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首页> 外文期刊>Analytica chimica acta >One- and two-dimensional gas chromatography-mass spectrometry and high performance liquid chromatography-diode-array detector fingerprints of complex substances: A comparison of classification performance of similar, complex Rhizoma Curcumae samples with the aid of chemometrics
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One- and two-dimensional gas chromatography-mass spectrometry and high performance liquid chromatography-diode-array detector fingerprints of complex substances: A comparison of classification performance of similar, complex Rhizoma Curcumae samples with the aid of chemometrics

机译:复杂物质的一维和二维气相色谱-质谱法和高效液相色谱-二极管阵列检测器指纹图:借助化学计量学比较相似的,复杂的姜黄样品的分类性能

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摘要

Many complex natural or synthetic products are analysed either by the GC-MS (gas chromatography-mass spectrometry) or HPLC-DAD (high performance liquid chromatography-diode-array detector) technique, each of which produces a one-dimensional fingerprint for a given sample. This may be used for classification of different batches of a product. GC-MS and HPLC-DAD analyses of complex, similar substances represented by the three common types of the TCM (traditional Chinese medicine), Rhizoma Curcumae were analysed in the form of one- and two-dimensional matrices firstly with the use of PCA (Principal component analysis), which showed a reasonable separation of the samples for each technique. However, the separation patterns were rather different for each analytical method, and PCA of the combined data matrix showed improved discrimination of the three types of object; close associations between the GC-MS and HPLC-DAD variables were observed. LDA (linear discriminant analysis), BP-ANN (back propagation-artificial neural networks) and LS-SVM (least squares-support vector machine) chemometrics methods were then applied to classify the training and prediction sets. For one-dimensional matrices, all training models indicated that several samples would be misclassified; the same was observed for each prediction set. However, by comparison, in the analysis of the combined matrix, all models gave 100% classification with the training set, and the LS-SVM calibration also produced a 100% result for prediction, with the BP-ANN calibration closely behind. This has important implications for comparing complex substances such as the TCMs because clearly the one-dimensional data matrices alone produce inferior results for training and prediction as compared to the combined data matrix models. Thus, product samples may be misclassified with the use of the one-dimensional data because of insufficient information.
机译:通过GC-MS(气相色谱-质谱法)或HPLC-DAD(高效液相色谱-二极管阵列检测器)技术分析了许多复杂的天然或合成产品,每种技术都会针对给定的特征生成一维指纹样品。这可用于分类不同批次的产品。用一维和二维矩阵形式对一类和二维矩阵形式的GC-MS和HPLC-DAD分析方法以一维和二维矩阵的形式对以三种常见类型的中药代表的复杂相似物质进行了分析(主成分分析),表明每种技术的样品均已合理分离。但是,每种分析方法的分离模式都大不相同,组合数据矩阵的PCA显示出对三种类型对象的更好的辨别力。观察到GC-MS和HPLC-DAD变量之间的密切联系。然后使用LDA(线性判别分析),BP-ANN(反向传播-人工神经网络)和LS-SVM(最小二乘支持向量机)化学计量学方法对训练和预测集进行分类。对于一维矩阵,所有训练模型都表明将对几个样本进行错误分类。对于每个预测集,观察到的结果相同。但是,通过比较,在组合矩阵的分析中,所有模型都对训练集进行了100%分类,并且LS-SVM校准也产生了100%的预测结果,而BP-ANN校准紧随其后。这对于比较复杂的物质(如TCM)具有重要意义,因为与组合的数据矩阵模型相比,显然一维数据矩阵单独产生的训练和预测结果差。因此,由于信息不足,使用一维数据可能会对产品样本进行错误分类。

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