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Rapid Determination of Chlorogenic Acid Luteoloside and 35-O-dicaffeoylquinic Acid in Chrysanthemum Using Near-Infrared Spectroscopy

机译:近红外光谱法快速测定菊花中的绿原酸黄体苷和35-O-二咖啡酰奎尼酸

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摘要

The feasibility of near-infrared spectroscopy (NIR) to detect chlorogenic acid, luteoloside and 3,5-O-dicaffeoylquinic acid in Chrysanthemum was investigated. An NIR spectroradiometer was applied for data acquisition. The reference values of chlorogenic acid, luteoloside, and 3,5-O-dicaffeoylquinic acid of the samples were determined by high-performance liquid chromatography (HPLC) and were used for model calibration. The results of six preprocessing methods were compared. To reduce input variables and collinearity problems, three methods for variable selection were compared, including successive projections algorithm (SPA), genetic algorithm-partial least squares regression (GA-PLS), and competitive adaptive reweighted sampling (CARS). The selected variables were employed as the inputs of partial least square (PLS), back propagation-artificial neural networks (BP-ANN), and extreme learning machine (ELM) models. The best performance was achieved by BP-ANN models based on variables selected by CARS for all three chemical constituents. The values of rp2 (correlation coefficient of prediction) were 0.924, 0.927, 0.933, the values of RMSEP were 0.033, 0.018, 0.064 and the values of RPD were 3.667, 3.667, 2.891 for chlorogenic acid, luteoloside, and 3,5-O-dicaffeoylquinic acid, respectively. The results indicated that NIR spectroscopy combined with variables selection and multivariate calibration methods could be considered as a useful tool for rapid determination of chlorogenic acid, luteoloside, and 3,5-O-dicaffeoylquinic acid in Chrysanthemum.
机译:研究了近红外光谱(NIR)检测菊花中绿原酸,黄体甙和3,5-O-二咖啡酰奎尼酸的可行性。近红外光谱辐射仪用于数据采集。样品的绿原酸,黄体苷和3,5-O-二咖啡酰奎尼酸的参考值通过高效液相色谱(HPLC)确定,并用于模型校准。比较了六种预处理方法的结果。为了减少输入变量和共线性问题,比较了三种变量选择方法,包括连续投影算法(SPA),遗传算法-偏最小二乘回归(GA-PLS)和竞争性自适应加权抽样(CARS)。选择的变量被用作偏最小二乘(PLS),反向传播人工神经网络(BP-ANN)和极限学习机(ELM)模型的输入。基于CARS为所有三种化学成分选择的变量,通过BP-ANN模型获得了最佳性能。绿原酸的rp 2 值(预测的相关系数)为0.924、0.927、0.933,RMSEP值为0.033、0.018、0.064,RPD的值为3.667、3.667、2.891。黄体苷和3,5-O-二咖啡酰奎尼酸。结果表明,近红外光谱结合变量选择和多变量校准方法可以被认为是快速测定菊花中绿原酸,黄体甙和3,5-O-二咖啡酰奎尼酸的有用工具。

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