Chinese Academy of Inspection and Quarantine, No. 3 Gaobeidian North Road, Chaoyang District, Beijing 100123, China.
J Agric Food Chem. 2014 Mar 19;62(11):2443-8. doi: 10.1021/jf405045q. Epub 2014 Mar 10.
In this work, the potential of mineral elements and chemometric methods as a tool to classify Chinese honeys according to their botanical origin was examined. Twelve mineral elements (Na(23), Mg(24), P(31), K(39), Ca(43), Mn(55), Fe(56), Cu(63), Zn(66), Rb(85), Sr(88), and Ba(137)) of 163 Chinese honey samples, including linden, vitex, rape, and acacia, collected from Heilongjiang, Beijing, Hebei, and Shaanxi, China, in 2013 were determined by the ICP-MS method. Principal component analysis (PCA) reduced 10 variables to four principal components and could explain 93.06% of the total variance. Partial least-squares discriminant analysis (PLS-DA) and back-propagation artificial neural network (BP-ANN) were explored to construct a classification model. By PLS-DA, the total correct classification rates for model training and cross-validation were 90.9 and 88.4%, respectively. By BP-ANN, the total correct classification rates for model training and cross-validation were 100 and 92.6%, respectively. The performance of BP-ANN was better than that of PLS-DA. The validation of the developed BP-ANN model was tested by the independent test set of 42 honey samples. Linden, vitex, and rape honey samples were predicted with an accuracy of 100%, whereas one acacia honey was predicted as rape honey with an accuracy of 92.3%. It is concluded that the profiles of mineral elements by ICP-MS with chemometric methods could be a potential and powerful tool for the classification of Chinese honey samples from different botanical origins.
本研究旨在探讨矿物元素和化学计量学方法作为一种工具,根据植物来源对中国蜂蜜进行分类的潜力。采用 ICP-MS 法测定了 2013 年在中国黑龙江、北京、河北和陕西采集的 163 个中国蜂蜜样品(包括椴树、荆条、油菜和刺槐)中的 12 种矿物元素(Na(23)、Mg(24)、P(31)、K(39)、Ca(43)、Mn(55)、Fe(56)、Cu(63)、Zn(66)、Rb(85)、Sr(88)和 Ba(137))。主成分分析(PCA)将 10 个变量简化为 4 个主成分,可解释总方差的 93.06%。偏最小二乘判别分析(PLS-DA)和反向传播人工神经网络(BP-ANN)被用于构建分类模型。通过 PLS-DA,模型训练和交叉验证的总正确分类率分别为 90.9%和 88.4%。通过 BP-ANN,模型训练和交叉验证的总正确分类率分别为 100%和 92.6%。BP-ANN 的性能优于 PLS-DA。通过 42 个蜂蜜样品的独立测试集对所建立的 BP-ANN 模型进行了验证。椴树、荆条和油菜蜂蜜样品的预测准确率为 100%,而 1 个刺槐蜂蜜样品的预测准确率为 92.3%。研究表明,ICP-MS 与化学计量学方法相结合的矿物元素图谱可以作为一种潜在的强大工具,用于对不同植物来源的中国蜂蜜样品进行分类。