CICECO, Department of Chemistry, University of Aveiro, Campus Universitario de Santiago, 3810-193 Aveiro, Portugal.
J Proteome Res. 2010 Jan;9(1):319-32. doi: 10.1021/pr9006574.
This work aims at characterizing the metabolic profile of human lung cancer, to gain new insights into tumor metabolism and to identify possible biomarkers with potential diagnostic value in the future. Paired samples of tumor and noninvolved adjacent tissues from 12 lung tumors have been directly analyzed by (1)H HRMAS NMR (500/600 MHz) enabling, for the first time to our knowledge, the identification of over 50 compounds. The effect of temperature on tissue stability during acquisition time has also been investigated, demonstrating that analysis should be performed within less than two hours at low temperature (277 K), to minimize glycerophosphocholine (GPC) and phosphocholine (PC) conversion to choline and reduce variations in some amino acids. The application of Principal Component Analysis (PCA) and Hierarchical Cluster Analysis (HCA) to the standard 1D (1)H spectra resulted in good separation between tumor and control samples, showing that inherently different metabolic signatures characterize the two tissue types. On the basis of spectral integration measurements, lactate, PC, and GPC were found to be elevated in tumors, while glucose, myo-inositol, inosine/adenosine, and acetate were reduced. These results show the valuable potential of HRMAS NMR-metabonomics for investigating the metabolic phenotype of lung cancer.
本工作旨在描述人肺癌的代谢特征,深入了解肿瘤代谢,并鉴定出未来具有潜在诊断价值的生物标志物。通过(1)H HRMAS NMR(500/600 MHz)直接分析了来自 12 个肺肿瘤的肿瘤和非受累相邻组织的配对样本,首次在我们的知识范围内能够鉴定出 50 多种化合物。还研究了温度对采集时间期间组织稳定性的影响,证明为了最小化甘油磷酸胆碱(GPC)和磷酸胆碱(PC)转化为胆碱并减少一些氨基酸的变化,应在低温(277 K)下在两小时内完成分析。主成分分析(PCA)和层次聚类分析(HCA)应用于标准的一维(1)H 光谱,在肿瘤和对照样品之间实现了良好的分离,表明两种组织类型固有地具有不同的代谢特征。基于光谱积分测量,发现肿瘤中乳酸盐、PC 和 GPC 升高,而葡萄糖、肌醇、肌苷/腺苷和醋酸盐降低。这些结果表明 HRMAS NMR 代谢组学在研究肺癌代谢表型方面具有有价值的潜力。