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首页> 外文期刊>Computational and Structural Biotechnology Journal >{STATISTICAL} {METHODS} {FOR} {THE} {ANALYSIS} {OF} HIGH-THROUGHPUT {METABOLOMICS} {DATA}
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{STATISTICAL} {METHODS} {FOR} {THE} {ANALYSIS} {OF} HIGH-THROUGHPUT {METABOLOMICS} {DATA}

机译:{STATISTICAL} {METHODS} {FOR} {THE} {ANALYSIS} {OF}高吞吐量{METABOLOMICS} {DATA}

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Metabolomics is a relatively new high-throughput technology that aims at measuring all endogenous metabolites within a biological sample in an unbiased fashion. The resulting metabolic profiles may be regarded as functional signatures of the physiological state, and have been shown to comprise effects of genetic regulation as well as environmental factors. This potential to connect genotypic to phenotypic information promises new insights and biomarkers for different research fields, including biomedical and pharmaceutical research. In the statistical analysis of metabolomics data, many techniques from other omics fields can be reused. However recently, a number of tools specific for metabolomics data have been developed as well. The focus of this mini review will be on recent advancements in the analysis of metabolomics data especially by utilizing Gaussian graphical models and independent component analysis.
机译:代谢组学是一种相对较新的高通量技术,旨在以公正的方式测量生物样品中的所有内源性代谢物。所得的代谢概况可被认为是生理状态的功能特征,并且已被证明包括遗传调控和环境因素。将基因型与表型信息联系起来的潜力为包括生物医学和药物研究在内的不同研究领域提供了新的见识和生物标记。在代谢组学数据的统计分析中,可以重复使用其他组学领域的许多技术。然而,最近,还开发了许多专门用于代谢组学数据的工具。这篇小型综述的重点是代谢组学数据分析的最新进展,尤其是通过利用高斯图形模型和独立成分分析。

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