Development of a predictive model for the shelf-life of Atlantic mackerel (Scomber scombrus)

Submitted: 6 August 2021
Accepted: 12 November 2021
Published: 23 February 2022
Abstract Views: 573
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Despite its commercial value, the shelflife of the Atlantic mackerel (Scomber scombrus) during refrigerated storage was poorly investigated. In this regard, the Quality Index Method (QIM) was proposed as a suitable scoring system for freshness and quality sensorial estimation of fishery products. This study aims to develop a deterministic mathematical model based on dynamic temperatures conditions and a successive statistical analysis of the results obtained. This model will be exploited to predict the shelf-life of the Atlantic mackerel based on specific storage temperatures. A total of 60 fresh fishes were subdivided into two groups and respectively stored in ice for 12 days at a constant temperature of 1 0.5 C (Group A) and a fluctuating temperature ranging between 1 and 7 C (Group B). Microbiological analysis and sensory evaluation through the QIM were performed on each fish at regular time intervals. A critical value of 6 Log cfu/g of spoilage bacteria (mainly psychotropic) associated with a significant decay of the sensorial characteristics was exceeded after 9 days of storage for Group A and 3 days for Group B. A reliable prediction of fish freshness was obtained by modelling the QIM as a function of the spoilage bacteria behaviour. A coefficient β of correlation was determined to convert the spoilage bacteria load into a Quality Index score. The adoption of mathematical predictive models to assess microbial behaviour under different environmental conditions is an interesting tool for food industries to maximize production and reduce waste.

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1.
Giarratana F, Panebianco F, Nalbone L, Ziino G, Valenti D, Giuffrida A. Development of a predictive model for the shelf-life of Atlantic mackerel (<em>Scomber scombrus</em>). Ital J Food Safety [Internet]. 2022 Feb. 23 [cited 2024 Dec. 26];11(1). Available from: https://www.pagepressjournals.org/ijfs/article/view/10019