首页> 外文期刊>European Journal of Lipid Science and Technology >Development of a fatty acid fingerprint of white apricot almond oil by gas chromatography and gas ehromatography-mass spectrometry
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Development of a fatty acid fingerprint of white apricot almond oil by gas chromatography and gas ehromatography-mass spectrometry

机译:气相色谱-气相色谱-质谱联用技术开发白杏杏仁油脂肪酸指纹图谱

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摘要

A new chromatographic fingerprinting method was established for quality control of white apricot almond (WAA) oil. Fifteen WAA oil samples from different batches were analyzed by GC-MS, among which 13 were selected to establish a fatty acid fingerprint of WAA oil according to the results of clustering analysis (CA). Spectral correlative chromatogram was adopted to identify common fatty acid and 18 "common fatty acids" were obtained in 13 WAA oil samples, accounting for 97.3% of the total content. The method of fingerprint analysis was then validated based on the relative retention time and relative peak area of the common peaks, sample stability, and similarity analysis. The similarities of the 13 WAA oil samples were more than 0.98, indicating that the samples from different batches were consistent to some extent. The developed chromatographic fingerprint was successfully used to differentiate WAA oil from frauds and other kinds of oil by similarity comparison, principal-component analysis (PCA), and partial least square regression (PLSR). The fatty acid fingerprint of WAA oil established by supercritical carbon dioxide extraction (SCDE) coupled with GC-MS proved to be suitable for identifying and differentiating samples and can be used for quality control.
机译:建立了一种新的色谱指纹图谱方法,用于白杏杏仁油的质量控制。通过GC-MS分析了15个不同批次的WAA油样品,根据聚类分析(CA)的结果选择了13个样品来建立WAA油的脂肪酸指纹。采用光谱相关色谱法鉴定常见脂肪酸,在13个WAA油样中获得18种“常见脂肪酸”,占总含量的97.3%。然后根据共同峰的相对保留时间和相对峰面积,样品稳定性和相似性分析验证指纹分析方法。 13个WAA油样品的相似度均超过0.98,表明不同批次的样品在一定程度上是一致的。通过相似性比较,主成分分析(PCA)和偏最小二乘回归(PLSR),成功开发的色谱指纹图谱成功地将WAA油与欺诈油和其他种类的油区分开。通过超临界二氧化碳萃取(SCDE)结合GC-MS建立的WAA油的脂肪酸指纹图谱证明适用于鉴定和区分样品,并可用于质量控制。

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