首页> 外文期刊>Journal of mass spectrometry: JMS >Diagnostic fragmentation-assisted mass spectral networking coupled with in silico dereplication for deep annotation of steroidal alkaloids in medicinal Fritillariae Bulbus
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Diagnostic fragmentation-assisted mass spectral networking coupled with in silico dereplication for deep annotation of steroidal alkaloids in medicinal Fritillariae Bulbus

机译:诊断碎片辅助质谱网络与硅含有生物碱的硅质统计耦合,用于药物贝母植物甾体碱

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Fully understanding the chemicals in an herbal medicine remains a challenging task. Molecular networking (MN) allows to organize tandem mass spectrometry (MS/MS) data in complex samples by mass spectral similarity, which yet suffers from low coverage and accuracy of compound annotation due to the size limitation of available databases and differentiation obstacle of similar chemical scaffolds. In this work, an enhanced MN-based strategy named diagnostic fragmentation-assisted molecular networking coupled with in silico dereplication (DFMN-ISD) was introduced to overcome these obstacles: the rule-based fragmentation patterns provide insights into similar chemical scaffolds, the generated in silico candidates based on metabolic reactions expand the available natural product databases, and the in silico annotation method facilitates the further dereplication of candidates by computing their fragmentation trees. As a case, this approach was applied to globally profile the steroidal alkaloids in Fritillariae bulbus, a commonly used antitussive and expectorant herbal medicine. Consequently, a total of 325 steroidal alkaloids were discovered, including 106cis-D/E-cevanines, 142trans-D/E-cevanines, 29 jervines, 23 veratramines, and 25 verazines. And 10 of them were confirmed by available reference standards. Approximately 70% of the putative steroidal alkaloids have never been reported in previous publications, demonstrating the benefit of DFMN-ISD approach for the comprehensive characterization of chemicals in a complex plant organism.
机译:充分了解草药中的化学品仍然是一个具有挑战性的任务。分子网络(MN)允许通过质谱相似性在复杂样品中组织串联质谱(MS / MS / MS)数据,这仍然由于可用数据库的尺寸限制和类似化学物质的差异障碍而受到低覆盖率和精度的覆盖率和准确性脚手架。在这项工作中,引入了一种提高基于MN的诊断碎片辅助分子网络(DFMN-ISD)的诊断碎片辅助分子网络(DFMN-ISD)克服这些障碍:规则的碎片模式提供了与类似化学支架的见解,产生的洞察力基于代谢反应的硅候选扩大了可用的天然产品数据库,并且Silico注释方法通过计算碎片树来促进候选人的进一步涵表。例如,这种方法适用于全球植物突破甾脂肪酸毒素的甾体生物碱,常用的抗痉挛和祛痰药草医学。因此,发现了总共325个甾体生物碱,包括106cis-d / e-civanines,142 rans-d / e-civanines,29克林,23个藜碱和25个丙唑。其中10个由可用的参考标准确认。从未在以前的出版物中报道了大约70%的推定甾体生物碱,证明了DFMN-ISD方法在复杂的植物生物中综合表征化学品的益处。

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