Research Institute for Pesticides and Water (IUPA), University Jaume I, Avda. Sos Baynat, E-12071 Castellón, Spain.
Research Institute for Pesticides and Water (IUPA), University Jaume I, Avda. Sos Baynat, E-12071 Castellón, Spain.
Food Chem. 2019 Jan 15;271:488-496. doi: 10.1016/j.foodchem.2018.07.200. Epub 2018 Jul 26.
The capabilities of dynamic headspace entrainment followed by thermal desorption in combination with gas chromatography (GC) coupled to single quadrupole mass spectrometry (MS) have been tested for the determination of volatile components of olive oil. This technique has shown a great potential for olive oil quality classification by using an untargeted approach. The data processing strategy consisted of three different steps: component detection from GC-MS data using novel data treatment software PARADISe, a multivariate analysis using EZ-Info, and the creation of the statistical models. The great number of compounds determined enabled not only the development of a quality classification method as a complementary tool to the official established method "PANEL TEST" but also a correlation between these compounds and different types of defect. Classification method was finally validated using blind samples. An accuracy of 85% in oil classification was obtained, with 100% of extra virgin samples correctly classified.
动态顶空进样和热解吸与气相色谱(GC)-单四极杆质谱(MS)联用的能力已被用于测定橄榄油中的挥发性成分。这种技术通过采用无目标的方法,显示了橄榄油质量分类的巨大潜力。数据处理策略包括三个不同的步骤:使用新型数据处理软件 PARADISe 从 GC-MS 数据中检测成分,使用 EZ-Info 进行多元分析,以及创建统计模型。大量确定的化合物不仅使作为官方“PANEL TEST”方法的补充工具的质量分类方法得以发展,而且还使这些化合物与不同类型的缺陷之间建立了相关性。最后使用盲样对分类方法进行了验证。在油类分类中获得了 85%的准确性,100%的特级初榨油样本得到了正确分类。