审稿时长
16 weeks
期刊介绍: Journal of Radiation Research and Applied Sciences provides a high quality medium for the publication of substantial, original and scientific and technological papers on the development and applications of nuclear, radiation and isotopes in biology, medicine, drugs, biochemistry, microbiology, agriculture, entomology, food technology, chemistry, physics, solid states, engineering, environmental and applied sciences.
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