Classification and authentication of Iranian walnuts according to their geographical origin based on gas chromatographic fatty acid fingerprint analysis using pattern recognition methods
Autor: | Setareh Amanifar, Mahnaz Esteki, Elham Dashtaki, Yvan Vander Heyden, Mina Mohammadlou, Zahra Ahadiyan, Bahman Farajmand, Roghaye Barkhordari |
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Přispěvatelé: | Pharmaceutical and Pharmacological Sciences, Department of Analytical Chemistry, Applied Chemometrics and Molecular Modelling |
Jazyk: | angličtina |
Rok vydání: | 2017 |
Předmět: |
spectroscopy
Multivariate analysis Food industry PCA-LDA Biology 01 natural sciences Cross-validation Analytical Chemistry 0404 agricultural biotechnology Chromatographic fingerprint Iranian walnut Multivariate data analysis chemistry.chemical_classification Chromatography business.industry Process Chemistry and Technology 010401 analytical chemistry Fatty acid Pattern recognition 04 agricultural and veterinary sciences Walnut oil Linear discriminant analysis 040401 food science 0104 chemical sciences Computer Science Applications chemistry classification Principal component analysis Pattern recognition (psychology) Artificial intelligence business Software |
Popis: | Recently, food authenticity has raised worldwide attention in food manufacturing and a growing concern about food qualification, based on a clear regional identity, is noticed. Therefore, the development of suitable methodologies allowing the characterization of different products, based on their geographical origin, is of great importance. In this study, the potential of gas chromatographic fatty acid fingerprints in combination with multivariate data analysis was examined to classify walnuts from different regions in Iran according to their geographical origins. Walnut samples were collected during the harvesting period 2013–2014 from six regions in Iran. Chromatographic fingerprints of the walnut oil were employed to discriminate the walnut origin. Principal component analysis-Linear discriminant analysis (PCA-LDA) results showed that the six regions of geographical origin can be identified based on the fatty acid fingerprints. Almost all samples were correctly classified by the PCA-LDA model using cross validation (99.2%). The average percent correct classification for the prediction set was 98.3%, indicating the satisfactory performance of the model. A high percentage of correct classifications for the training data demonstrates the strong relationship between the fatty acid profile and the origin, while a high percentage for the prediction set shows the ability to indicate the origin of an unknown sample based on its fatty acid chromatographic data. |
Databáze: | OpenAIRE |
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