主成分分析
指纹(计算)
色谱法
高效液相色谱法
质量评定
成分分析
肉桂
化学计量学
模式识别(心理学)
相似性(几何)
化学
卡西亚
分析化学(期刊)
人工智能
数学
统计
计算机科学
评价方法
工程类
病理
图像(数学)
中医药
可靠性工程
替代医学
医学
作者
Jie Yang,Lihong Chen,Qin Zhang,Mao‐Xiang Lai,Qiang Wang
标识
DOI:10.1002/jssc.200600389
摘要
HPLC fingerprint analysis, principle component analysis (PCA), and cluster analysis were introduced for quality assessment of Cortex cinnamomi (CC). The fingerprint of CC was developed and validated by analyzing 30 samples of CC from different species and geographic locations. Seventeen chromatographic peaks were selected as characteristic peaks and their relative peak areas (RPA) were calculated for quantitative expression of the HPLC fingerprints. The correlation coefficients of similarity in chromatograms were higher than 0.95 for the same species while much lower than 0.6 for different species. Besides, two principal components (PCs) have been extracted by PCA. PC1 separated Cinnamomum cassia from other species, capturing 56.75% of variance while PC2 contributed for their further separation, capturing 19.08% variance. The scores of the samples showed that the samples could be clustered reasonably into different groups corresponding to different species and different regions. The scores and loading plots together revealed different chemical properties of each group clearly. The cluster analysis confirmed the results of PCA analysis. Therefore, HPLC fingerprint in combination with chemometric techniques provide a very flexible and reliable method for quality assessment of traditional Chinese medicines.
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