Liu Wei, Wang Zhen-Zhong, Qing Jian-Ping, Li Hong-Juan, Xiao Wei
State Key Laboratory of Newtech for Chinese Mdeicine Pharmaceutical Process, Jiangsu Kanion Pharmaceutical Co. Ltd., Lianyungang, Jiangsu Province, 222001, China ; College of Pharmacy, Liaoning University of Traditional Chinese Medicine, Dalian Liaoning province, 116600, China.
State Key Laboratory of Newtech for Chinese Mdeicine Pharmaceutical Process, Jiangsu Kanion Pharmaceutical Co. Ltd., Lianyungang, Jiangsu Province, 222001, China.
Pharmacogn Mag. 2014 Oct;10(40):441-8. doi: 10.4103/0973-1296.141814.
Peach kernels which contain kinds of fatty acids play an important role in the regulation of a variety of physiological and biological functions.
To establish an innovative and rapid diffuse reflectance near-infrared spectroscopy (DR-NIR) analysis method along with chemometric techniques for the qualitative and quantitative determination of a peach kernel.
Peach kernel samples from nine different origins were analyzed with high-performance liquid chromatography (HPLC) as a reference method. DR-NIR is in the spectral range 1100-2300 nm. Principal component analysis (PCA) and partial least squares regression (PLSR) algorithm were applied to obtain prediction models, The Savitzky-Golay derivative and first derivative were adopted for the spectral pre-processing, PCA was applied to classify the varieties of those samples. For the quantitative calibration, the models of linoleic and oleinic acids were established with the PLSR algorithm and the optimal principal component (PC) numbers were selected with leave-one-out (LOO) cross-validation. The established models were evaluated with the root mean square error of deviation (RMSED) and corresponding correlation coefficients (R (2)).
The PCA results of DR-NIR spectra yield clear classification of the two varieties of peach kernel. PLSR had a better predictive ability. The correlation coefficients of the two calibration models were above 0.99, and the RMSED of linoleic and oleinic acids were 1.266% and 1.412%, respectively.
The DR-NIR combined with PCA and PLSR algorithm could be used efficiently to identify and quantify peach kernels and also help to solve variety problem.
桃仁含有多种脂肪酸,在调节多种生理和生物学功能方面发挥着重要作用。
建立一种创新的快速漫反射近红外光谱(DR-NIR)分析方法,并结合化学计量技术对桃仁进行定性和定量测定。
以高效液相色谱(HPLC)为参考方法,对来自9个不同产地的桃仁样品进行分析。DR-NIR的光谱范围为1100-2300nm。应用主成分分析(PCA)和偏最小二乘回归(PLSR)算法获得预测模型,采用Savitzky-Golay导数和一阶导数进行光谱预处理,应用PCA对样品品种进行分类。对于定量校准,采用PLSR算法建立亚油酸和油酸的模型,并采用留一法(LOO)交叉验证选择最佳主成分(PC)数。用偏差均方根误差(RMSED)和相应的相关系数(R(2))对建立的模型进行评价。
DR-NIR光谱的PCA结果对两种桃仁品种进行了清晰的分类。PLSR具有较好的预测能力。两个校准模型的相关系数均在0.99以上,亚油酸和油酸的RMSED分别为1.266%和1.412%。
DR-NIR结合PCA和PLSR算法可有效地用于桃仁的鉴别和定量,也有助于解决品种问题。