Data di Pubblicazione:
2014
Abstract:
Fourier-transform-near infrared (FT-NIR) spectroscopy has been used to develop quantitative and classification models for the prediction of deoxynivalenol (DON) levels in durum wheat samples. Partial least-squares (PLS) regression analysis was used to determine DON in wheat samples in the range of <50-16,000 g/kg DON. The model displayed a large root mean square error of prediction value (1,977 g/kg) as compared to the EU maximum limit for DON in unprocessed durum wheat (i.e., 1,750 g/kg), thus making the PLS approach unsuitable for quantitative prediction of DON in durum wheat. Linear discriminant analysis (LDA) was successfully used to differentiate wheat samples based on their DON content. A first approach used LDA to group wheat samples into three classes: A (DON <= 1,000 g/kg), B (1,000 < DON <= 2,500 g/kg), and C (DON > 2,500 g/kg) (LDA I). A second approach was used to discriminate highly contaminated wheat samples based on three different cut-off limits, namely 1,000 (LDA II), 1,200 (LDA III) and 1,400 g/kg DON (LDA IV). The overall classification and false compliant rates for the three models were 75%-90% and 3%-7%, respectively, with model LDA IV using a cut-off of 1,400 g/kg fulfilling the requirement of the European official guidelines for screening methods. These findings confirmed the suitability of FT-NIR to screen a large number of wheat samples for DON contamination and to verify the compliance with EU regulation.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
deoxynivalenol; FT-NIR; rapid method; wheat; LDA; PLS
Elenco autori:
DE GIROLAMO, Annalisa; Visconti, Angelo; Pascale, Michelangelo; Cervellieri, Salvatore
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