Augmented smelling to reveal Brazilian Extra Virgin Olive Oil aroma blueprint: accurate quantification of key-aroma compounds by comprehensive two-dimensional gas chromatography and parallel detection by MS and FID
Abstract
Data di Pubblicazione:
2023
Abstract:
Extra virgin olive oil (EVOO) is a valuable food commodity that is widely consumed worldwide.
The aroma of extra virgin olive oil is affected by various factors such as the type of olive tree, the
conditions in which the trees are grown, the stage at which the olives are harvested, and the method
of oil extraction [1]. Despite being the third-largest importer of olive oil in the world, Brazil's
production of olives and oil is relatively new and small compared to its domestic market's size.
To assess characteristic patterns of odorants for different cultivars (Arbequina and Koroneiki),
different harvest years (2021 and 2022), and production regions (Rio Grande do Sul and Serra da
Mantiqueira), comprehensive two-dimensional gas chromatography coupled with parallel detectors
(MS and FID) was chosen. In fact, GC×GC-MS/FID leads to a high-performance analysis strategy
capable of fully exploit the information encrypted on the volatile fraction including also those key-
analytes responsible of the EVOOs aroma blueprint. Moreover, the complementary characteristics
of MS and FID open the possibility of performing multi-target quantitative profiling by predicted
relative response factors with great accuracy [2].
Untargeted/targeted fingerprinting workflow was carried out combining template matching
strategies on the 2D-patterns of volatiles. Quantification of target volatiles was achieved via
Multiple Headspace SPME, external standard calibration and FID predicted relative response
factors (PRRF).
The combination of HS-SPME with GC×GC-MS/FID and PRRF resulted to be a great tool in the
quality assessment of EVOO samples. By effective exploration of the information encrypted in
EVOOs volatilome, the impact of functional variables is reliably correlated to diagnostic patterns
with great classification and identitation attitudes [3]. By the accurate quantification of key-
odorants, an Artificial Intelligence smelling machine is realized, an Augmented smelling with
unique comparative possibilities for EVOOs aroma qualities.
Tipologia CRIS:
04D-Meeting abstract in volume
Elenco autori:
Andrea Caratti, Nathalia Brilhante, Simone Squara, Carlo Bicchi, Humberto Bizzo, Chiara Cordero
Link alla scheda completa:
Link al Full Text:
Titolo del libro:
XIII Congresso Nazionale di Chimica degli Alimenti Libro degli abstracts