Ji Jinting, Bi Fangfang, Zhang Xiaocui, Zhang Zhiming, Xie Yichi, Yang Qing
Department of Obstetrics and Gynecology, Shengjing Hospital of China Medical University, Shenyang, Liaoning, 110004, China.
BMC Cancer. 2024 Jul 31;24(1):926. doi: 10.1186/s12885-024-12688-7.
As the most malignant tumor of the female reproductive system, ovarian cancer (OC) has garnered increasing attention. The Warburg effect, driven by glycolysis, accounts for tumor cell proliferation under aerobic conditions. However, the metabolic heterogeneity linked to glycolysis in OC remains elusive.
We integrated single-cell data with OC to score glycolysis level in tumor cell subclusters. This led to the identification of a subcluster predominantly characterized by glycolysis, with a strong correlation to patient prognosis. Core transcription factors were pinpointed using hdWGCNA and metaVIPER. A specific transcription factor regulatory network was then constructed. A glycolysis-related prognostic model was developed and tested for estimating OC prognosis with a total of 85 machine-learning combinations, focusing on specific upregulated genes of two subtypes. We identified IGF2 as a key within the prognostic model and investigated its impact on OC progression and drug resistance through in vitro experiments, including the transwell assay, lactate production detection, and the CCK-8 assay.
Analysis showed that the Malignant 7 subcluster was primarily related to glycolysis. Two OC molecular subtypes, CS1 and CS2, were identified with distinct clinical, biological, and microenvironmental traits. A prognostic model was built, and IGF2 emerged as a key gene linked to prognosis. Experiments have proven that IGF2 can promote the glycolysis pathway and the malignant biological progression of OC cells.
We developed two novel OC subtypes based on glycolysis score, established a stable prognostic model, and identified IGF2 as the marker gene. These insights provided a new avenue for exploring OC's molecular mechanisms and personalized treatment approaches.
卵巢癌(OC)作为女性生殖系统中最恶性的肿瘤,日益受到关注。由糖酵解驱动的瓦伯格效应解释了有氧条件下肿瘤细胞的增殖。然而,OC中与糖酵解相关的代谢异质性仍不清楚。
我们将单细胞数据与OC整合,以对肿瘤细胞亚群中的糖酵解水平进行评分。这导致识别出一个主要以糖酵解为特征的亚群,与患者预后密切相关。使用hdWGCNA和metaVIPER确定核心转录因子。然后构建了一个特定的转录因子调控网络。开发并测试了一个糖酵解相关的预后模型,以估计OC预后,共有85种机器学习组合,重点关注两种亚型的特定上调基因。我们将IGF2确定为预后模型中的关键因素,并通过体外实验,包括Transwell实验、乳酸产生检测和CCK-8实验,研究了其对OC进展和耐药性的影响。
分析表明,恶性7亚群主要与糖酵解有关。确定了两种OC分子亚型,CS1和CS2,具有不同的临床、生物学和微环境特征。建立了一个预后模型,IGF2成为与预后相关的关键基因。实验证明,IGF2可促进OC细胞的糖酵解途径和恶性生物学进展。
我们基于糖酵解评分开发了两种新型OC亚型,建立了一个稳定的预后模型,并将IGF2确定为标志物基因。这些见解为探索OC的分子机制和个性化治疗方法提供了一条新途径。