Laboratory Apther - Applied Thermophysics, Department of Food and Chemical Engineering, Santa Catarina State University - UDESC, 89870-000 Pinhalzinho, SC, Brazil.
Federal University of Paraná, Food Engineering, UFPR Campus Jandaia do Sul, 86900-000 Jandaia do Sul, PR, Brazil.
Int J Food Microbiol. 2021 Apr 16;344:109110. doi: 10.1016/j.ijfoodmicro.2021.109110. Epub 2021 Feb 23.
Salmonella genus has foodborne pathogen species commonly involved in many outbreaks related to the consumption of chicken meat. Many studies have aimed to model bacterial inactivation as a function of the temperature. Due to the large heterogeneity of the results, a unified description of Salmonella spp. inactivation behavior is hard to establish. In the current study, by evaluating the root mean square errors, mean absolute deviation, and Akaike and Bayesian information criteria, the double Weibull model was considered the most accurate primary model to fit 61 datasets of Salmonella inactivation in chicken meat. Results can be interpreted as if the bacterial population is divided into two subpopulations consisting of one more resistant (2.3% of the total population) and one more sensitive to thermal stress (97.7% of the total population). The thermal sensitivity of the bacteria depends on the fat content of the chicken meat. From an adapted version of the Bigelow secondary model including both temperature and fat content, 90% of the Salmonella population can be inactivated after heating at 60 °C of chicken breast, thigh muscles, wings, and skin during approximately 2.5, 5.0, 9.5, and 57.4 min, respectively. The resulting model was applied to four different non-isothermal temperature profiles regarding Salmonella growth in chicken meat. Model performance for the non-isothermal profiles was evaluated by the acceptable prediction zone concept. Results showed that >80% of the predictions fell in the acceptable prediction zone when the temperature changes smoothly at temperature rates lower than 20 °C/min. Results obtained can be used in risk assessment models regarding contamination with Salmonella spp. in chicken parts with different fat contents.
沙门氏菌属有食源性病原体种类,通常涉及许多与鸡肉消费有关的暴发。许多研究旨在将细菌失活建模为温度的函数。由于结果的高度异质性,很难建立沙门氏菌属失活行为的统一描述。在当前的研究中,通过评估均方根误差、平均绝对偏差以及 Akaike 和贝叶斯信息标准,双 Weibull 模型被认为是拟合沙门氏菌在鸡肉中失活的 61 个数据集的最准确的基本模型。结果可以解释为如果细菌群体分为两个亚群,一个更具抗性(占总群体的 2.3%),另一个对热应激更敏感(占总群体的 97.7%)。细菌的热敏感性取决于鸡肉的脂肪含量。从包括温度和脂肪含量的 Bigelow 二次模型的改编版本中,可以在 60°C 下加热鸡胸肉、大腿肌肉、翅膀和皮肤,分别约 2.5、5.0、9.5 和 57.4 分钟后灭活 90%的沙门氏菌种群。所得模型应用于四种不同的非等温温度曲线,以研究沙门氏菌在鸡肉中的生长情况。通过可接受预测区的概念评估非等温曲线模型的性能。结果表明,当温度变化率低于 20°C/min 时,温度曲线平滑变化时,超过 80%的预测值落在可接受的预测区内。获得的结果可用于具有不同脂肪含量的鸡肉部位污染的沙门氏菌属风险评估模型。