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Metabolomic network analysis of estrogen-stimulated MCF-7 cells: a comparison of overrepresentation analysis, quantitative enrichment analysis and pathway analysis versus metabolite network analysis

机译:雌激素刺激的MCF-7细胞的代谢组网络分析:过度陈述分析,定量富集分析和途径分析与代谢物网络分析的比较

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In the context of the Human Toxome project, mass spectroscopy-based metabolomics characterization of estrogen-stimulated MCF-7 cells was studied in order to support the untargeted deduction of pathways of toxicity. A targeted and untargeted approach using overrepresentation analysis (ORA), quantitative enrichment analysis (QEA) and pathway analysis (PA) and a metabolite network approach were compared. Any untargeted approach necessarily has some noise in the data owing to artifacts, outliers and misidentified metabolites. Depending on the chemical analytical choices (sample extraction, chromatography, instrument and settings, etc.), only a partial representation of all metabolites will be achieved, biased by both the analytical methods and the database used to identify the metabolites. Here, we show on the one hand that using a data analysis approach based exclusively on pathway annotations has the potential to miss much that is of interest and, in the case of misidentified metabolites, can produce perturbed pathways that are statistically significant yet uninformative for the biological sample at hand. On the other hand, a targeted approach, by narrowing its focus and minimizing (but not eliminating) misidentifications, renders the likelihood of a spurious pathway much smaller, but the limited number of metabolites also makes statistical significance harder to achieve. To avoid an analysis dependent on pathways, we built a de novo network using all metabolites that were different at 24 h with and without estrogen with a p value < 0.01 (53) in the STITCH database, which links metabolites based on known reactions in the main metabolic network pathways but also based on experimental evidence and text mining. The resulting network contained a "connected component" of 43 metabolites and helped identify non-endogenous metabolites as well as pathways not visible by annotation-based approaches. Moreover, the most highly connected metabolites (energy metabolites such as pyruvate and alpha-ketoglutarate, as well as amino acids) showed only a modest change between proliferation with and without estrogen. Here, we demonstrate that estrogen has subtle but potentially phenotypically important alterations in the acyl-carnitine fatty acids, acetyl-putrescine and succinoadenosine, in addition to likely subtle changes in key energy metabolites that, however, could not be verified consistently given the technical limitations of this approach. Finally, we show that a network-based approach combined with text mining identifies pathways that would otherwise neither be considered statistically significant on their own nor be identified via ORA, QEA, or PA.
机译:在人类毒物项目的背景下,研究了基于质谱的基于雌激素刺激的MCF-7细胞的代谢组科,以支持毒性的途径未明确扣除。比较了使用过度陈述分析(ORA),定量富集分析(QEA)和途径分析(PA)和代谢物网络方法的靶向和未确定的方法。由于工件,异常值和错误识别的代谢物,任何未标准的方法都必须在数据中具有一些噪音。取决于化学分析选择(样品提取,色谱,仪器和设置等),将仅实现所有代谢物的部分表示,通过分析方法和用于识别代谢物的数据库偏置。在这里,我们展示了使用完全基于途径注释的数据分析方法的一方面,这些方法有可能错过感兴趣的潜力,并且在错误识别的代谢物的情况下,可以产生具有统计学意义的扰动的途径,但是生物样品手头。另一方面,通过缩小其焦点和最小化(但不是消除)误识别的目标方法,使杂散途径更小的可能性,但代谢物数量有限也使统计显着性难以实现。为了避免依赖于途径的分析,我们使用24小时不同的代谢物建立了DE Novo网络,其中缝合数据库中的AP值<0.01(53)不同,基于主要的已知反应将代谢物联系起来代谢网络途径还基于实验证据和文本挖掘。得到的网络含有43代谢物的“连接组分”,并有助于鉴定非内源代谢物以及基于注释的方法不可见的途径。此外,最高密地的代谢物(例如丙酮酸和α-酮戊酸,以及氨基酸)仅显示出具有和不含雌激素的增殖之间的适度变化。在这里,我们证明雌激素在酰基 - 肉碱脂肪酸,乙酰基 - Putrescine和琥珀诺核苷中具有微妙但潜在的表型重要的改变,除了关键能量代谢产物中的细微变化,不能赋予技术限制,不能持续验证这种方法。最后,我们表明基于网络的方法与文本挖掘结合识别否则既不被认为是统计上重要的途径,也不是通过ORA,QEA或PA识别。

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