State Key Laboratory of Biotherapy and Cancer Center, West China Hospital, West China Medical School, Sichuan University, Chengdu 610041, China.
Mol Cancer. 2013 Apr 4;12:25. doi: 10.1186/1476-4598-12-25.
The biomarker identification of human esophageal cancer is critical for its early diagnosis and therapeutic approaches that will significantly improve patient survival. Specially, those that involves in progression of disease would be helpful to mechanism research.
In the present study, we investigated the distinguishing metabolites in human esophageal cancer tissues (n = 89) and normal esophageal mucosae (n = 26) using a (1)H nuclear magnetic resonance ((1)H-NMR) based assay, which is a highly sensitive and non-destructive method for biomarker identification in biological systems. Principal component analysis (PCA), partial least squares-discriminant analysis (PLS-DA) and orthogonal partial least-squares-discriminant analysis (OPLS-DA) were applied to analyse (1)H-NMR profiling data to identify potential biomarkers.
The constructed OPLS-DA model achieved an excellent separation of the esophageal cancer tissues and normal mucosae. Excellent separation was obtained between the different stages of esophageal cancer tissues (stage II = 28; stage III = 45 and stage IV = 16) and normal mucosae. A total of 45 metabolites were identified, and 12 of them were closely correlated with the stage of esophageal cancer. The downregulation of glucose, AMP and NAD, upregulation of formate indicated the large energy requirement due to accelerated cell proliferation in esophageal cancer. The increases in acetate, short-chain fatty acid and GABA in esophageal cancer tissue revealed the activation of fatty acids metabolism, which could satisfy the need for cellular membrane formation. Other modified metabolites were involved in choline metabolic pathway, including creatinine, creatine, DMG, DMA and TMA. These 12 metabolites, which are involved in energy, fatty acids and choline metabolism, may be associated with the progression of human esophageal cancer.
Our findings firstly identify the distinguishing metabolites in different stages of esophageal cancer tissues, indicating the attribution of metabolites disturbance to the progression of esophageal cancer. The potential biomarkers provide a promising molecular diagnostic approach for clinical diagnosis of human esophageal cancer and a new direction for the mechanism study.
鉴定人类食管癌的生物标志物对于其早期诊断和治疗方法至关重要,这将显著提高患者的生存率。特别是那些涉及疾病进展的生物标志物将有助于机制研究。
在本研究中,我们使用基于(1)H 核磁共振(1H-NMR)的分析方法,研究了 89 例人食管癌组织和 26 例正常食管黏膜中的差异代谢物,该方法是一种用于生物系统中生物标志物鉴定的高灵敏度、非破坏性方法。主成分分析(PCA)、偏最小二乘判别分析(PLS-DA)和正交偏最小二乘判别分析(OPLS-DA)用于分析 1H-NMR 谱数据以识别潜在的生物标志物。
所构建的 OPLS-DA 模型实现了食管癌组织和正常黏膜的极好分离。不同阶段的食管癌组织(Ⅱ期=28 例;Ⅲ期=45 例和Ⅳ期=16 例)和正常黏膜之间也获得了极好的分离。共鉴定出 45 种代谢物,其中 12 种与食管癌的分期密切相关。葡萄糖、AMP 和 NAD 的下调以及甲酸的上调表明食管癌中细胞增殖加速导致能量需求巨大。食管癌组织中乙酸盐、短链脂肪酸和 GABA 的增加表明脂肪酸代谢的激活,这可以满足细胞膜形成的需要。其他修饰的代谢物参与胆碱代谢途径,包括肌酐、肌酸、DMG、DMA 和 TMA。这些涉及能量、脂肪酸和胆碱代谢的 12 种代谢物可能与人类食管癌的进展有关。
我们的研究结果首次鉴定了不同阶段食管癌组织中的差异代谢物,表明代谢物紊乱归因于食管癌的进展。这些潜在的生物标志物为人类食管癌的临床诊断提供了一种有前途的分子诊断方法,并为机制研究提供了新的方向。