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Analysis of metabolomic data: tools, current strategies and future challenges for omics data integration

机译:代谢组学数据分析:组学数据集成的工具,当前策略和未来挑战

摘要

Metabolomics is a rapidly growing field consisting of the analysis of a large number of metabolites at a system scale. The two major goals of metabolomics are the identification of the metabolites characterizing each organism state and the measurement of their dynamics under different situations (e.g. pathological conditions, environmental factors). Knowledge about metabolites is crucial for the understanding of most cellular phenomena, but this information alone is not sufficient to gain a comprehensive view of all the biological processes involved. Integrated approaches combining metabolomics with transcriptomics and proteomics are thus required to obtain much deeper insights than any of these techniques alone. Although this information is available, multilevel integration of different 'omics' data is still a challenge. The handling, processing, analysis and integration of these data require specialized mathematical, statistical and bioinformatics tools, and several technical problems hampering a rapid progress in the field exist. Here, we review four main tools for number of users or provided features (MetaCore(TM), MetaboAnalyst, InCroMAP and 3Omics) out of the several available for metabolomic data analysis and integration with other 'omics' data, highlighting their strong and weak aspects; a number of related issues affecting data analysis and integration are also identified and discussed. Overall, we provide an objective description of how some of the main currently available software packages work, which may help the experimental practitioner in the choice of a robust pipeline for metabolomic data analysis and integration.
机译:代谢组学是一个快速发展的领域,由系统规模的大量代谢产物分析组成。代谢组学的两个主要目标是鉴定表征每种生物状态的代谢物以及在不同情况下(例如病理条件,环境因素)测量其动态。有关代谢物的知识对于理解大多数细胞现象至关重要,但是仅凭这些信息不足以全面了解所涉及的所有生物学过程。因此,需要将代谢组学与转录组学和蛋白质组学相结合的综合方法,以获得比单独使用任何这些技术都更为深刻的见解。尽管可以获得这些信息,但是不同“组学”数据的多层次集成仍然是一个挑战。这些数据的处理,处理,分析和集成需要专门的数学,统计和生物信息学工具,并且存在一些阻碍该领域快速发展的技术问题。在这里,我们回顾了用于用户数量或所提供功能(MetaCore(TM),MetaboAnalyst,InCroMAP和3Omics)的四个主要工具,这些工具可用于代谢组学数据分析以及与其他“组学”数据的集成,突出了它们的优缺点;还确定并讨论了许多影响数据分析和集成的相关问题。总体而言,我们对当前一些主要可用软件包的工作方式进行了客观描述,这可能有助于实验从业者选择健壮的代谢组学数据分析和集成管道。

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