School of Chemical and Environmental Engineering, China University of Mining and Technology (Beijing), Ding No. 11, Xueyuan road, Haidian District, Beijing, 100083, China.
China National Institute of Food and Fermentation Industries, Building 6, No. 24 Jiuxianqiao middle road, Chaoyang District, Beijing, 100015, China.
J Food Drug Anal. 2018 Jul;26(3):1033-1044. doi: 10.1016/j.jfda.2017.12.009. Epub 2018 Jan 18.
The elemental profile and oxygen isotope ratio (δO) of 188 wine samples collected from the Changji, Mile, and Changli regions in China were analyzed by inductively coupled plasma mass spectrometry (ICP-MS), inductively coupled plasma optical emission spectroscopy (ICP-OES) and isotope ratio mass spectrometry (IRMS), respectively. By combining the data of δO and the concentration data of 52 elements, the analysis of variance (ANOVA) technique was firstly applied to obtain the important descriptors for the discrimination of the three geographical origins. Ca, Al, Mg, B, Fe, K, Rb, Mn, Na, P, Co, Ga, As, Sr, and δO were identified as the key explanatory factors. In the second step, the key elements were employed as input variables for the subsequent partial least squares discrimination analysis (PLS-DA) and support vector machine (SVM) analyses. Then, cross validation and random data splitting (training set: test set = 70:30, %) were performed to avoid the over-fitting problem. The average correct classification rates of the PLS-DA and SVM models for the training set were both 98%, while for the test set, these values were 95%, 97%, respectively. Thus, it was suggested that the combination of oxygen isotope ratio (δO) and elemental profile with multi-step multivariate analysis is a promising approach for the verification of the considered three geographical origins of Chinese wines.
采用电感耦合等离子体质谱仪(ICP-MS)、电感耦合等离子体发射光谱仪(ICP-OES)和同位素比质谱仪(IRMS),分别分析了中国昌吉、米乐和昌黎地区采集的 188 个葡萄酒样本的元素概况和氧同位素比值(δO)。通过结合δO 数据和 52 种元素的浓度数据,首次应用方差分析(ANOVA)技术,得出了区分三个地理来源的重要描述符。Ca、Al、Mg、B、Fe、K、Rb、Mn、Na、P、Co、Ga、As、Sr 和δO 被确定为关键解释因素。在第二步中,将关键元素作为后续偏最小二乘判别分析(PLS-DA)和支持向量机(SVM)分析的输入变量。然后,通过交叉验证和随机数据分割(训练集:测试集=70:30%),避免过度拟合问题。PLS-DA 和 SVM 模型对训练集的平均正确分类率均为 98%,而对于测试集,这些值分别为 95%和 97%。因此,建议将氧同位素比值(δO)和元素概况与多步多元分析相结合,是验证中国葡萄酒三个地理来源的有前途的方法。