Tao Lingyan, Lin Zhonglin, Chen Jiashan, Wu Yongjiang, Liu Xuesong
College of Pharmaceutical Sciences, Zhejiang University, Hangzhou, 310058, China.
College of Pharmaceutical Sciences, Zhejiang University, Hangzhou, 310058, China.
J Pharm Biomed Anal. 2017 Oct 25;145:1-9. doi: 10.1016/j.jpba.2017.06.021. Epub 2017 Jun 16.
Gardeniae Fructus is widely used in the pharmaceutical industry, and many studies have confirmed its medical and economic value. In this study, samples collected from different liquid-liquid extraction batches of Gardeniae Fructus were detected by mid-infrared (MIR) and near-infrared (NIR) spectroscopy. Seven analytes, neochlorogenic acid (5-CQA), cryptochlorogenic acid (4-CQA), chlorogenic acid (3-CQA), geniposidic acid (GEA), deacetyl-asperulosidic acid methyl ester (DAAME), genipin-gentiobioside (GGB), and gardenoside (GA), were chosen as quality property indexes of Gardeniae Fructus. The two kinds of spectra were each used to build models by single partial least squares (PLS). Additionally, both spectral data were combined and modeled by multiblock PLS. For single spectroscopy modeling results, NIR had a better prediction for high-concentration analytes (3-CQA, DAAME, GGB, and GA) whereas MIR performed better for low-concentration analytes (5-CQA, 4-CQA, and GEA). The multiblock methodology was found to be better compared to single spectroscopy models for all seven analytes. Specifically, the coefficients of determination (R) of the NIR, MIR, and multiblock PLS calibration models of all seven components were higher than 0.95. Relative standard errors of prediction (RSEP) were all less than 7%, except for models of GGB, which were 10.36%, 13.24%, and 8.15% for the NIR-PLS, MIR-PLS, and multiblock models, respectively. These results indicate that MIR and NIR spectrographic techniques could provide a new choice for quality control in industrial production of Gardeniae Fructus.
栀子在制药工业中被广泛应用,许多研究已证实其医学和经济价值。在本研究中,采用中红外(MIR)和近红外(NIR)光谱法对不同液液萃取批次的栀子样品进行检测。选择了7种分析物,即新绿原酸(5 - CQA)、隐绿原酸(4 - CQA)、绿原酸(3 - CQA)、京尼平苷酸(GEA)、去乙酰车叶草苷酸甲酯(DAAME)、京尼平龙胆双糖苷(GGB)和栀子苷(GA)作为栀子的质量属性指标。分别使用这两种光谱通过单偏最小二乘法(PLS)建立模型。此外,将两种光谱数据合并并用多块PLS建模。对于单光谱建模结果,NIR对高浓度分析物(3 - CQA、DAAME、GGB和GA)的预测效果较好,而MIR对低浓度分析物(5 - CQA、4 - CQA和GEA)表现更佳。结果发现,对于所有7种分析物,多块方法比单光谱模型更好。具体而言,所有7种成分的NIR、MIR和多块PLS校准模型的决定系数(R)均高于0.95。预测相对标准误差(RSEP)均小于7%,GGB模型除外,其NIR - PLS、MIR - PLS和多块模型的RSEP分别为10.36%、13.24%和8.15%。这些结果表明,MIR和NIR光谱技术可为栀子工业生产中的质量控制提供新的选择。