4.6 Article

Comparative Evaluation of Different Targeted and Untargeted Analytical Approaches to Assess Greek Extra Virgin Olive Oil Quality and Authentication

期刊

MOLECULES
卷 27, 期 4, 页码 -

出版社

MDPI
DOI: 10.3390/molecules27041350

关键词

extra virgin olive oil; authenticity; variety identification; FAMEs; HRMS; metabolomics; optical spectroscopy; visible absorption; fluorescence; Raman; machine learning

资金

  1. Greek national funds through the Public Investments Program (PIP) of General Secretariat for Research & Technology (GSRT) under the Emblematic Action The Olive Road [2018SE01300000]

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This study compares and evaluates the quality and authenticity of Greek extra virgin olive oil (EVOO) using various analytical approaches and machine learning methods. It is the first study to apply different techniques from standard analysis, spectrometry, and optical spectroscopy to the same EVOO samples, providing important insights into the chemical profile of EVOO.
Extra virgin olive oil (EVOO) is a key component of the Mediterranean diet, with several health benefits derived from its consumption. Moreover, due to its eminent market position, EVOO has been thoroughly studied over the last several years, aiming at its authentication, but also to reveal the chemical profile inherent to its beneficial properties. In the present work, a comparative study was conducted to assess Greek EVOOs' quality and authentication utilizing different analytical approaches, both targeted and untargeted. 173 monovarietal EVOOs from three emblematic Greek cultivars (Koroneiki, Kolovi and Adramytiani), obtained during the harvesting years of 2018-2020, were analyzed and quantified as per their fatty acids methyl esters (FAMEs) composition via the official method (EEC) No 2568/91, as well as their bioactive content through liquid chromatography coupled to high resolution mass spectrometry (LC-HRMS) methodology. In addition to FAMEs analysis, EVOO samples were also analyzed via HRMS-untargeted metabolomics and optical spectroscopy techniques (visible absorption, fluorescence and Raman). The data retrieved from all applied techniques were analyzed with Machine Learning methods for the authentication of the EVOOs' variety. The models' predictive performance was calculated through test samples, while for further evaluation 30 commercially available EVOO samples were also examined in terms of variety. To the best of our knowledge, this is the first study where different techniques from the fields of standard analysis, spectrometry and optical spectroscopy are applied to the same EVOO samples, providing strong insight into EVOOs chemical profile and a comparative evaluation through the different platforms.

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