lipidomics (2)

In this study (open access) the authors used the fingerprint profile of fats and their metabolites to classify the cultivar (as either Tonda di Giffoni, TG, or as non-TG) and origin (either Chile CHL, Spain ESP, Italy ITA or Georgia GEO) of hazelnuts.  They propose a systematic workflow (see graphical abstract, below) first examining the Triacylglycerol profiles (TAG) as a screen and then testing the Unsapnifable Fraction (UF), if needed, for further classification.

12951801060?profile=RESIZE_584xThe reference database was constructed from 309 traceable hazelnut samples collected from 2019 to 2022 directly from producers. Analyses was by gas chromatography–mass spectrometry.

PLS-DA classification models were developed to discriminate hazelnuts by cultivar and origin. The authors report that external validation results demonstrated the suitability of the UF fingerprint as a hazelnut authentication tool.  Both tested models showing a high efficiency (>94 %). The correct classification rate of the TAG fingerprinting method was lower (>80 %), but due to its faster analysis time, it is recommended as a complementary screening tool to UF fingerprinting.

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10829622067?profile=RESIZE_400x

This mini-review examines the use of liquid chromatography mass spectrometry (LC-MS)-based metabolomic and lipidomic methodology to determine metabolites and lipids in pork and beef, which combined with chemometric analysis and comparison with lipid and metabolite databases, serve as authenticity markers. Researchers in this field have found combining metabolomic and lipidomic approaches provides a more comprehensive authentication of meat products especially the differentiation between beef and pork. 

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