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首页> 外文期刊>Journal of Pharmaceutical and Biomedical Analysis: An International Journal on All Drug-Related Topics in Pharmaceutical, Biomedical and Clinical Analysis >Potential of near infrared spectroscopy and pattern recognition for rapid discrimination and quantification of Gleditsia sinensis thorn powder with adulterants
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Potential of near infrared spectroscopy and pattern recognition for rapid discrimination and quantification of Gleditsia sinensis thorn powder with adulterants

机译:近红外光谱的潜力以及用于快速辨别和定量Gleditsia Sinensis刺粉的掺杂剂的潜力

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摘要

TheGleditsia sinensisLam thorn (GST) is a classical traditional Chinese medical herb, which is of high medical and economic value. GST could be easily adulterated with branch ofRosa multiflorathunb (BRM) andRosa rugosathumb (BRR), because of their similar appearances and much lower cost for these adulterants. In this study Fourier transform near-infrared spectroscopy (FT-NIR) combined with chemical pattern recognition techniques was explored for the first time to discriminate and quantify of cheaper materials (BRM and BRR) in GST. The Savitzkye-Golay (SG) smoothing, vector normalization (VN), min max normalization (MMN), first derivative (1?st D) and second derivative (2nd D) methods were used to pre-process the raw FT-NIR spectra. Successive projections algorithm was adopted to select the characteristic variables and linear discriminate analysis (LDA), support vector machine (SVM), as while as back propagation neural network (BPNN) algorithms were applied to construct the identification models. Results showed that BPNN models performance best compared with LDA and SVM models for it could reach 100% accuracy for identifying authentic GST, and GST adulterated with BRM and BRR based on the spectral region of 6500–5500 cm?1combined with 1?st D pre-processing. In addition, the BRM and BRR content in adulterated GST were determined by partial least squares (PLS) regression. The correlation coefficient of prediction (rp), root mean square error of prediction (RMSEP) and bias for the prediction by PLS regression model were 0.9972, 1.969% and 0.3198 for BRM, 0.9972, 1.879% and 0.05408 for BRR, respectively. These results suggest that the combination of NIR spectroscopy and chemometric methods offers a simple, fast and reliable method for classification and quantification in the quality control of the tradition Chinese medicine herb of GST.
机译:TheGleditsia Sinensisislam Thorn(GST)是一种古典传统医学药草,其具有高医学和经济价值。 GST可以很容易地掺杂,因为它们具有类似的外观和这些掺假剂的成本较低,可容易地掺杂。在这项研究中,首次探讨了与化学模式识别技术相结合的傅里叶变换近红外光谱(FT-NIR),以区分和量化GST的更便宜的材料(BRM和BRR)。 SAVITZKYE-GOLAY(SG)平滑,矢量归一化(VN),MIN MAX归一化(MMN),首先衍生(1→ST)和第二衍生物(第2次衍生物)用于预处理原始FT-NIR光谱。采用连续投影算法选择特征变量和线性区分分析(LDA),支持向量机(SVM),因为作为反向传播神经网络(BPNN)算法被应用于构造识别模型。结果表明,与LDA和SVM型号相比,BPNN模型的性能最佳可达到100%的精度来识别真实的GST,并且GST基于6500-5500厘米的光谱区域掺杂,并使用BRM和BRR掺杂。1?St D Pre -加工。此外,掺假GST中的BRM和BRR含量由部分最小二乘(PLS)回归测定。预测的相关系数(RP),预测(RMSEP)的根均方误差和PLS回归模型预测的偏差分别为BRM的0.9972,1.969%和0.3198,分别为BRR为0.9972,1.879%和0.05408。这些结果表明,NIR光谱和化学计量方法的组合提供了一种简单,快速可靠的方法,可在GST传统中医药草的质量控制中进行分类和量化。

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