Zhang Aihua, Zhou Xiaohang, Zhao Hongwei, Guan Yu, Zou Shiyu, Yan Guang-li, Ma Chung Wah, Liu Qi, Wang Xijun
National TCM Key Laboratory of Serum Pharmacochemistry, Key Laboratory of Metabolomics and Chinmedomics, Department of Pharmaceutical Analysis, Heilongjiang University of Chinese Medicine, Heping Road 24, Harbin 150040, China.
Mol Biosyst. 2014 Aug;10(8):2160-5. doi: 10.1039/c4mb00222a.
Metabolomics is a new approach based on the systematic study of the full complement of metabolites in a biological sample. Extracting biomedical information from large datasets is of considerable complexity. Furthermore, the traditional method of assessing metabolomics data is not only time-consuming but it is often subjective work. Here we used sensitive ultra-performance LC-ESI/Q-TOF high-definition mass spectrometry (UPLC-ESI-Q-TOF-MS) in positive ion mode coupled with a new developed software program TransOmics for widely untargeted metabolomics, which incorporates novel nonlinear alignment, deconvolution, matched filtration, peak detection, and peak matching to characterize metabolites as a case study. The TransOmics method can facilitate prioritization of the data and greatly increase the probability of identifying metabolites related to the phenotype of interest. By this means, 17 urinary differential metabolites were identified (less than 10 min) involving the key metabolic pathways including tyrosine metabolism, glutathione metabolism, phenylalanine metabolism, ascorbate and aldarate metabolism, arginine and proline metabolism, and so forth. Metabolite identification has also been significantly improved, using the correlation peak patterns in contrast to a reference metabolite panel. It can detect and identify metabolites automatically and remove background noise, and also provides a user-friendly graphical interface to apply principal component analyses, correlation analysis and compound statistics. This investigation illustrates that metabolomics combined with the proposed bioinformatic approach (based on TransOmics) is important to elucidate the developing biomarkers and the physiological mechanism of disease, and has opened the door for the development of a new genre of metabolite identification methods.
代谢组学是一种基于对生物样本中所有代谢物进行系统研究的新方法。从大型数据集中提取生物医学信息具有相当大的复杂性。此外,评估代谢组学数据的传统方法不仅耗时,而且往往是主观性工作。在此,我们使用了在正离子模式下的灵敏超高效液相色谱-电喷雾电离/四极杆飞行时间高清质谱(UPLC-ESI-Q-TOF-MS),并结合一个新开发的软件程序TransOmics用于广泛的非靶向代谢组学研究,该程序包含新颖的非线性比对、去卷积、匹配过滤、峰检测和峰匹配来表征代谢物,作为一个案例研究。TransOmics方法可以促进数据的优先级排序,并大大增加识别与感兴趣表型相关代谢物的概率。通过这种方式,鉴定出了17种尿液差异代谢物(不到10分钟),涉及关键代谢途径,包括酪氨酸代谢、谷胱甘肽代谢、苯丙氨酸代谢、抗坏血酸和醛糖代谢、精氨酸和脯氨酸代谢等。与参考代谢物面板相比,利用相关峰模式,代谢物鉴定也得到了显著改善。它可以自动检测和识别代谢物并去除背景噪声,还提供用户友好的图形界面以应用主成分分析、相关分析和化合物统计。这项研究表明,代谢组学与所提出的生物信息学方法(基于TransOmics)相结合对于阐明疾病的生物标志物和生理机制很重要,并为开发新型代谢物鉴定方法打开了大门。