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气相色谱-质谱联用结合化学计量学技术用于姜黄根茎的质量控制和原产地鉴别:挥发油分析

GC-MS combined with chemometric techniques for the quality control and original discrimination of Curcumae longae rhizome: analysis of essential oils.

作者信息

Hu Yichen, Kong Weijun, Yang Xihui, Xie Liwei, Wen Jing, Yang Meihua

机构信息

Institute of Medicinal Plant Development, Chinese Academy of Medical Sciences, Peking Union Medical College, Beijing, China.

出版信息

J Sep Sci. 2014 Feb;37(4):404-11. doi: 10.1002/jssc.201301102. Epub 2014 Jan 6.

Abstract

Curcumae longae rhizome is a widely used traditional herb in many countries. Various geographical origins of this herb might lead to diversity or instability of the herbal quality. The objective of this work was to establish the chemical fingerprints for quality control and find the chemical markers for discriminating these herbs from different origins. First, chemical fingerprints of essential oil of 24 C. longae rhizome from four different geographical origins in China were determined by GC-MS. Then, pattern recognition techniques were introduced to analyze these abundant chemical data in depth; hierarchical cluster analysis was used to sort samples into groups by measuring their similarities, and principal component analysis and partial least-squares discriminate analysis were applied to find the main chemical markers for discriminating these samples. Curcumae longae rhizome from Guangxi province had the highest essential oil yield (4.32 ± 1.45%). A total of 46 volatile compounds were identified in total. Consistent results were obtained to show that C. longae rhizome samples could be successfully grouped according to their origins, and turmerone, ar-turmerone, and zingiberene were the characteristic components for discriminating these samples of various geographical origins and for quality control. This finding revealed that fingerprinting analysis based on GC-MS coupled with chemometric techniques could provide a reliable platform to discriminate herbs from different origins, which is a benefit for quality control.

摘要

姜黄根茎是许多国家广泛使用的传统草药。这种草药的不同地理来源可能导致草药质量的多样性或不稳定性。这项工作的目的是建立用于质量控制的化学指纹图谱,并找到区分不同来源草药的化学标志物。首先,采用气相色谱-质谱联用(GC-MS)法测定了来自中国四个不同地理来源的24份姜黄根茎精油的化学指纹图谱。然后,引入模式识别技术对这些丰富的化学数据进行深入分析;采用层次聚类分析通过测量样品的相似度将其分组,主成分分析和偏最小二乘判别分析用于寻找区分这些样品的主要化学标志物。广西产姜黄根茎的精油得率最高(4.32±1.45%)。共鉴定出46种挥发性成分。结果一致表明,姜黄根茎样品可根据其来源成功分组,姜黄酮、芳姜黄酮和姜烯是区分不同地理来源样品及进行质量控制的特征成分。这一发现表明,基于GC-MS联用化学计量学技术的指纹图谱分析可为区分不同来源的草药提供可靠平台,这有利于质量控制。

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