Department of Environmental Chemistry, IDAEA-CSIC, Jordi Girona 18-26, 08034 Barcelona, Spain.
Department of Chemical Engineering and Analytical Chemistry, University of Barcelona, Diagonal 645, 08028 Barcelona, Spain.
Anal Chim Acta. 2017 Jul 25;978:10-23. doi: 10.1016/j.aca.2017.04.049. Epub 2017 May 11.
In this work, two knowledge integration strategies based on multivariate curve resolution alternating least squares (MCR-ALS) were used for the simultaneous analysis of data from two metabolomic platforms. The benefits and the suitability of these integration strategies were demonstrated in a comparative study of the metabolite profiles from yeast (Saccharomyces cerevisiae) samples grown in non-fermentable (acetate) and fermentable (glucose) carbon source. Untargeted metabolomics data acquired by capillary electrophoresis-mass spectrometry (CE-MS) and liquid chromatography-mass spectrometry (LC-MS) were jointly analysed. On the one hand, features obtained by independent MCR-ALS analysis of each dataset were joined to obtain a biological interpretation based on the combined metabolic network visualization. On the other hand, taking advantage of the common spectral mode, a low-level data fusion strategy was proposed merging CE-MS and LC-MS data before the MCR-ALS analysis to extract the most relevant features for further biological interpretation. Then, results obtained by the two presented methods were compared. Overall, the study highlights the ability of MCR-ALS to be used in any of both knowledge integration strategies for untargeted metabolomics. Furthermore, enhanced metabolite identification and differential carbon source response detection were achieved when considering a combination of LC-MS and CE-MS based platforms.
在这项工作中,使用了两种基于多变量曲线分辨交替最小二乘法(MCR-ALS)的知识集成策略,用于同时分析来自两个代谢组学平台的数据。在对在不可发酵(乙酸盐)和可发酵(葡萄糖)碳源中生长的酵母(酿酒酵母)样品的代谢物谱进行的比较研究中,证明了这些集成策略的好处和适用性。通过毛细管电泳-质谱(CE-MS)和液相色谱-质谱(LC-MS)联合分析了非靶向代谢组学数据。一方面,通过对每个数据集的独立 MCR-ALS 分析获得的特征被连接起来,以基于组合代谢网络可视化获得生物学解释。另一方面,利用共同的光谱模式,提出了一种低水平的数据融合策略,在 MCR-ALS 分析之前对 CE-MS 和 LC-MS 数据进行合并,以提取最相关的特征,以进行进一步的生物学解释。然后,比较了两种方法得到的结果。总的来说,该研究强调了 MCR-ALS 可用于任何非靶向代谢组学的两种知识集成策略。此外,当考虑基于 LC-MS 和 CE-MS 的组合平台时,可实现增强的代谢物鉴定和差异碳源响应检测。