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RaMP: A Comprehensive Relational Database of Metabolomics Pathways for Pathway Enrichment Analysis of Genes and Metabolites

机译:RaMP:代谢组学途径的全面关系数据库,用于基因和代谢物的途径富集分析

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The value of metabolomics in translational research is undeniable, and metabolomics data are increasingly generated in large cohorts. The functional interpretation of disease-associated metabolites though is difficult, and the biological mechanisms that underlie cell type or disease-specific metabolomics profiles are oftentimes unknown. To help fully exploit metabolomics data and to aid in its interpretation, analysis of metabolomics data with other complementary omics data, including transcriptomics, is helpful. To facilitate such analyses at a pathway level, we have developed RaMP (Relational database of Metabolomics Pathways), which combines biological pathways from the Kyoto Encyclopedia of Genes and Genomes (KEGG), Reactome, WikiPathways, and the Human Metabolome DataBase (HMDB). To the best of our knowledge, an off-the-shelf, public database that maps genes and metabolites to biochemical/disease pathways and can readily be integrated into other existing software is currently lacking. For consistent and comprehensive analysis, RaMP enables batch and complex queries (e.g., list all metabolites involved in glycolysis and lung cancer), can readily be integrated into pathway analysis tools, and supports pathway overrepresentation analysis given a list of genes and/or metabolites of interest. For usability, we have developed a RaMP R package ( https://github.com/Mathelab/RaMP-DB ), including a user-friendly RShiny web application, that supports basic simple and batch queries, pathway overrepresentation analysis given a list of genes or metabolites of interest, and network visualization of gene-metabolite relationships. The package also includes the raw database file (mysql dump), thereby providing a stand-alone downloadable framework for public use and integration with other tools. In addition, the Python code needed to recreate the database on another system is also publicly available ( https://github.com/Mathelab/RaMP-BackEnd ). Updates for databases in RaMP will be checked multiple times a year and RaMP will be updated accordingly.
机译:代谢组学在转化研究中的价值是不可否认的,并且代谢组学数据越来越多地在大型研究人群中产生。尽管与疾病相关的代谢产物的功能解释很困难,并且细胞类型或疾病特异性代谢组学谱基础的生物学机制通常是未知的。为了帮助充分利用代谢组学数据并帮助其解释,将代谢组学数据与其他互补组学数据(包括转录组学)进行分析是很有帮助的。为了在途径水平上促进此类分析,我们开发了RaMP(代谢组学途径的关系数据库),该组合结合了《京都议定书》的基因和基因组百科全书(KEGG),Reactome,WikiPathways和人类代谢组数据库(HMDB)的生物学途径。据我们所知,目前尚缺乏将基因和代谢物映射到生化/疾病途径并可以容易地集成到其他现有软件中的现成的公共数据库。为了进行一致而全面的分析,RaMP可以进行批量和复杂的查询(例如,列出糖酵解和肺癌中涉及的所有代谢物),可以很容易地整合到途径分析工具中,并在给定基因和/或代谢物清单的情况下支持途径过度表达分析利益。为了提高可用性,我们开发了一个RaMP R软件包(https://github.com/Mathelab/RaMP-DB),其中包括一个用户友好的RShiny Web应用程序,该应用程序支持基本的简单和批处理查询,并给出了路径过表达分析列表感兴趣的基因或代谢物,以及基因代谢关系的网络可视化。该软件包还包括原始数据库文件(mysql dump),从而提供了供公众使用和与其他工具集成的独立的可下载框架。此外,在另一个系统上重新创建数据库所需的Python代码也可以公开获得(https://github.com/Mathelab/RaMP-BackEnd)。每年将多次检查RaMP中数据库的更新,并将相应地更新RaMP。

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