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结合多变量分析实施物理化学和感官分析以评估橄榄油的真伪/掺假情况。

Implementation of physicochemical and sensory analysis in conjunction with multivariate analysis towards assessing olive oil authentication/adulteration.

作者信息

Arvanitoyannis Ioannis S, Vlachos Antonios

机构信息

University of Thessaly, School of Agricultural Sciences, Department of Agriculture Animal Production and Aquatic Environment, Volos, Hellas, Greece.

出版信息

Crit Rev Food Sci Nutr. 2007;47(5):441-98. doi: 10.1080/10408390600846325.

Abstract

The authenticity of products labeled as olive oils, and in particular as virgin olive oils, stands for a very important issue both in terms of its health and commercial aspects. In view of the continuously increasing interest in virgin olive oil therapeutic properties, the traditional methods of characterization and physical and sensory analysis were further enriched with more advanced and sophisticated methods such as HPLC-MS, HPLC-GC/C/IRMS, RPLC-GC, DEPT, and CSIA among others. The results of both traditional and "novel" methods were treated both by means of classical multivariate analysis (cluster, principal component, correspondence, canonical, and discriminant) and artificial intelligence methods showing that nowadays the adulteration of virgin olive oil with seed oil is detectable at very low percentages, sometimes even at less than 1%. Furthermore, the detection of geographical origin of olive oil is equally feasible and much more accurate in countries like Italy and Spain where databases of physical/chemical properties exist. However, this geographical origin classification can also be accomplished in the absence of such databases provided that an adequate number of oil samples are used and the parameters studied have "discriminating power."

摘要

标为橄榄油,尤其是初榨橄榄油的产品的真实性,在健康和商业方面都是一个非常重要的问题。鉴于对初榨橄榄油治疗特性的兴趣不断增加,传统的表征方法以及物理和感官分析方法通过诸如HPLC-MS、HPLC-GC/C/IRMS、RPLC-GC、DEPT和CSIA等更先进、更复杂的方法得到了进一步丰富。传统方法和“新”方法的结果都通过经典多元分析(聚类、主成分、对应、典型和判别分析)以及人工智能方法进行处理,结果表明,如今初榨橄榄油中掺有种子油的情况在非常低的比例下就能被检测出来,有时甚至低于1%。此外,在意大利和西班牙等拥有物理/化学性质数据库的国家,检测橄榄油的地理来源同样可行且更为准确。然而,即使没有这样的数据库,只要使用足够数量的油样且所研究的参数具有“区分能力”,也能够完成这种地理来源分类。

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