免疫疗法
列线图
基因签名
胶质瘤
医学
衰老
肿瘤科
胶质母细胞瘤
生物信息学
基因
细胞衰老
签名(拓扑)
癌症
机制(生物学)
精密医学
脑瘤
癌症研究
临床试验
计算生物学
免疫系统
生存分析
基因调控网络
作者
Tianbing Xu,Jingjing Huang,Y. G. Liu,Lisen Lu,Jonathan F. Lovell,Mingxin Zhu,Honglin Jin
标识
DOI:10.1038/s41698-025-01260-6
摘要
Gliomas are the most common and heterogeneous primary brain tumors, which leads to poor prognosis in many cases. Cellular senescence plays a key role in tumor progression and drug resistance, yet the prognostic value of senescence in gliomas remains unclear. Here, we identified key senescence-related genes through consensus clustering and weighted gene co-expression network analysis (WGCNA), and developed a cellular senescence-related gene prognostic signature (CSRGPS) using ten machine learning algorithms. The CSRGPS demonstrated strong predictive power, outperforming traditional clinical and molecular models. It stratified patients into distinct prognostic groups exhibiting differences in survival, clinical features, biological functions, and the tumor microenvironment. Single-cell analysis revealed a transition from low to high CSRGPS states. Furthermore, clinical data indicated an association between low CSRGPS and better outcomes following anti-PD-1 therapy. We also developed a nomogram integrating CSRGPS and clinical data, which further improved individualized prognosis prediction. Overall, CSRGPS offers a robust, clinically applicable tool for glioma prognosis and immunotherapy guidance, with potential utility in other cancers.
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