Utilize este identificador para referenciar este registo: https://hdl.handle.net/1822/46492

TítuloPerception of olive oils sensory defects using a potentiometric taste device
Autor(es)Veloso, Ana C. A.
Silva, Lucas M.
Rodrigues, Nuno
Rebello, Ligia P. G.
Dias, Luís G.
Pereira, José A.
Peres, António M.
Palavras-chaveOlive Oil
Sensory Analysis
Sensory Defects
Potentiometric Electronic Tongue
Chemometrics
Potentionietric electronic tongue
Data2018
EditoraElsevier
RevistaTalanta
CitaçãoVeloso, Ana C. A.; Silva, Lucas M.; Rodrigues, Nuno; Rebello, Ligia P. G.; Dias, Luís G.; Pereira, José A.; Peres, António M., Perception of olive oils sensory defects using a potentiometric taste device. Talanta, 176, 610-618, 2018
Resumo(s)The capability of perceiving olive oils sensory defects and intensities plays a key role on olive oils quality grade classification since olive oils can only be classified as extra-virgin if no defect can be perceived by a human trained sensory panel. Otherwise, olive oils may be classified as virgin or lampante depending on the median intensity of the defect predominantly perceived and on the physicochemical levels. However, sensory analysis is time-consuming and requires an official sensory panel, which can only evaluate a low number of samples per day. In this work, the potential use of an electronic tongue as a taste sensor device to identify the defect predominantly perceived in olive oils was evaluated. The potentiometric profiles recorded showed that intra- and inter-day signal drifts could be neglected (i.e., relative standard deviations lower than 25%), being not statistically significant the effect of the analysis day on the overall recorded E-tongue sensor fingerprints (P-value=0.5715, for multivariate analysis of variance using Pillai's trace test), which significantly differ according to the olive oils sensory defect (P-value=0.0084, for multivariate analysis of variance using Pillai's trace test). Thus, a linear discriminant model based on 19 potentiometric signal sensors, selected by the simulated annealing algorithm, could be established to correctly predict the olive oil main sensory defect (fusty, rancid, wet-wood or winey-vinegary) with average sensitivity of 75±3% and specificity of 73±4% (repeated K-fold cross-validation variant: 4 folds×10 repeats). Similarly, a linear discriminant model, based on 24 selected sensors, correctly classified 92±3% of the olive oils as virgin or lampante, being an average specificity of 93±3% achieved. The overall satisfactory predictive performances strengthen the feasibility of the developed taste sensor device as a complementary methodology for olive oils defects analysis and subsequent quality grade classification. Furthermore, the capability of identifying the type of sensory defect of an olive oil may allow establishing helpful insights regarding bad practices of olives or olive oils production, harvesting, transport and storage.
TipoArtigo
URIhttps://hdl.handle.net/1822/46492
DOI10.1016/j.talanta.2017.08.066
ISSN0039-9140
Versão da editorahttp://www.journals.elsevier.com/talanta
Arbitragem científicayes
AcessoAcesso aberto
Aparece nas coleções:CEB - Publicações em Revistas/Séries Internacionais / Publications in International Journals/Series

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