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一种用于初榨橄榄油质量分类的顶空-气相色谱-离子迁移谱法,作为感官评定的筛选支持方法。

An HS-GC-IMS Method for the Quality Classification of Virgin Olive Oils as Screening Support for the Panel Test.

作者信息

Valli Enrico, Panni Filippo, Casadei Enrico, Barbieri Sara, Cevoli Chiara, Bendini Alessandra, García-González Diego L, Gallina Toschi Tullia

机构信息

Department of Agricultural and Food Science, Alma Mater Studiorum-Università di Bologna, 47521 Cesena, Italy.

Interdepartmental Center for Industrial Agrofood Research, Alma Mater Studiorum-Università di Bologna, 47521 Cesena, Italy.

出版信息

Foods. 2020 May 20;9(5):657. doi: 10.3390/foods9050657.

Abstract

Sensory evaluation, carried out by panel tests, is essential for quality classification of virgin olive oils (VOOs), but is time consuming and costly when many samples need to be assessed; sensory evaluation could be assisted by the application of screening methods. Rapid instrumental methods based on the analysis of volatile molecules might be considered interesting to assist the panel test through fast pre-classification of samples with a known level of probability, thus increasing the efficiency of quality control. With this objective, a headspace gas chromatography-ion mobility spectrometer (HS-GC-IMS) was used to analyze 198 commercial VOOs (extra virgin, virgin and lampante) by a semi-targeted approach. Different partial least squares-discriminant analysis (PLS-DA) chemometric models were then built by data matrices composed of 15 volatile compounds, which were previously selected as markers: a first approach was proposed to classify samples according to their quality grade and a second based on the presence of sensory defects. The performance (intra-day and inter-day repeatability, linearity) of the method was evaluated. The average percentages of correctly classified samples obtained from the two models were satisfactory, namely 77% (prediction of the quality grades) and 64% (prediction of the presence of three defects) in external validation, thus demonstrating that this easy-to-use screening instrumental approach is promising to support the work carried out by panel tests.

摘要

通过感官评定小组进行的感官评价对于初榨橄榄油(VOO)的质量分级至关重要,但当需要评估大量样品时,该方法既耗时又昂贵;感官评价可以借助筛选方法来辅助进行。基于挥发性分子分析的快速仪器方法可能是一种有趣的手段,通过对已知概率水平的样品进行快速预分类来辅助感官评定小组测试,从而提高质量控制的效率。出于这个目的,采用顶空气相色谱 - 离子迁移谱仪(HS-GC-IMS)通过半靶向方法分析了198种市售初榨橄榄油(特级初榨、初榨和粗榨)。然后,由15种先前被选为标志物的挥发性化合物组成的数据矩阵构建了不同的偏最小二乘判别分析(PLS-DA)化学计量学模型:第一种方法是根据样品的质量等级对其进行分类,第二种方法是基于感官缺陷的存在情况进行分类。评估了该方法的性能(日内和日间重复性、线性)。从这两个模型获得的正确分类样品的平均百分比令人满意,即在外部验证中分别为77%(质量等级预测)和64%(三种缺陷存在情况的预测),从而表明这种易于使用的筛选仪器方法有望支持感官评定小组测试所开展的工作。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b645/7278584/3d8c2699146c/foods-09-00657-g001.jpg

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