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In Silico Prediction and Automatic LC-MS~n Annotation of Green Tea Metabolites in Urine

机译:尿液中绿茶代谢产物的计算机模拟和LC-MS〜n自动注释

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摘要

The colonic breakdown and human biotransformation of small molecules present in food can give rise to a large variety of potentially bioactive metabolites in the human body. However, the absence of reference data for many of these components limits their identification in complex biological samples, such as plasma and urine. We present an in silico workflow for automatic chemical annotation of metabolite profiling data from liquid chromatography coupled with multistage accurate mass spectrometry (LC-MS~n), which we used to systematically screen for the presence of tea-derived metabolites in human urine samples after green tea consumption. Reaction rules for intestinal degradation and human biotransformation were systematically applied to chemical structures of 75 green tea components, resulting in a virtual library of 27 245 potential metabolites. All matching precursor ions in the urine LC-MS~n data sets, as well as the corresponding fragment ions, were automatically annotated by in silico generated (sub)structures. The results were evaluated based on 74 previously identified urinary metabolites and lead to the putative identification of 26 additional green tea-derived metabolites. A total of 77% of all annotated metabolites were not present in the Pubchem database, demonstrating the benefit of in silico metabolite prediction for the automatic annotation of yet unknown metabolites in LC-MS~n data from nutritional metabolite profiling experiments.
机译:食物中存在的小分子的结肠分解和人的生物转化会在人体中产生多种潜在的生物活性代谢物。但是,由于缺少许多此类成分的参考数据,因此无法在复杂的生物样品(例如血浆和尿液)中识别它们。我们提出了一种计算机化学工作流程,用于自动化学注释液相色谱与多级精确质谱(LC-MS〜n)结合的代谢物分析数据,用于系统筛查人类尿液样品中茶源性代谢物的存在食用绿茶。肠道降解和人类生物转化的反应规则被系统地应用于75种绿茶成分的化学结构,从而形成了一个包含27245种潜在代谢物的虚拟文库。尿液LC-MS〜n数据集中的所有匹配前体离子以及相应的碎片离子均通过计算机生成的(子)结构自动注释。根据先前鉴定的74种尿代谢物评估结果,并推定鉴定出26种其他绿茶衍生代谢物。共有77%的所有带注释的代谢物未出现在Pubchem数据库中,这证明了计算机模拟代谢物预测对营养性代谢物谱分析实验中LC-MS〜n数据中未知的代谢物的自动注释的益处。

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