前列腺癌
恩扎鲁胺
列线图
医学
雄激素受体
一致性
转录组
肿瘤科
内科学
前列腺
癌症研究
蛋白质基因组学
疾病
免疫疗法
免疫系统
肿瘤微环境
危险分层
计算生物学
癌症
雄激素剥夺疗法
生存分析
生物
生物信息学
Lasso(编程语言)
作者
Q X Ge,Zhenda Wang,YangYun Wang,Tonghui Chu,Zhongyuan Wang,Wenkai Zhu,Youzhao Zhang,Yonghao Chen,Dingwei Ye,Wenhao Xu,Zhong Wang,Mierxiati Abudurexiti
标识
DOI:10.1038/s41746-025-02297-4
摘要
Prostate cancer (PCa) remains clinically heterogeneous. We integrated single-cell and spatial transcriptomics with explainable machine learning to define a lethal tumor axis and establish an interpretable prognostic model. From 141,986 high-quality single cells spanning localized, hormone-sensitive, and castration-resistant PCa, we identified a malignant C4 epithelial subpopulation characterized by high chromosomal instability, androgen receptor and cell-cycle activation, and stemness potential. Spatial mapping further revealed immune-enriched yet suppressive niches, where fibroblasts and myeloid cells coexisted with exhausted lymphocytes, reflecting functional immune imbalance. We benchmarked 101 machine learning pipelines, selecting a Lasso plus PLS-Cox model that achieved strong concordance across independent cohorts. The C4-based risk score independently predicted recurrence-free survival after adjustment for age, Gleason score and T stage, and a nomogram combining this score with clinical variables showed good discrimination. SHAP interpretation highlighted MT1M, PCSK1N, and ACSL3 as major risk-driving features. PCSK1N was progressively upregulated from normal prostate to castration-resistant disease and promoted proliferation, clonogenicity, migration and enzalutamide resistance, while its inhibition sensitized organoids and xenografts to AR-targeted therapy. These findings define a C4-centered lethal tumor axis and provide an explainable, experimentally supported framework for prognostic stratification in PCa.
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