Anal Chem. 2011 Feb 1;83(3):696-700. doi: 10.1021/ac102980g. Epub 2010 Dec 21.
Mass spectrometry-based untargeted metabolomics often results in the observation of hundreds to thousands of features that are differentially regulated between sample classes. A major challenge in interpreting the data is distinguishing metabolites that are causally associated with the phenotype of interest from those that are unrelated but altered in downstream pathways as an effect. To facilitate this distinction, here we describe new software called metaXCMS for performing second-order ("meta") analysis of untargeted metabolomics data from multiple sample groups representing different models of the same phenotype. While the original version of XCMS was designed for the direct comparison of two sample groups, metaXCMS enables meta-analysis of an unlimited number of sample classes to facilitate prioritization of the data and increase the probability of identifying metabolites causally related to the phenotype of interest. metaXCMS is used to import XCMS results that are subsequently filtered, realigned, and ultimately compared to identify shared metabolites that are up- or down-regulated across all sample groups. We demonstrate the software's utility by identifying histamine as a metabolite that is commonly altered in three different models of pain. metaXCMS is freely available at http://metlin.scripps.edu/metaxcms/.
基于质谱的非靶向代谢组学通常会观察到数百到数千个特征,这些特征在样本类别之间存在差异调节。解释数据的主要挑战是区分与感兴趣表型有因果关系的代谢物与那些在下游途径中改变但与表型无关的代谢物。为了促进这种区分,我们在这里描述了一种名为 metaXCMS 的新软件,用于对来自多个代表同一表型的不同模型的非靶向代谢组学数据进行二级(“meta”)分析。虽然原始版本的 XCMS 旨在直接比较两个样本组,但 metaXCMS 能够对无限数量的样本组进行元分析,以方便对数据进行优先级排序,并增加识别与感兴趣表型有因果关系的代谢物的概率。metaXCMS 用于导入 XCMS 结果,然后对其进行过滤、重新对齐,并最终进行比较,以识别所有样本组中上调或下调的共有代谢物。我们通过识别组胺作为疼痛的三种不同模型中普遍改变的代谢物来证明该软件的实用性。metaXCMS 可在 http://metlin.scripps.edu/metaxcms/ 免费获取。