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A Systems Biology Approach Provides Deeper Insights into Differentially Expressed Genes in Taxane-Anthracycline Chemoresistant and Non-Resistant Breast Cancers

机译:系统生物学方法可更深入地了解紫杉烷-蒽环类化学耐药和非耐药性乳腺癌中差异表达的基因

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Objective: To date, numerous studies have been conducted to search for reasons for chemoresistance and differences in survival rates of patients receiving chemotherapy. We have sought to identify differentially expressed genes (DEGs) between predicted chemotherapy resistance and sensitive phenotypes by a network as well as gene enrichment approach. Methods: Functional modules were explored with network analysis of DEGs in predicted neoadjuvant taxane-anthracycline resistance versus sensitive cases in the GSE25066 dataset, including 508 samples. A linear model was created by limma package in R to establish DEGs. Results: A gene set related to phagocytic vesicle membrane was found to be up-regulated in chemoresistance samples. Also, we found GO_CYTOKINE_ACTIVITY and GO_GROWTH_FACTOR BINDING to be up-regulated gene sets with the chemoresistance phenotype. Growth factors and cytokines are two groups of agents that induce the immune system to recruit APCs and promote tolerogenic phagocytosis. Some hub nodes like S100A8 were found to be important in the chemoresistant tumor cell network with associated high rank genes in GSEA. Conclusions: Functional gene sets and hub nodes could be considered as potential treatment targets. Moreover, by screening and enrichment analysis of a chemoresistance network, ligands and chemical agents have been found that could modify significant gene sets like the phagocytic vesicle membrane functional gene set as a key to chemoresistance. They could also impact on down- or up-regulated hub nodes.
机译:目的:迄今为止,已经进行了许多研究来寻找化学抗药性的原因以及接受化疗的患者生存率的差异。我们试图通过网络以及基因富集方法来鉴定预测的化疗耐药性和敏感表型之间的差异表达基因(DEG)。方法:通过网络分析DEG的功能模块,以预测GSE25066数据集中包括508个样本的新辅助紫杉烷-蒽环类药物耐药情况与敏感病例的关系。通过limma程序包在R中创建线性模型以建立DEG。结果:在化学抗性样品中发现了与吞噬小泡膜相关的基因组上调。此外,我们发现GO_CYTOKINE_ACTIVITY和GO_GROWTH_FACTOR BINDING是具有化学抗性表型的上调基因集。生长因子和细胞因子是诱导免疫系统募集APC并促进耐受性吞噬作用的两类药物。已发现一些枢纽节点(如S100A8)在具有化学抗性的肿瘤细胞网络中具有重要的GSEA相关高等级基因。结论:功能基因集和中心节点可以被视为潜在的治疗目标。此外,通过对化学抗性网络的筛选和富集分析,已发现可以修饰重要基因集的配体和化学试剂,如吞噬小泡膜功能基因集是化学抗性的关键。它们还可能影响下调或上调的集线器节点。

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