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Geographical origin classification of olive oils by PTR-MS

  • Nooshin Araghipour
  • , Jennifer Colineau
  • , Alex Koot
  • , Wies Akkermans
  • , Jose Manuel Moreno Rojas
  • , Jonathan Beauchamp
  • , Armin Wisthaler
  • , Tilmann D. Märk
  • , Gerard Downey
  • , Claude Guillou
  • , Luisa Mannina
  • , Saskia van Ruth

Research output: Contribution to journalArticlepeer-review

Abstract

The volatile compositions of 192 olive oil samples from five different European countries were investigated by PTR-MS sample headspace analysis. The mass spectra of all samples showed many masses with high abundances, indicating the complex VOC composition of olive oil. Three different PLS-DA models were fitted to the data to classify samples into 'country', 'region' and 'district' of origin, respectively. Correct classification rates were assessed by cross-validation. The first fitted model produced an 86% success rate in classifying the samples into their country of origin. The second model, which was fitted to the Italian oils only, also demonstrated satisfactory results, with 74% of samples successfully classified into region of origin. The third model, classifying the Italian samples into district of origin, yielded a success rate of only 52%. This lower success rate might be due to either the small class set, or to genuine similarities between olive oil VOC compositions on this tight scale.

Original languageEnglish
Pages (from-to)374-383
Number of pages10
JournalFood Chemistry
Volume108
Issue number1
DOIs
Publication statusPublished - 1 May 2008
Externally publishedYes

Keywords

  • Chemometrics
  • Olive oil
  • Origin classification
  • PLS-DA
  • PTR-MS

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