Wu Huijuan, Li Dan, Sun Lu, Song Hualin, Wang Ke
Department of Gynecological Oncology, Key Laboratory of Cancer Prevention and Therapy, Tianjin Medical University Cancer Institute and Hospital, National Clinical Research Center of Cancer, Tianjin's Clinical Research Center for Cancer, No. 32, Huanhuxi Road, Hexi District, Tianjin, 300060, China.
J Ovarian Res. 2025 Jul 23;18(1):159. doi: 10.1186/s13048-025-01747-7.
Cancer stem cells are associated with tumorigenesis, aggression, and drug resistance. We aimed to identify stem cell-related subtypes and a prognostic tool, and to investigate potential stem cell-related genes contributing to high-grade serous ovarian cancer (HGSOC).
Stem cell pathways were used to determine tumor subtypes and the least absolute shrinkage and selection operator regression was conducted to construct a prognostic risk model, with robustness validation in external datasets. We assessed immune characteristics and therapeutic responses of risk score. Macrophage subpopulations were identified using single cell data, and pseudo-time analysis revealed the changes of macrophages during cell state transition.
HGSOC patients were stratified into stem cell pathway-related clusters (C1, C2) and stem cell-related clusters (GC1, GC2). Patients in C1 and GC1 exhibited better prognosis, increased ImmuneScore, decreased TumorPurity and low immune escape. Patients in C1 were sensitive to gemcitabine while patients in GC1 were sensitive to cisplatin, cyclophosphamide, gemcitabine and niraparib. Risk score was constructed based on 15 genes (IL2RG, STAB1, C2, CD163, FBXO17, VSIG4, CXCL11, CXCL13, GJB1, GPC3, NPY, KRT16, GRIK5, PI3, and RARRES1) with robustness in prediction. Low-risk patients showed favorable outcomes, high immune infiltration and high immunotherapy response. Novel ligand-receptor pairs LGALS9-HAVCR2 and CD86-CTLA4 were specifically interacted between Macro_1 and T/NK cells. VSIG4 and STAB1 were highly expressed in macrophages and were associated with poor prognosis, high tumor purity and high immune checkpoints.
The results provide novel insights into prognosis prediction and therapeutic responses, and identify VSIG4 and STAB1 as potential biomarkers affecting macrophages in HGSOC.
癌症干细胞与肿瘤发生、侵袭及耐药性相关。我们旨在识别干细胞相关亚型和一种预后工具,并研究导致高级别浆液性卵巢癌(HGSOC)的潜在干细胞相关基因。
利用干细胞通路确定肿瘤亚型,并进行最小绝对收缩和选择算子回归以构建预后风险模型,并在外部数据集中进行稳健性验证。我们评估了风险评分的免疫特征和治疗反应。使用单细胞数据识别巨噬细胞亚群,伪时间分析揭示了细胞状态转变过程中巨噬细胞的变化。
HGSOC患者被分为干细胞通路相关簇(C1、C2)和干细胞相关簇(GC1、GC2)。C1和GC1中的患者表现出更好的预后、免疫评分增加、肿瘤纯度降低和低免疫逃逸。C1中的患者对吉西他滨敏感,而GC1中的患者对顺铂、环磷酰胺、吉西他滨和尼拉帕尼敏感。基于15个基因(IL2RG、STAB1、C2、CD163、FBXO17、VSIG4、CXCL11、CXCL13、GJB1、GPC3、NPY、KRT16、GRIK5、PI3和RARRES1)构建了具有预测稳健性的风险评分。低风险患者显示出良好的预后、高免疫浸润和高免疫治疗反应。新型配体-受体对LGALS9-HAVCR2和CD86-CTLA4在Macro_1和T/NK细胞之间特异性相互作用。VSIG4和STAB1在巨噬细胞中高表达,与不良预后、高肿瘤纯度和高免疫检查点相关。
这些结果为预后预测和治疗反应提供了新的见解,并将VSIG4和STAB1确定为影响HGSOC中巨噬细胞的潜在生物标志物。