黑色素瘤
平方毫米
转录组
癌症研究
辐射敏感性
放射治疗
医学
计算生物学
DNA损伤
细胞
后天抵抗
生物信息学
体外
生物
核糖核酸
抗辐射性
辐射耐受性
基因
联合疗法
癌症
DNA
抗药性
临床试验
达布拉芬尼
细胞周期
作者
Qi Zhu,Xi Gong,S. Zhang,Jiaqi Zhang,Hongtao Yan
标识
DOI:10.1038/s41420-026-02970-x
摘要
Uveal melanoma (UM) presents a formidable clinical challenge due to its marked resistance to radiotherapy. In this study, an integrative strategy combining machine learning models with high-throughput screening platforms was employed to identify novel small-molecule inhibitors targeting MDM2, with the aim of overcoming this intrinsic resistance. Transcriptome sequencing and machine learning analysis identified MDM2 as a critical gene associated with UM radiotherapy resistance. Integration of single-cell RNA sequencing data revealed key cells contributing to this resistance. In vitro experiments demonstrated that the MDM2 inhibitor SAR405838 effectively increased radiosensitivity in resistant UM cells by modulating p53 activation, suppressing cell migration and invasion, and inducing DNA damage and apoptosis. This novel approach offers a promising therapeutic strategy for combating UM resistance to radiation therapy.
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