Jintao Xue, Quanwei Yang, Chunyan Li, Yun Jing, Shuangxi Wang, Mingxiang Zhang, Peng Li
School of Pharmacy, Xinxiang Medical University, Xinxiang, Henan Province, PR China.
Department of pharmacy, Wuhan No. 1 Hospital, Wuhan, Hubei Province, PR China.
Planta Med. 2019 Jan;85(1):72-80. doi: 10.1055/a-0655-2211. Epub 2018 Jul 13.
Motivated by the wide use of Scutellariae Radix (SR) in the food and pharmaceutical industries, a rapid and non-destructive near-infrared spectroscopy (NIRS) method was developed for the simultaneous analysis of three main active components in raw SR and SR processed by stir-frying with wine. From seven geographical areas, 58 samples were collected. The reference contents for the SR components baicalin, baicalein, and wogonin were determined by high-performance liquid chromatography. Two multivariate analysis methods, partial least-squares (PLS) regression as a linear regression method and artificial neural networks (ANN) as a nonlinear regression method, were applied to the NIR data, and their results were compared. In the PLS model, different model parameters (i.e., 11 spectral pre-treatment methods), spectral region, and latent variables were investigated to optimize the calibration model; additionally, the ANN model was applied with five different spectral pre-treatment methods and six algorithms. For the optimal model parameters, the correlation coefficients of the calibration set for baicalin, baicalein, and wogonin were 0.9979, 0.9786, and 0.9773, respectively; the correlation coefficients of the prediction set were 0.9756, 0.9843, and 0.9592, respectively; the root mean square error of validation values were 0.215, 0.321, and 0.174, respectively. The optimal NIR models were then employed to analyze the effects of processing and geographical regions on analyte contents. The established NIR methods were robust, accurate, and reproducible. NIRS may be a promising approach for the routine screening and quality control of traditional Chinese medicines.
受黄芩在食品和制药行业广泛应用的推动,开发了一种快速无损的近红外光谱(NIRS)方法,用于同时分析生黄芩及酒炙黄芩中的三种主要活性成分。从七个地理区域收集了58个样品。采用高效液相色谱法测定黄芩中黄芩苷、黄芩素和汉黄芩素的参考含量。将偏最小二乘法(PLS)回归作为线性回归方法和人工神经网络(ANN)作为非线性回归方法这两种多元分析方法应用于近红外数据,并比较它们的结果。在PLS模型中,研究了不同的模型参数(即11种光谱预处理方法)、光谱区域和潜在变量,以优化校准模型;此外,ANN模型采用了五种不同的光谱预处理方法和六种算法。对于最优模型参数,黄芩苷、黄芩素和汉黄芩素校准集的相关系数分别为0.9979、0.9786和0.9773;预测集的相关系数分别为0.9756、0.9843和0.9592;验证值的均方根误差分别为0.215、0.321和0.174。然后采用最优的近红外模型分析加工和地理区域对分析物含量的影响。所建立的近红外方法稳健、准确且可重复。近红外光谱法可能是一种用于中药常规筛选和质量控制的有前途的方法。