Literature DB >> 31171206

Detection of cold chain breaks using partial least squares-class modelling based on biogenic amine profiles in tuna.

Celia Reguera1, Silvia Sanllorente2, Ana Herrero3, Luis A Sarabia4, M Cruz Ortiz5.   

Abstract

The maintenance of the cold chain is essential to ensure foodstuff conformity and safety. However, gaps in the cold chain may be expected so designing analytical methods capable to detect cold chain breaks is a worthwhile issue. In this paper, the possibility of using the amount of nine biogenic amines (BAs) determined in Thunnus albacares by HPLC-FLD for detecting cold chain breaks is approached. Tuna is stored at 3 different temperature conditions for 8 storage periods. The evolution of the content of BAs is analyzed through parallel factor analysis (PARAFAC), in such a way that storage temperature, BAs and storage time profiles are estimated. PARAFAC has made it possible to observe two spoilage routes with different relative evolution of BAs. In addition, it has enabled to estimate the storage time, by considering the three storage temperatures, with errors of 0.5 and 1.0 days in fitting and in prediction, respectively. Furthermore, a class-modelling technique based on partial least squares is sequentially applied to decide, from the amount of BAs, if there has been a cold chain break. Firstly, samples stored at 25 °C are statistically discriminated from those kept at 4 °C and -18 °C; next, frozen samples are distinguished from those refrigerated. In the first case, the probabilities of false non-compliance and false compliance are almost zero, whereas in the second one, both probabilities are 10%. Globally, the results of this work have pointed out the feasibility of using the amount of BAs together with PLS-CM to decide if the cold chain has been maintained or not.
Copyright © 2019 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Biogenic amines; Cold chain; HPLC-FLD; Parallel factor analysis; Partial least squares - class modelling; Spoilage of tuna

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Year:  2019        PMID: 31171206     DOI: 10.1016/j.talanta.2019.04.072

Source DB:  PubMed          Journal:  Talanta        ISSN: 0039-9140            Impact factor:   6.057


  1 in total

1.  Handling Variables, via Inversion of Partial Least Squares Models for Class-Modelling, to Bring Defective Items to Non-Defective Ones.

Authors:  Santiago Ruiz; Luis Antonio Sarabia; María Sagrario Sánchez; María Cruz Ortiz
Journal:  Front Chem       Date:  2021-07-13       Impact factor: 5.221

  1 in total

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