Chongqing Key Laboratory of Translational Medicine, Research for Cancer Metastasis and Individualized Treatment, Chongqing University Cancer Hospital, Chongqing 400000, China.
J Biosci. 2024;49.
The development and progression of breast cancer (BC) depend heavily on the tumor microenvironment (TME), especially tumor infiltration leukocytes (TILs). TME-based classifications in BC remain largely unknown and need to be clarified. Using the bioinformatic analysis, we attempted to construct a prognostic nomogram based on clinical features and TME-related differentially expressed genes (DEGs). We also tried to investigate the association between the prognostic nomogram and clinical characteristics, TILs, possible signaling pathways, and response to immunotherapy in BC patients. DEGs for BC patients were identified from The Cancer Genome Atlas Breast Invasive Carcinoma database. TME-related genes were downloaded from the Immunology Database and Analysis Portal. After intersecting DEGs and TME-related genes, 3985 overlapping TME-related DEGs were selected for non-negative matrix factorization clustering, microenvironment cell populations-counter (MCP-counter), LASSO Cox regression, tumor immune dysfunction, and exclusion (TIDE) algorithm analyses. BC patients were divided into three clusters based on the TME-related DEGs and survival data, in which cluster 3 had the best overall survival (OS). Of note, cluster 3 exhibited the highest infiltration or lowest infiltration of CD T-cells, CD T-cells, cytotoxic lymphocytes, B-lymphocytes, monocytic lineage, and myeloid dendritic cells (MDCs). A total of 33 TME-related DEGs were identified as a prognostic gene signature by the LASSO regression analysis. The prognostic gene signature separated BC patients into low- and high-risk groups with significant differences in OS (p<0.01) and demonstrated powerful effectiveness (TCGA all group: 1-year area under the curve [AUC] = 0.773, 3-year AUC = 0.770, 5-year AUC = 0.792). By integrating demographic features, tumor-node metastasis (TNM) stages, and prognostic gene signature, we constructed a nomogram with better predictive value than other clinical features alone. TMErelated DEGs in the low-risk BC patients (with better OS) were enriched in chemokine, cytokine-cytokine receptor interaction, and JAK-STAT and Toll-like receptor signaling pathways. BC patients in the low-risk group exhibited higher TIDE scores associated with worse immune checkpoint blockade response. A prognostic nomogram based on TME-related DEGs and clinical characteristics could predict prognosis and guide immunotherapy in BC patients.
乳腺癌(BC)的发展和进展在很大程度上依赖于肿瘤微环境(TME),特别是肿瘤浸润白细胞(TIL)。BC 基于 TME 的分类在很大程度上仍然未知,需要进一步阐明。本研究通过生物信息学分析,试图构建基于临床特征和 TME 相关差异表达基因(DEG)的预后列线图。我们还试图研究预后列线图与 BC 患者的临床特征、TILs、可能的信号通路和对免疫治疗的反应之间的关系。从癌症基因组图谱乳腺浸润性癌数据库中确定了用于 BC 患者的 DEG。从免疫数据库和分析门户下载了与 TME 相关的基因。在将 DEG 和与 TME 相关的基因进行交集后,选择了 3985 个重叠的与 TME 相关的 DEG 进行非负矩阵分解聚类、微环境细胞群计数器(MCP-counter)、LASSO Cox 回归、肿瘤免疫功能障碍和排除(TIDE)算法分析。根据 TME 相关 DEG 和生存数据,将 BC 患者分为三组,其中第 3 组的总体生存率(OS)最佳。值得注意的是,第 3 组显示出最高或最低的 CD T 细胞、CD T 细胞、细胞毒性淋巴细胞、B 淋巴细胞、单核细胞谱系和髓样树突状细胞(MDC)浸润。通过 LASSO 回归分析共鉴定出 33 个与 TME 相关的 DEG 作为预后基因特征。该预后基因特征将 BC 患者分为低风险和高风险组,两组在 OS 方面有显著差异(p<0.01),且效果显著(TCGA 所有组:1 年 AUC=0.773,3 年 AUC=0.770,5 年 AUC=0.792)。通过整合人口统计学特征、肿瘤-淋巴结-转移(TNM)分期和预后基因特征,我们构建了一个比单独使用其他临床特征具有更好预测价值的列线图。具有更好 OS 的低风险 BC 患者的 TME 相关 DEG 富集于趋化因子、细胞因子-细胞因子受体相互作用、JAK-STAT 和 Toll 样受体信号通路。低风险组 BC 患者的 TIDE 评分较高,与免疫检查点阻断反应较差相关。基于 TME 相关 DEG 和临床特征的预后列线图可预测预后并指导 BC 患者的免疫治疗。