Liu Yiming, Wang Yusi, Tan Shu, Shi Xiaochen, Wen Jinglin, Chen Dejia, Zhao Yue, Pan Wenjing, Jia Zhaoyang, Lu Chunru, Lou Ge
Department of Gynecology, Harbin Medical University Cancer Hospital, Harbin, China.
Laboratory of Medical Genetics, Harbin Medical University, Harbin, China.
Cancer Cell Int. 2025 Feb 7;25(1):34. doi: 10.1186/s12935-025-03667-4.
Uterine Corpus Endometrial Carcinoma (UCEC) is a highly heterogeneous tumor, and limitations in current diagnostic methods, along with treatment resistance in some patients, pose significant challenges for managing UCEC. The excessive activation of G2/M checkpoint genes is a crucial factor affecting malignancy prognosis and promoting treatment resistance.
Gene expression profiles and clinical feature data mainly came from the TCGA-UCEC cohort. Unsupervised clustering was performed to construct G2/M checkpoint (G2MC) subtypes. The differences in biological and clinical features of different subtypes were compared through survival analysis, clinical characteristics, immune infiltration, tumor mutation burden, and drug sensitivity analysis. Ultimately, an artificial neural network (ANN) and machine learning were employed to develop the G2MC subtypes classifier.
We constructed a classifier based on the overall activity of the G2/M checkpoint signaling pathway to identify patients with different risks and treatment responses, and attempted to explore potential therapeutic targets. The results showed that two G2MC subtypes have completely different G2/M checkpoint-related gene expression profiles. Compared with the subtype C2, the subtype C1 exhibited higher G2MC scores and was associated with faster disease progression, higher clinical staging, poorer pathological types, and lower therapy responsiveness of cisplatin, radiotherapy and immunotherapy. Experiments targeting the feature gene KIF23 revealed its crucial role in reducing HEC-1A sensitivity to cisplatin and radiotherapy.
In summary, our study developed a classifier for identifying G2MC subtypes, and this finding holds promise for advancing precision treatment strategies for UCEC.
子宫内膜癌(UCEC)是一种高度异质性肿瘤,当前诊断方法的局限性以及部分患者的治疗耐药性给UCEC的管理带来了重大挑战。G2/M检查点基因的过度激活是影响恶性肿瘤预后和促进治疗耐药性的关键因素。
基因表达谱和临床特征数据主要来自TCGA-UCEC队列。进行无监督聚类以构建G2/M检查点(G2MC)亚型。通过生存分析、临床特征、免疫浸润、肿瘤突变负荷和药物敏感性分析比较不同亚型的生物学和临床特征差异。最终,采用人工神经网络(ANN)和机器学习开发G2MC亚型分类器。
我们基于G2/M检查点信号通路的整体活性构建了一个分类器,以识别具有不同风险和治疗反应的患者,并试图探索潜在的治疗靶点。结果表明,两种G2MC亚型具有完全不同的与G2/M检查点相关的基因表达谱。与C2亚型相比,C1亚型表现出更高的G2MC评分,并且与疾病进展更快、临床分期更高、病理类型更差以及对顺铂、放疗和免疫治疗的治疗反应性更低相关。针对特征基因KIF23的实验揭示了其在降低HEC-1A对顺铂和放疗敏感性方面的关键作用。
总之,我们的研究开发了一种用于识别G2MC亚型的分类器,这一发现有望推动UCEC的精准治疗策略。