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MSEA: a web-based tool to identify biologically meaningful patterns in quantitative metabolomic data

机译:MSEA:一种基于网络的工具,可在定量代谢组学数据中识别具有生物学意义的模式

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Gene set enrichment analysis (GSEA) is a widely used technique in transcriptomic data analysis that uses a database of predefined gene sets to rank lists of genes from microarray studies to identify significant and coordinated changes in gene expression data. While GSEA has been playing a significant role in understanding transcriptomic data, no similar tools are currently available for understanding metabolomic data. Here, we introduce a web-based server, called Metabolite Set Enrichment Analysis (MSEA), to help researchers identify and interpret patterns of human or mammalian metabolite concentration changes in a biologically meaningful context. Key to the development of MSEA has been the creation of a library of ~1000 predefined metabolite sets covering various metabolic pathways, disease states, biofluids, and tissue locations. MSEA also supports user-defined or custom metabolite sets for more specialized analysis. MSEA offers three different enrichment analyses for metabolomic studies including overrepresentation analysis (ORA), single sample profiling (SSP) and quantitative enrichment analysis (QEA). ORA requires only a list of compound names, while SSP and QEA require both compound names and compound concentrations. MSEA generates easily understood graphs or tables embedded with hyperlinks to relevant pathway images and disease descriptors. For non-mammalian or more specialized metabolomic studies, MSEA allows users to provide their own metabolite sets for enrichment analysis. The MSEA server also supports conversion between metabolite common names, synonyms, and major database identifiers. MSEA has the potential to help users identify obvious as well as ‘subtle but coordinated' changes among a group of related metabolites that may go undetected with conventional approaches. MSEA is freely available at http://www.msea.ca.
机译:基因集富集分析(GSEA)是转录组数据分析中一种广泛使用的技术,它使用预定义的基因集数据库对微阵列研究中的基因列表进行排名,以识别基因表达数据中显着且协调一致的变化。尽管GSEA在理解转录组数据方面一直发挥着重要作用,但目前尚无类似的工具可用于理解代谢组学数据。在这里,我们介绍了一个基于Web的服务器,称为代谢物集合富集分析(MSEA),以帮助研究人员在生物学上有意义的背景下识别和解释人类或哺乳动物代谢物浓度变化的模式。 MSEA发展的关键是建立了一个涵盖约1000种预定义代谢产物集的库,该库涵盖了各种代谢途径,疾病状态,生物流体和组织位置。 MSEA还支持用户定义或定制的代谢物组,以进行更专业的分析。 MSEA为代谢组学研究提供了三种不同的富集分析,包括超标分析(ORA),单样本分析(SSP)和定量富集分析(QEA)。 ORA仅需要化合物名称的列表,而SSP和QEA则需要化合物名称和化合物浓度。 MSEA生成易于理解的图形或表格,其中嵌入了指向相关途径图像和疾病描述符的超链接。对于非哺乳动物或更专业的代谢组学研究,MSEA允许用户提供自己的代谢物组以进行富集分析。 MSEA服务器还支持代谢物通用名称,同义词和主要数据库标识符之间的转换。 MSEA有潜力帮助用户在一组相关代谢产物中识别出明显的以及“微妙但协调的”变化,而这些变化可能是传统方法无法检测到的。 MSEA可从http://www.msea.ca免费获得。

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