Artificial intelligence decision making tools in food metabolomics: Data fusion unravels synergies within the hazelnut (Corylus avellana L.) metabolome and improves quality prediction
Articolo
Data di Pubblicazione:
2024
Abstract:
This study investigates the metabolome of high-quality hazelnuts (Corylus avellana L.) by applying untargeted and targeted metabolome profiling techniques to predict industrial quality. Utilizing comprehensive two-dimensional gas chromatography and liquid chromatography coupled with high-resolution mass spectrometry, the research characterizes the non-volatile (primary and specialized metabolites) and volatile metabolomes. Data fusion techniques, including low-level (LLDF) and mid-level (MLDF), are applied to enhance classification performance. Principal component analysis (PCA) and partial least squares discriminant analysis (PLS-DA) reveal that geographical origin and postharvest practices significantly impact the specialized metabolome, while storage conditions and duration influence the volatilome. The study demonstrates that MLDF approaches, particularly supervised MLDF, outperform single-fraction analyses in predictive accuracy. Key findings include the identification of metabolites patterns causally correlated to hazelnut’s quality attributes, of them aldehydes, alcohols, terpenes, and phenolic compounds as most informative. The integration of multiple analytical platforms and data fusion methods shows promise in refining quality assessments and optimizing storage and processing conditions for the food industry.
Tipologia CRIS:
03A-Articolo su Rivista
Keywords:
Corylus avellana L., LC-HRMS and GC×GC-TOF-MS data, Data fusion, Volatilome, Metabolome, Food quality prediction
Elenco autori:
Squara, Simone; Caratti, Andrea; Fina, Angelica; Liberto, Erica; Koljančić, Nemanja; Špánik, Ivan; Genova, Giuseppe; Castello, Giuseppe; Bicchi, Carlo; de Villiers, André; Cordero, Chiara
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