首页> 外文期刊>The Analyst: The Analytical Journal of the Royal Society of Chemistry: A Monthly International Publication Dealing with All Branches of Analytical Chemistry >Implementation of a semi-automated strategy for the annotation of metabolomic fingerprints generated by liquid chromatography-high resolution mass spectrometry from biological samples
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Implementation of a semi-automated strategy for the annotation of metabolomic fingerprints generated by liquid chromatography-high resolution mass spectrometry from biological samples

机译:半自动化策略的实现,用于注释由液相色谱-高分辨率质谱从生物样品中产生的代谢组学指纹

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摘要

Metabolomics aims at detecting and semi-quantifying small molecular weight metabolites in biological samples in order to characterise the metabolic changes resulting from one or more given factors and/or to develop models based on diagnostic biomarker candidates. Nevertheless, whatever the objective of a metabolomic study, one critical step consists in the structural identification of mass spectrometric features revealed by statistical analysis and this remains a real challenge. Indeed, this requires both an understanding of the studied biological system, the correct use of various analytical information (retention time, molecular weight experimentally measured, isotopic golden rules, MS/MS fragment pattern interpretation...), or querying online databases. In gas chromatography-electro-ionisation (EI)-mass spectrometry, EI leads to a very reproducible fragmentation allowing establishment of universal EI mass spectra databases (for example, the NIST database - National Institute of Standards and Technology) and thus facilitates the identification step. Unfortunately, the situation is different when working with liquid chromatography-mass spectrometry (LC-MS) since atmospheric pressure ionisation exhibits high inter-instrument variability regarding fragmentation. Therefore, the constitution of LC-MS "in-house" spectral databases appears relevant in this context. The present study describes the procedure developed and applied to increment 133 and 130 metabolites in databanks dedicated to analyses performed with LC-HRMS in positive and negative electrospray ionisation, and the use of these databanks for annotating quickly untargeted metabolomics fingerprints. This study also describes the optimization of the parameters controlling the automatic processing in order to obtain a fast and reliable annotation of a maximum of organic compounds. This strategy was applied to bovine kidney samples collected from control animals or animals treated with steroid hormones. Thirty-eight compounds were identified successfully in the generated chemical phenotypes, among which five were found to be candidate markers of the administration of these anabolic agents, demonstrating the efficiency of the developed strategy to reveal and confirm metabolite structures according to the high-throughput objective expected from these integrative biological approaches.
机译:代谢组学旨在检测和半定量生物样品中的小分子量代谢物,以表征由一种或多种给定因素引起的代谢变化和/或基于诊断性生物标志物候选物开发模型。尽管如此,无论代谢组学研究的目的是什么,关键的一步都是通过统计分析揭示出质谱特征的结构鉴定,这仍然是一个真正的挑战。确实,这需要了解所研究的生物系统,正确使用各种分析信息(保留时间,实验测量的分子量,同位素黄金法则,MS / MS片段模式解释...)或查询在线数据库。在气相色谱-电离(EI)-质谱中,EI导致非常可重现的碎片化,从而可以建立通用的EI质谱数据库(例如,NIST数据库-美国国家标准技术研究所),从而简化了鉴定步骤。不幸的是,当使用液相色谱-质谱联用仪(LC-MS)时,情况有所不同,因为大气压离子化在碎裂方面表现出很高的仪器间可变性。因此,在这种情况下,LC-MS“内部”光谱数据库的构成显得很重要。本研究描述了开发并应用于数据库中增量133和130代谢物的程序,该数据库专用于在正电喷雾和负电喷雾电离中使用LC-HRMS进行的分析,以及这些数据库用于快速注释未靶向代谢组学指纹图谱的用途。这项研究还描述了控制自动处理的参数的优化,以便获得最大数量的有机化合物的快速可靠的注释。该策略适用于从对照动物或接受类固醇激素治疗的动物收集的牛肾脏样品。在产生的化学表型中成功鉴定出38种化合物,其中发现5种是这些合成代谢药物给药的候选标记,证明了根据高通量目标揭示和确认代谢物结构的开发策略的有效性这些综合生物学方法所期望的。

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