Du Feng, Ju Jie, Zheng Fangchao, Gao Songlin, Yuan Peng
Key Laboratory of Carcinogenesis and Translational Research (Ministry of Education/Beijing), The VIPII Gastrointestinal Cancer Division of Medical Department Peking University Cancer Hospital and Institute Beijing China.
Key Laboratory of Carcinogenesis and Translational Research (Ministry of Education/Beijing), Department of Day Care Peking University Cancer Hospital and Institute Beijing China.
Cancer Innov. 2025 May 27;4(4):e70013. doi: 10.1002/cai2.70013. eCollection 2025 Aug.
Breast cancer is a highly heterogeneous disease, characterized by tumor and nontumor cells at various cell states. Ecotyper is an innovative machine learning framework that quantifies the tumor microenvironment and delineates the tumor ecosystem, demonstrating clinical significance. However, further validation is needed in breast cancer.
Ecotyper was applied to identify multiple cellular states and tumor ecotypes using large-scale breast cancer bulk sequencing data, followed by a detailed analysis of their associations with clinical classification, molecular subtypes, survival prognosis, and immunotherapy response. Identified subtypes were further characterized using single-cell and spatial data sets to reveal molecular profiles.
In a comprehensive analysis of 6578 breast cancer samples from four data sets, Ecotyper identified 69 cellular states and 10 tumor ecotypes. Of these, 37 cellular states significantly correlated with overall survival. Notably, specific states within epithelial cells, macrophages/monocytes, and fibroblasts were linked to a worse prognosis. CE2 abundance was identified as the most significant marker indicating unfavorable prognosis and was further validated in an additional data set of 116 HER2-negative patients. These biomarkers also indicated the efficacy of neoadjuvant immunotherapy in breast cancer. CE2-high cancers were characterized by an abundance of basal-like epithelial cells, scant lymphocytic infiltration, and activation of hypoxia signaling. Single-cell analysis showed that CE2-high areas were rich in SPP1-positive tumor-associated macrophages(TAM), basal-like epithelial cells, and hypoxic cancer-associated fibroblasts(CAF). Spatially, these regions were often peripheral in triple-negative breast cancer, adjacent to fibrotic/necrotic zones. Multiplex immunofluorescence confirmed the enrichment of SPP1+CD68+TAM and HIF1A+SMA+CAF in hypoxic triple-negative breast cancer (TNBC) regions.
Ecotyper identified novel biomarkers for breast cancer prognosis and treatment prediction. The CE2-high region may represent a hypoxic immune-suppressive niche.
乳腺癌是一种高度异质性疾病,其特征在于处于各种细胞状态的肿瘤细胞和非肿瘤细胞。Ecotyper是一种创新的机器学习框架,可量化肿瘤微环境并描绘肿瘤生态系统,具有临床意义。然而,乳腺癌还需要进一步验证。
应用Ecotyper利用大规模乳腺癌批量测序数据识别多种细胞状态和肿瘤生态型,随后详细分析它们与临床分类、分子亚型、生存预后和免疫治疗反应的关联。使用单细胞和空间数据集对鉴定出的亚型进行进一步表征,以揭示分子特征。
在对来自四个数据集的6578个乳腺癌样本进行的综合分析中,Ecotyper识别出69种细胞状态和10种肿瘤生态型。其中,37种细胞状态与总生存期显著相关。值得注意的是,上皮细胞、巨噬细胞/单核细胞和成纤维细胞中的特定状态与较差的预后相关。CE2丰度被确定为表明预后不良的最显著标志物,并在另外116例HER2阴性患者的数据集中得到进一步验证。这些生物标志物还表明了新辅助免疫治疗在乳腺癌中的疗效。CE2高的癌症特征为基底样上皮细胞丰富、淋巴细胞浸润稀少以及缺氧信号激活。单细胞分析表明,CE2高的区域富含SPP1阳性肿瘤相关巨噬细胞(TAM)、基底样上皮细胞和缺氧癌症相关成纤维细胞(CAF)。在空间上,这些区域在三阴性乳腺癌中通常位于外周,与纤维化/坏死区域相邻。多重免疫荧光证实了缺氧三阴性乳腺癌(TNBC)区域中SPP1+CD68+TAM和HIF1A+SMA+CAF的富集。
Ecotyper识别出了用于乳腺癌预后和治疗预测的新型生物标志物。CE2高的区域可能代表缺氧免疫抑制微环境。