肾细胞癌
医学
阶段(地层学)
内科学
置信区间
尿
肿瘤科
肾透明细胞癌
泌尿科
生物
古生物学
作者
Xiaoyu Xu,Yuzheng Fang,Qirui Wang,Shuo Zhai,Wanshan Liu,Wanwan Liu,Ruimin Wang,Qiuqiong Deng,Juxiang Zhang,Jingli Gu,Yida Huang,Dingyitai Liang,Shouzhi Yang,Yonghui Chen,Jin Zhang,Wei Xue,Junhua Zheng,Yuning Wang,Kun Qian,Wei Zhai
标识
DOI:10.1002/advs.202401919
摘要
Renal cell carcinoma (RCC) is a substantial pathology of the urinary system with a growing prevalence rate. However, current clinical methods have limitations for managing RCC due to the heterogeneity manifestations of the disease. Metabolic analyses are regarded as a preferred noninvasive approach in clinics, which can substantially benefit the characterization of RCC. This study constructs a nanoparticle-enhanced laser desorption ionization mass spectrometry (NELDI MS) to analyze metabolic fingerprints of renal tumors (n = 456) and healthy controls (n = 200). The classification models yielded the areas under curves (AUC) of 0.938 (95% confidence interval (CI), 0.884-0.967) for distinguishing renal tumors from healthy controls, 0.850 for differentiating malignant from benign tumors (95% CI, 0.821-0.915), and 0.925-0.932 for classifying subtypes of RCC (95% CI, 0.821-0.915). For the early stage of RCC subtypes, the averaged diagnostic sensitivity of 90.5% and specificity of 91.3% in the test set is achieved. Metabolic biomarkers are identified as the potential indicator for subtype diagnosis (p < 0.05). To validate the prognostic performance, a predictive model for RCC participants and achieve the prediction of disease (p = 0.003) is constructed. The study provides a promising prospect for applying metabolic analytical tools for RCC characterization.
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