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Discrimination of raw and vinegar-processed Genkwa Flos using metabolomics coupled with multivariate data analysis: a discrimination study with metabolomics coupled with PCA.

机译:代谢组学与多变量数据分析相结合的生醋加工工艺Genkwa Flos的鉴别:代谢组学与PCA相结合的鉴别研究。

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摘要

In this paper, a novel approach using UPLC-MS (Ultra performance liquid chromatography tandem mass spectrometry) coupled with multivariate statistic analysis was established for the profiling and discrimination of raw and processed herb using Genkwa Flos as a model herb. A batch of raw and processed samples was analyzed, and the datasets of tR-m/z pairs, ion intensities and sample codes were subjected to the principal component analysis (PCA). Raw and processed herb showed a clear classification of the two groups on the score plot. Loading plot was performed, and the chemical markers having great contributions to the differentiation were screened out. The identities of the chemical markers were identified by comparing the mass spectra and retention times with those of reference compounds and/or tentatively assigned by matching empirical molecular formulae and mass fragments with those of the known compounds published in the literatures. Based on the proposed strategy, yuanhuacine, genkwadaphnin, genkwanin-5-O- beta -D-primeveroside, genkwanine N, genkwanin, 3'-hydroxy-genkwanin and apigenin were explored as representative markers in distinguishing the raw from the processed herbs. The method has been successfully applied in the distinguishing raw from processed herbs. Furthermore, the underlying detoxification mechanism of traditional processing procedure on the herb was predicted, and was related to the changes in the metabolic profiling. This research could be valuable to explore the chemical markers, investigate the mechanism underlying the processing procedure, and promote the quality control and safety application of traditional Chinese herbs.
机译:在本文中,建立了一种使用UPLC-MS(超高效液相色谱串联质谱)结合多元统计分析的新方法,以Genkwa Flos为模型药草,对生药和加工药草进行分析和鉴别。分析了一批原始和处理过的样品,并对t R -m / z对,离子强度和样品编码的数据集进行了主成分分析(PCA)。生的和加工的草药在得分图上显示出两组的清晰分类。进行加载图,并筛选出对分化有重大贡献的化学标记。通过将质谱图和保留时间与参考化合物的质谱图和保留时间进行比较,和/或通过将经验分子式和质量碎片与文献中公开的已知化合物进行匹配,初步确定了化学标记的身份。在提出的策略的基础上,探索了元花碱,genkwadaphnin,genkwanin-5-O-β-D-primeveroside,genkwanine N,genkwanin,3'-hydroxy-genkwanin和芹菜素作为代表性标志物,以区分原料和加工草药。该方法已成功应用于生料和生药的鉴别。此外,还预测了传统加工方法对草药的潜在排毒机理,并且与代谢谱的变化有关。这项研究对于探索化学标记,研究加工过程的潜在机理以及促进中药的质量控制和安全应用可能是有价值的。

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