Department of General Surgery, Jiangsu Cancer Hospital & Jiangsu Institute of Cancer Research & The Affiliated Cancer Hospital of Nanjing Medical University, Nanjing, 210009, China.
First Clinical Medical College of Nanjing Medical University, Nanjing, 210029, China.
BMC Cancer. 2021 Mar 30;21(1):329. doi: 10.1186/s12885-021-08041-x.
Breast cancer is one of the main malignant tumors that threaten the lives of women, which has received more and more clinical attention worldwide. There are increasing evidences showing that the immune micro-environment of breast cancer (BC) seriously affects the clinical outcome. This study aims to explore the role of tumor immune genes in the prognosis of BC patients and construct an immune-related genes prognostic index.
The list of 2498 immune genes was obtained from ImmPort database. In addition, gene expression data and clinical characteristics data of BC patients were also obtained from the TCGA database. The prognostic correlation of the differential genes was analyzed through Survival package. Cox regression analysis was performed to analyze the prognostic effect of immune genes. According to the regression coefficients of prognostic immune genes in regression analysis, an immune risk scores model was established. Gene set enrichment analysis (GSEA) was performed to probe the biological correlation of immune gene scores. P < 0.05 was considered to be statistically significant.
In total, 556 immune genes were differentially expressed between normal tissues and BC tissues (p < 0. 05). According to the univariate cox regression analysis, a total of 66 immune genes were statistically significant for survival risk, of which 30 were associated with overall survival (P < 0.05). Finally, a 15 immune genes risk scores model was established. All patients were divided into high- and low-groups. KM survival analysis revealed that high immune risk scores represented worse survival (p < 0.001). ROC curve indicated that the immune genes risk scores model had a good reliability in predicting prognosis (5-year OS, AUC = 0.752). The established risk model showed splendid AUC value in the validation dataset (3-year over survival (OS) AUC = 0.685, 5-year OS AUC = 0.717, P = 0.00048). Moreover, the immune risk signature was proved to be an independent prognostic factor for BC patients. Finally, it was found that 15 immune genes and risk scores had significant clinical correlations, and were involved in a variety of carcinogenic pathways.
In conclusion, our study provides a new perspective for the expression of immune genes in BC. The constructed model has potential value for the prognostic prediction of BC patients and may provide some references for the clinical precision immunotherapy of patients.
乳腺癌是威胁女性生命的主要恶性肿瘤之一,在全球范围内受到越来越多的临床关注。越来越多的证据表明,乳腺癌(BC)的免疫微环境严重影响临床结局。本研究旨在探讨肿瘤免疫基因在 BC 患者预后中的作用,并构建免疫相关基因预后指数。
从 ImmPort 数据库中获得 2498 个免疫基因列表。此外,还从 TCGA 数据库中获得了 BC 患者的基因表达数据和临床特征数据。通过 Survival 包分析差异基因的预后相关性。通过 Cox 回归分析进行免疫基因的预后效应分析。根据回归分析中预后免疫基因的回归系数,建立免疫风险评分模型。进行基因集富集分析(GSEA)以探讨免疫基因评分的生物学相关性。P<0.05 认为具有统计学意义。
总共,正常组织和 BC 组织之间有 556 个免疫基因表达差异(p<0.05)。根据单因素 Cox 回归分析,共有 66 个免疫基因与生存风险统计学相关,其中 30 个与总生存相关(P<0.05)。最后,建立了一个 15 个免疫基因风险评分模型。将所有患者分为高风险和低风险组。KM 生存分析显示,高免疫风险评分组的生存状况较差(p<0.001)。ROC 曲线表明,免疫基因风险评分模型在预测预后方面具有良好的可靠性(5 年 OS,AUC=0.752)。该风险模型在验证数据集上显示出优异的 AUC 值(3 年 OS AUC=0.685,5 年 OS AUC=0.717,P=0.00048)。此外,免疫风险特征被证明是 BC 患者的独立预后因素。最后,发现 15 个免疫基因和风险评分与临床显著相关,并且涉及多种致癌途径。
总之,本研究为 BC 中免疫基因的表达提供了新的视角。构建的模型对 BC 患者的预后预测具有潜在价值,可能为患者的临床精准免疫治疗提供一些参考。