Department of Urology, Tohoku University Graduate School of Medicine, Sendai, Miyagi, Japan.
Department of Pharmaceutical Sciences, Tohoku University Hospital, Sendai, Miyagi, Japan.
Int J Cancer. 2019 Jul 15;145(2):484-493. doi: 10.1002/ijc.32115. Epub 2019 Jan 24.
Renal cell carcinoma (RCC) is a malignant tumor that currently lacks clinically useful biomarkers indicative of early diagnosis or disease status. RCC has commonly been diagnosed based on imaging results. Metabolomics offers a potential technology for discovering biomarkers and therapeutic targets by comprehensive screening of metabolites from patients with various cancers. We aimed to identify metabolites associated with early diagnosis and clinicopathological factors in RCC using global metabolomics (G-Met). Tumor and nontumor tissues were sampled from 20 cases of surgically resected clear cell RCC. G-Met was performed by liquid chromatography mass spectrometry and important metabolites specific to RCC were analyzed by multivariate statistical analysis for cancer diagnostic ability based on area under the curve (AUC) and clinicopathological factors (tumor volume, pathological T stage, Fuhrman grade, presence of coagulation necrosis and distant metastasis). We identified 58 metabolites showing significantly increased levels in tumor tissues, 34 of which showed potential early diagnostic ability (AUC >0.8), but 24 did not discriminate between tumor and nontumor tissues (AUC ≤0.8). We recognized 6 pathways from 9 metabolites with AUC >0.8 and 7 pathways from 10 metabolites with AUC ≤0.8 about malignant status. Clinicopathological factors involving malignant status correlated significantly with metabolites showing AUC ≤0.8 (p = 0.0279). The tricarboxylic acid cycle (TCA) cycle, TCA cycle intermediates, nucleotide sugar pathway and inositol pathway were characteristic pathways for the malignant status of RCC. In conclusion, our study found that metabolites and their pathways allowed discrimination between early diagnosis and malignant status in RCC according to our G-Met protocol.
肾细胞癌 (RCC) 是一种恶性肿瘤,目前缺乏用于早期诊断或疾病状态的临床有用的生物标志物。RCC 通常基于影像学结果进行诊断。代谢组学通过对来自各种癌症患者的代谢物进行全面筛选,提供了发现生物标志物和治疗靶点的潜在技术。我们旨在通过全局代谢组学 (G-Met) 鉴定与 RCC 早期诊断和临床病理因素相关的代谢物。从 20 例手术切除的透明细胞 RCC 患者的肿瘤和非肿瘤组织中取样。通过液相色谱-质谱联用进行 G-Met,基于曲线下面积 (AUC) 和临床病理因素(肿瘤体积、病理 T 分期、Fuhrman 分级、凝血坏死和远处转移的存在),通过多变量统计分析来分析癌症诊断能力的特定于 RCC 的重要代谢物。我们鉴定出 58 种在肿瘤组织中表达水平显著升高的代谢物,其中 34 种具有潜在的早期诊断能力(AUC >0.8),但 24 种代谢物不能区分肿瘤和非肿瘤组织(AUC ≤0.8)。我们从 AUC >0.8 的 9 种代谢物中识别出 6 条途径,从 AUC ≤0.8 的 10 种代谢物中识别出 7 条途径,这些途径与恶性状态有关。涉及恶性状态的临床病理因素与 AUC ≤0.8 的代谢物显著相关(p = 0.0279)。三羧酸循环 (TCA) 循环、TCA 循环中间体、核苷酸糖途径和肌醇途径是 RCC 恶性状态的特征途径。总之,根据我们的 G-Met 方案,我们的研究发现代谢物及其途径可用于区分 RCC 的早期诊断和恶性状态。