生物
转录组
前列腺癌
前列腺
灵敏度(控制系统)
肿瘤科
计算生物学
癌症研究
内科学
生物信息学
基因表达
癌症
遗传学
基因
工程类
医学
电子工程
作者
Emily Grist,Peter Dutey‐Magni,Marina Parry,Larissa Mendes,Ashwin Sachdeva,James A. Proudfoot,Anis Hamid,Mazlina Ismail,Sarah Howlett,Stefanie Friedrich,Lia DePaula Oliveira,Laura Murphy,Christopher D. Brawley,Oluwademilade Dairo,Sharanpreet Lall,Yang Liu,Daniel Wetterskog,Anna Wingate,Karolina Nowakowska,Leila Zakka
出处
期刊:Cell
[Cell Press]
日期:2025-08-01
被引量:2
标识
DOI:10.1016/j.cell.2025.07.042
摘要
Advanced prostate cancers respond to hormone therapy but outcomes vary and no predictive tests exist for informed treatment selection. To identify novel biomarker-treatment pairings, we examined associations between biological pathways and 14-year survival outcomes of patients randomized in practice-changing phase 3 trials (testing docetaxel or abiraterone). We included transcriptome-wide expression signatures and immunohistochemistry markers (Ki-67 and PTEN) on prostate tumors from 1,523 patients (832 metastatic). Tumor androgen receptor signaling is associated with longer survival, whereas increased proliferation predicted shorter survival. In a pre-specified analysis, the previously identified decipher RNA signature was both prognostic and predicted survival benefit from docetaxel for metastatic cancers (biomarker-docetaxel interaction p = 0.039). Additionally, transcriptome-based classification of PTEN inactivation identified tumors more likely to have PTEN protein loss (p = 4 × 10-37) and metabolically perturbed metastatic cancers that had shorter survival with hormone therapies (p < 0.001) but exhibited docetaxel sensitivity (biomarker-docetaxel interaction p = 0.002). Transcriptome classifiers predict docetaxel benefit and could be clinically implemented for improved patient management.
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