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首页> 外文期刊>Phytochemistry >Class targeted metabolomics: ESI ion trap screening methods for glucosinolates based on MS(n) fragmentation.
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Class targeted metabolomics: ESI ion trap screening methods for glucosinolates based on MS(n) fragmentation.

机译:类目标代谢组学:基于MS(n)片段化的芥子油苷的ESI离子阱筛选方法。

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摘要

Glucosinolates are naturally occurring anionic secondary plant metabolites incorporating a thioglucosidic link to the carbon of a sulphonated oxime. There are a large number of naturally occurring glucosinolates and they are found in relatively large quantities in many plant species within the family Crucifereae. These metabolites are of interest for both their anticancer and flavour properties and in the study of nitrogen and sulphur metabolism in model plants such as Arabidopsis. Parent ion mapping is an analytical mass spectrometry approach that allows rapid assessment of glucosinolate content. Ion mapping proved to be highly sensitive and the glucosinolate sinigrin could be detected at three parts per trillion. This method takes advantage of the glucosinolate anion fragmentation which consistently produces a sulphonate ring-opened glucose moiety in the ion trap mass spectrometer, m/z 259. An intramolecular transfer mechanism for this fragmentation is presented here for the first time. This fragmentation can be exploited as a general identifier of the glucosinolate class of metabolites in plant extracts and in LCMS(n) can be employed provide positive identification and quantification of individual glucosinolates. Such approaches offer sensitive tools for focused metabolomics analysis and screening of plant breeding lines.
机译:芥子油苷是天然存在的阴离子二级植物代谢产物,其结合了硫代糖苷键与磺化肟的碳。存在大量天然存在的芥子油苷,并且在十字花科中的许多植物物种中都发现了相对大量的芥子油苷。这些代谢物因其抗癌和风味特性以及在拟南芥等模型植物中氮和硫代谢的研究而受到关注。母体离子图谱分析是一种质谱分析方法,可以快速评估芥子油苷的含量。离子图谱证明是高度敏感的,硫代葡萄糖苷芥子苷的检出量为万亿分之三。该方法利用了硫代葡萄糖苷阴离子的碎片化作用,该作用在离子阱质谱仪m / z 259中始终产生磺酸盐开环的葡萄糖部分。此处首次介绍了这种碎片化的分子内转移机制。该片段化可被用作植物提取物中芥子油苷类代谢物的一般标识符,并且在LCMS(n)中可用于提供单个芥子油苷的阳性鉴定和定量。这些方法为集中代谢组学分析和植物育种系筛选提供了灵敏的工具。

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