免疫系统
放射治疗
医学
肿瘤微环境
肿瘤科
宫颈癌
内科学
免疫疗法
串扰
细胞毒性
转录组
炎症
补体依赖性细胞毒性
细胞
癌症研究
免疫学
先天免疫系统
巨噬细胞
生物标志物
川地163
免疫
作者
Linghao Wang,Jie Zhu,Zequn Ding,Zhiyuan Xie,Xingchen Liu,Feihong Zhang,Jun Liu,Yan Zhang,Haiyan Chen
标识
DOI:10.1002/advs.202509784
摘要
The immune microenvironment influences the sensitivity of patients to radiotherapy (RT), yet determinants of therapeutic resistance remain elusive. This study integrates single-cell transcriptomics and machine learning to delineate immune predictors of RT outcomes. Comprehensive analysis reveals reduced epithelial cell numbers, accompanied by enhanced apoptosis, complement activation, and inflammatory responses. RT triggers macrophage accumulation, particularly an RT-responsive M1-like HSPA1B+ subset with elevated antigen-presenting capacity. While T and NK cell cytotoxicity increases, their exhaustion markers (e.g., PDCD1, TIGIT) are exacerbated. CellChat analysis identifies robust epithelial-myeloid crosstalk mediated by the C3/C3AR1 axis. In murine models, C3AR1 antagonism diminishes RT efficacy, impairing macrophage infiltration and M1 polarization. Leveraging 25 single-cell-derived immune features, an 8-feature multilayer perceptron model: Cervical Cancer Radiotherapy Immune-Response Model (CCRTIM) is developed. CCRTIM robustly predicts prognosis (AUC = 0.76) and exhibits risk stratification. These findings unveil dynamic immune remodeling post-RT and establish actionable biomarkers for precision radiotherapy strategies.
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