Department of Respiratory Medicine, Affiliated Jiangsu Province Hospital of Traditional Chinese Medicine, Nanjing University of Traditional Chinese Medicine, Nanjing 210029, China.
Anal Bioanal Chem. 2012 Dec;404(10):3123-33. doi: 10.1007/s00216-012-6432-6. Epub 2012 Sep 29.
To date, most research has been focused on the benign molecules in pleural effusions, and diagnosis of malignant ones still remains challenging. In the present study, targeting the small molecules as potential biomarkers to predict the malignancy of the effusions, the metabolic profiles of 81 clinical pleural effusions (41 malignant effusions from lung cancer and 40 benign ones) were investigated through a NMR-based metabonomic approach. In (1)H NMR analysis, a total of ten small molecules in the effusions were simultaneously determined. Significantly higher mean values of valine, lactate, and alanine and markedly lower signal intensities of acetoacetate, trimethylamine-N-oxide, and α- and β-glucose were observed in malignant pleural effusions compared with those in benign ones. DFA modeling of NMR spectra subjected to a validation allowed the malignant effusions to be discriminated from benign ones in both training and validation groups. Currently, the conventional clinical analyses on chemical constituents in effusions could not provide a reliable prediction of malignancy of the effusions; the present results revealed that the small molecules might serve as useful biomarkers for diagnosis of the effusions, and the present NMR-based metabonomic approach provided a valuable potential to rapidly and sensitively predict the malignancy of the pleural effusions.
迄今为止,大多数研究都集中在胸腔积液中的良性分子上,而恶性胸腔积液的诊断仍然具有挑战性。在本研究中,为了寻找有潜力的小分子生物标志物来预测胸腔积液的恶性程度,我们采用基于 NMR 的代谢组学方法对 81 例临床胸腔积液(41 例来自肺癌的恶性胸腔积液和 40 例良性胸腔积液)的代谢谱进行了研究。在(1)H NMR 分析中,同时测定了胸腔积液中的十种小分子。与良性胸腔积液相比,恶性胸腔积液中的缬氨酸、乳酸和丙氨酸的平均水平明显升高,而乙酰乙酸盐、三甲胺 N-氧化物以及α-和β-葡萄糖的信号强度明显降低。对经过验证的 NMR 光谱进行 DFA 建模,使恶性胸腔积液能够在训练组和验证组中与良性胸腔积液区分开来。目前,对胸腔积液中化学成分的常规临床分析无法可靠预测胸腔积液的恶性程度;本研究结果表明,小分子可能作为胸腔积液诊断的有用生物标志物,而本研究基于 NMR 的代谢组学方法为快速、敏感地预测胸腔积液的恶性程度提供了有价值的潜在方法。