| Literature DB >> 33011466 |
Federico Stilo1, Erica Liberto2, Nicola Spigolon3, Giuseppe Genova3, Ginevra Rosso3, Mauro Fontana3, Stephen E Reichenbach4, Carlo Bicchi5, Chiara Cordero6.
Abstract
The volatile fraction of hazelnuts encrypts information about: cultivar/geographical origin, post-harvest treatments, oxidative stability and sensory quality. However, sensory features could be buried under other dominant chemical signatures posing challenges to an effective classification based on pleasant/unpleasant notes. Here a novel workflow that combines Untargeted and Targeted (UT) fingerprinting on comprehensive two-dimensional gas-chromatographic patterns is developed to discriminate spoiled hazelnuts from those of acceptable quality. By flash-profiling, six hazelnut classes are defined: Mould, Mould-rancid-solvent, Rancid, Rancid-stale, Rancid-solvent, and Uncoded KO. Chromatographic fingerprinting on composite 2D chromatograms from samples belonging to the same class (i.e., composite class-images) enabled effective selection of chemical markers: (a) octanoic acid that guides the sensory classification being positively correlated to mould; (b) ƴ-nonalactone, ƴ-hexalactone, acetone, and 1-nonanol that are decisive to classify OK and rancid samples; (c) heptanoic and hexanoic acids and ƴ-octalactone present in high relative abundance in rancid-solvent and rancid-stale samples.Entities:
Keywords: Combined Untargeted and Targeted (UT) fingerprinting; Comprehensive two-dimensional gas chromatography; Corylus avellana L.; Sensory defects; Supervised and unsupervised chemometrics; Visual features fingerprinting
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Year: 2020 PMID: 33011466 DOI: 10.1016/j.foodchem.2020.128135
Source DB: PubMed Journal: Food Chem ISSN: 0308-8146 Impact factor: 7.514