Pizarro C, Esteban-Díez I, Sáenz-González C, González-Sáiz J M
Department of Chemistry, University of La Rioja, C/Madre de Dios 51, 26006 Logroño, La Rioja, Spain.
Anal Chim Acta. 2008 Feb 4;608(1):38-47. doi: 10.1016/j.aca.2007.12.006. Epub 2007 Dec 15.
Headspace solid-phase microextraction (HS-SPME) coupled with gas chromatography (GC) and multivariate data analysis were applied to classify different vinegar types (white and red, balsamic, sherry and cider vinegars) on the basis of their volatile composition. The collected chromatographic signals were analysed using the stepwise linear discriminant analysis (SLDA) method, thus simultaneously performing feature selection and classification. Several options, more or less restrictive according to the final number of considered categories, were explored in order to identify the one that afforded highest discrimination ability. The simplicity and effectiveness of the classification methodology proposed in the present study (all the samples were correctly classified and predicted by cross-validation) are promising and encourage the feasibility of using a similar strategy to evaluate the quality and origin of vinegar samples in a reliable, fast, reproducible and cost-efficient way in routine applications. The high quality results obtained were even more remarkable considering the reduced number of discriminant variables finally selected by the stepwise procedure. The use of only 14 peaks enabled differentiation between cider, balsamic, sherry and wine vinegars, whereas only 3 variables were selected to discriminate between red (RW) and white wine (WW) vinegars. The subsequent identification by gas chromatography-mass spectrometry (GC-MS) of the volatile compounds associated with the discriminant peaks selected in the classification process served to interpret their chemical significance.
顶空固相微萃取(HS-SPME)结合气相色谱(GC)和多元数据分析,用于根据不同类型醋(白醋、红醋、香醋、雪利酒醋和苹果酒醋)的挥发性成分对其进行分类。使用逐步线性判别分析(SLDA)方法分析收集到的色谱信号,从而同时进行特征选择和分类。根据最终考虑的类别数量,探索了几种或多或少具有限制性的选项,以确定具有最高判别能力的选项。本研究提出的分类方法简单有效(所有样品通过交叉验证均被正确分类和预测),具有前景,并鼓励在常规应用中使用类似策略以可靠、快速、可重复且经济高效的方式评估醋样品的质量和产地。考虑到逐步程序最终选择的判别变量数量减少,所获得的高质量结果更加显著。仅使用14个峰就能区分苹果酒醋、香醋、雪利酒醋和葡萄酒醋,而仅选择3个变量就能区分红葡萄酒醋(RW)和白葡萄酒醋(WW)。随后通过气相色谱-质谱联用(GC-MS)对分类过程中选择的判别峰相关的挥发性化合物进行鉴定,以解释其化学意义。