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Automatic Chemical Structure Annotation of an LC-MS~n Based Metabolic Profile from Green Tea

机译:绿茶中基于LC-MS〜n的代谢曲线的自动化学结构注释

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Liquid chromatography coupled with multistage accurate mass spectrometry (LC-MS~n) can generate comprehensive spectral information of metabolites in crude extracts. To support structural characterization of the many metabolites present in such complex samples, we present a novel method (http://www.emetabolomics.org/magma) to automatically process and annotate the LC-MS~n data sets on the basis of candidate molecules from chemical databases, such as PubChem or the Human Metabolite Database. Multistage MS~n spectral data is automatically annotated with hierarchical trees of in silico generated substructures of candidate molecules to explain the observed fragment ions and alternative candidates are ranked on the basis of the calculated matching score. We tested this method on an untargeted LC-MS~n (n ≤ 3) data set of a green tea extract, generated on an LC-LTQ/Orbitrap hybrid MS system. For the 623 spectral trees obtained in a single LC-MS~n run, a total of 116 240 candidate molecules with monoisotopic masses matching within 5 ppm mass accuracy were retrieved from the PubChem database, ranging from 4 to 1327 candidates per molecular ion. The matching scores were used to rank the candidate molecules for each LC-MS~n component. The median and third quartile fractional ranks for 85 previously identified tea compounds were 3.5 and 7.5, respectively. The substructure annotations and rankings provided detailed structural information of the detected components, beyond annotation with elemental formula only. Twenty-four additional components were putatively identified by expert interpretation of the automatically annotated data set, illustrating the potential to support systematic and untargeted metabolite identification.
机译:液相色谱结合多级精确质谱(LC-MS〜n)可以生成粗提物中代谢物的全面光谱信息。为了支持此类复杂样品中存在的许多代谢物的结构表征,我们提出了一种新颖的方法(http://www.emetabolomics.org/magma),可根据候选物自动处理和注释LC-MS〜n数据集化学数据库(例如PubChem或人类代谢物数据库)中的分子。多级MS〜n光谱数据自动由计算机生成的候选分子亚结构的分层树进行注释,以解释观察到的碎片离子,并根据计算出的匹配分数对备选候选物进行排名。我们在LC-LTQ / Orbitrap混合MS系统上生成的绿茶提取物的非目标LC-MS〜n(n≤3)数据集上测试了该方法。对于单次LC-MS运行中获得的623个光谱树,从PubChem数据库中检索到总共116240个候选分子,其单同位素质量匹配在5 ppm质量精度内,每个分子离子的候选化合物范围为4到1327个。匹配分数用于对每个LC-MS〜n组分的候选分子进行排名。 85种先前确定的茶化合物的中位数和第三四分位数分数等级分别为3.5和7.5。除了仅使用元素公式进行的注释外,子结构注释和排名还提供了检测到的组件的详细结构信息。通过对自动注释的数据集的专家解释,推定识别出二十四个附加组件,从而说明了支持系统性和非靶向代谢物识别的潜力。

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