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Immune and Stroma Related Genes in Breast Cancer: A Comprehensive Analysis of Tumor Microenvironment Based on the Cancer Genome Atlas (TCGA) Database

机译:乳腺癌免疫和基质相关基因:基于癌症基因组阿特拉斯(TCGA)数据库的肿瘤微环境综合分析

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Background: Tumor microenvironment is essential for breast cancer progression and metastasis. Our study sets out to examine the genes affecting stromal and immune infiltration in breast cancer progression and prognosis. Materials and Methods: This work provides an approach for quantifying stromal and immune scores by using ESTIMATE algorithm based on gene expression matrix of breast cancer patients in TCGA database. We found differentially expressed genes (DEGs) through limma R package. Functional enrichments were accessed through Gene Ontology (GO) analysis and Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway analysis. Besides, we constructed a protein-protein network, identified several hub genes in Cytoscape, and discovered functionally similar genes in GeneMANIA. Hub genes were validated with prognostic data by Kaplan-Meier analysis both in The Cancer Genome Atlas (TCGA) database and Molecular Taxonomy of Breast Cancer International Consortium (METABRIC) database and a meta-analysis of hub genes prognosis data was utilized in multiple databases. Furthermore, their relationship with infiltrating immune cells was evaluated by Tumor IMmune Estimation Resource (TIMER) web tool. Cox regression was utilized for overall survival (OS) and recurrence-free survival (RFS) in TCGA database and OS in METABRIC database in order to evaluate the impact of stromal and immune scores on patients prognosis. Results: One thousand and eighty-five breast cancer patients were investigated and 480 differentiated expressed genes (DEGs) were found based on the analysis of mRNA expression profiles. Functional analysis of DEGs revealed their potential functions in immune response and extracellular interaction. Protein-protein interaction network gave evidence of 10 hub genes. Some of the hub genes could be used as predictive markers for patients prognosis. In this study, we found that tumor purity and specific immune cells infiltration varied in response to hub genes expression. The multivariate cox regression highlighted the fact that immune score played a detrimental role in overall survival (HR = 0.45, 95% CI: 0.27–0.74, p = 0.002) and recurrence-free survival (HR = 0.41, 95% CI: 0.22–0.77, p = 0.006) in TCGA database. These result was confirmed in METABRIC database that immune score was a protector of OS (HR = 0.88, 95% CI: 0.77–0.99, p = 0.039). Conclusions: Our findings promote a better understanding of the potential genes behind the regulation of tumor microenvironment and cells infiltration. Immune score should be considered as a prognostic factor for patients' survival.
机译:背景:肿瘤微环境对于乳腺癌进展和转移至关重要。我们的研究表明,检查影响乳腺癌进展和预后在乳腺癌进展中的基质和免疫浸润的基因。材料和方法:该作品提供了一种通过使用基于TCGA数据库中的乳腺癌患者基因表达矩阵的估计算法来定量基质和免疫分数的方法。我们通过利马R包发现差异表达的基因(DEGS)。通过基因本体(GO)分析和基因和基因组(KEGG)途径分析的京都百科全书进行功能富集。此外,我们构建了一种蛋白质蛋白质网络,在Cytoscape中鉴定了几个集线器基因,并在Genemania发现了功能相似的基因。通过Kaplan-Meier分析在癌症基因组地图集(​​TCGA)数据库中进行预后数据,以及乳腺癌国际联盟(Metaxcric)数据库的分子分类和集线器基因的Meta分析在多个数据库中使用了肠道基因。此外,通过肿瘤免疫估计资源(定时器)网状工具评估它们与渗透免疫细胞的关系。 Cox回归用于在Metabric数据库中的TCGA数据库中的整体存活(OS)和复发存活(RFS),以评估基质和免疫分数对患者预后的影响。结果:研究了一千和八十五八十五个乳腺癌患者,基于MRNA表达谱的分析发现了480个分化的表达基因(DEGS)。 DEG的功能分析显示了它们在免疫应答和细胞外相互作用中的潜在功能。蛋白质 - 蛋白质相互作用网络给出了10个枢纽基因的证据。一些轮毂基因可用作患者预后的预测标志物。在这项研究中,我们发现肿瘤纯度和特异性免疫细胞渗透响应于轮毂基因表达而变化。多元COX回归突出显示免疫评分在整体存活中发挥了不利作用的事实(HR = 0.45,95%CI:0.27-0.74,P = 0.002)和无复发存活(HR = 0.41,95%CI:0.22- TCGA数据库中的0.77,p = 0.006)。这些结果在元数据库中确认,免疫评分是OS的保护剂(HR = 0.88,95%CI:0.77-0.99,P = 0.039)。结论:我们的研究结果促进了对肿瘤微环境和细胞浸润调节后的潜在基因的更好理解。免疫分数应被视为患者存活的预后因素。

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