无线电技术
生殖细胞肿瘤
医学
生殖细胞
小RNA
肿瘤科
残余物
内科学
癌症研究
放射科
生物
化疗
计算机科学
基因
算法
生物化学
作者
Xiangdong Li,Renjie Ding,Zhenhua Liu,Zhenhua Liu,Wanessa Teixeira,Jingwei Ye,Tian Li,Haojiang Li,Shengjie Guo,Kai Yao,Zikun Ma,Zhuowei Liu,Zhuowei Liu
标识
DOI:10.1016/j.xcrm.2024.101843
摘要
Predicting the histopathology of residual retroperitoneal masses (RMMs) before post-chemotherapy retroperitoneal lymph node dissection in metastatic nonseminomatous germ cell tumors (NSGCTs) can guide individualized treatment and minimize complications. Previous single approach-based models perform poorly in validation. Herein, we introduce a machine learning model that evolves from a single-dimensional tumor diameter to incorporate high-dimensional radiomic features, with its effectiveness assessed using the macro-average area under the receiver operating characteristic curves (AUCs). In addition, we utilize more precise and specific microRNAs (miRNAs), not common clinical indicators, to construct an integrated radiomics-miRNA predictive system, achieving an AUC of 0.91 (0.80-0.99) in the prospective test set. We further develop a web-based dynamic nomogram for swift and precise calculation of the histopathological probabilities of RMMs based on radiomic scores and serum miRNA levels. The radiomics-miRNA integrated system offers a promising tool to select personalized treatments for patients with metastatic NSGCT.
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