Beijing University of Chinese Medicine, Beijing 100102, China.
J Pharm Biomed Anal. 2013 Apr 15;77:16-20. doi: 10.1016/j.jpba.2012.12.026. Epub 2013 Jan 2.
A methodology is proposed to estimate the multivariate detection limits (MDL) of on-line near-infrared (NIR) model in Chinese Herbal Medicines (CHM) system. In this paper, Lonicera japonica was used as an example, and its extraction process was monitored by on-line NIR spectroscopy. Spectra of on-line NIR could be collected by two fiber optic probes designed to transmit NIR radiation by a 2mm-flange. High performance liquid chromatography (HPLC) was used as a reference method to determine the content of chlorogenic acid in the extract solution. Multivariate calibration models were carried out including partial least squares regression (PLS) and interval partial least-squares (iPLS). The result showed improvement of model performance: compared with PLS model, the root mean square errors of prediction (RMSEP) of iPLS model decreased from 0.111mg to 0.068mg, and the R(2) parameter increased from 0.9434 to 0.9801. Furthermore, MDL values were determined by a multivariate method using the type of errors and concentration ranges. The MDL of iPLS model was about 14ppm, which confirmed that on-line NIR spectroscopy had the ability to detect trace amounts of chlorogenic acid in L. japonica. As a result, the application of on-line NIR spectroscopy for monitoring extraction process in CHM could be very encouraging and reliable.
提出了一种用于估计中草药(CHM)系统在线近红外(NIR)模型的多元检测限(MDL)的方法。本文以金银花为例,采用在线 NIR 光谱法对其提取过程进行监测。通过两个设计用于传输 2mm 凸缘的 NIR 辐射的光纤探头可以收集在线 NIR 光谱。高效液相色谱(HPLC)被用作参考方法,以确定提取物溶液中绿原酸的含量。进行了多元校正模型,包括偏最小二乘回归(PLS)和区间偏最小二乘(iPLS)。结果表明模型性能有所提高:与 PLS 模型相比,iPLS 模型的预测均方根误差(RMSEP)从 0.111mg 降低到 0.068mg,R(2)参数从 0.9434 增加到 0.9801。此外,通过使用错误类型和浓度范围的多元方法确定了 MDL 值。iPLS 模型的 MDL 约为 14ppm,这证实了在线 NIR 光谱法具有检测金银花中痕量绿原酸的能力。因此,在线 NIR 光谱法在监测 CHM 提取过程中的应用非常有希望且可靠。