Zhang Can, Li Si, Guo Jiyu, Pan Tao, Zhang Ya, Gao Yueying, Pan Jiwei, Liu Meng, Yang Qingyi, Yu Jinyang, Xu Juan, Li Yongsheng, Li Xia
College of Biomedical Information and Engineering, Hainan Medical University, Haikou, 571199, China.
School of Interdisciplinary Medicine and Engineering, Harbin Medical University, Harbin, 150081, China.
J Transl Med. 2025 May 8;23(1):519. doi: 10.1186/s12967-025-06521-3.
Diverse cell types and cellular states in the tumor microenvironment (TME) are drivers of biological and therapeutic heterogeneity in ovarian cancer (OV). Characterization of the diverse malignant and immunology cellular states that make up the TME and their associations with clinical outcomes are critical for cancer therapy. However, we are still lack of knowledge about the cellular states and their clinical relevance in OV.
We manually collected the comprehensive transcriptomes of OV samples and characterized the cellular states and ecotypes based on a machine-learning framework. The robustness of the cellular states was validated in independent cohorts and single-cell transcriptomes. The functions and regulators of cellular states were investigated. Meanwhile, we thoroughly examined the associations between cellular states and various clinical factors, including clinical prognosis and drug responses.
We depicted and characterized an immunophenotypic landscape of 3,099 OV samples and 80,044 cells based on a machine learning framework. We identified and validated 32 distinct transcriptionally defined cellular states from 12 cell types and three cellular communities or ecotypes, extending the current immunological subtypes in OV. Functional enrichment and upstream transcriptional regulator analyses revealed cancer hallmark-related pathways and potential immunological biomarkers. We further investigated the spatial patterns of identified cellular states by integrating the spatially resolved transcriptomes. Moreover, prognostic landscape and drug sensitivity analysis exhibited clinically relevant immunological subtypes and therapeutic vulnerabilities.
Our comprehensive analysis of TME helps leveraging various immunological subtypes to highlight new directions and targets for the treatment of cancer.
肿瘤微环境(TME)中的多种细胞类型和细胞状态是卵巢癌(OV)生物学和治疗异质性的驱动因素。构成TME的各种恶性和免疫细胞状态及其与临床结果的关联的表征对于癌症治疗至关重要。然而,我们仍然缺乏关于OV中细胞状态及其临床相关性的知识。
我们手动收集了OV样本的综合转录组,并基于机器学习框架对细胞状态和生态型进行了表征。细胞状态的稳健性在独立队列和单细胞转录组中得到了验证。研究了细胞状态的功能和调节因子。同时,我们全面检查了细胞状态与各种临床因素之间的关联,包括临床预后和药物反应。
我们基于机器学习框架描绘并表征了3099个OV样本和80044个细胞的免疫表型景观。我们从12种细胞类型和三个细胞群落或生态型中识别并验证了32种不同的转录定义细胞状态,扩展了当前OV中的免疫亚型。功能富集和上游转录调节因子分析揭示了与癌症特征相关的途径和潜在的免疫生物标志物。我们通过整合空间分辨转录组进一步研究了已识别细胞状态的空间模式。此外,预后景观和药物敏感性分析展示了临床相关的免疫亚型和治疗脆弱性。
我们对TME的综合分析有助于利用各种免疫亚型来突出癌症治疗的新方向和靶点。