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烹饪和生鸡肉样品中沙门氏菌生长行为的预测建模:实时 PCR 定量方法和不同处理情况下的模型评估。

Predictive modeling of Salmonella spp. growth behavior in cooked and raw chicken samples: Real-time PCR quantification approach and model assessment in different handling scenarios.

机构信息

Division of Food Quality and Safety Research, Institute of Food Research, National Agriculture and Food Research Organization, Tsukuba, Japan.

出版信息

J Food Sci. 2024 Apr;89(4):2410-2422. doi: 10.1111/1750-3841.17020. Epub 2024 Mar 11.

Abstract

The increasing prevalence of Salmonella contamination in poultry meat emphasizes the importance of suitable predictive microbiological models for estimating Salmonella growth behavior. This study was conducted to evaluate the potential of chicken juice as a model system to predict the behavior of Salmonella spp. in cooked and raw chicken products and to assess its ability to predict cross-contamination scenarios. A cocktail of four Salmonella serovars was inoculated into chicken juice, sliced chicken, ground chicken, and chicken patties, with subsequent incubation at 10, 15, 20, and 25°C for 39 h. The number of Salmonella spp. in each sample was determined using real-time polymerase chain reaction. Growth curves were fitted into the primary Baranyi and Roberts model to obtain growth parameters. Interactions between temperature and growth parameters were described using the secondary Ratkowsky's square root model. The predictive results generated by the chicken juice model were compared with those obtained from other chicken meat models. Furthermore, the parameters of the chicken juice model were used to predict Salmonella spp. numbers in six worst-case cross-contamination scenarios. Performance of the chicken juice model was evaluated using the acceptable prediction zone from -1.0 (fail-safe) to 0.5 (fail-dangerous) log. Chicken juice model accurately predicted all observed data points within the acceptable range, with the distribution of residuals being wider near the fail-safe zone (75%) than near the fail-dangerous zone (25%). This study offers valuable insights into a novel approach for modeling Salmonella growth in chicken meat products, with implications for food safety through the development of strategic interventions. PRACTICAL APPLICATION: The findings of this study have important implications in the food industry, as chicken juice could be a useful tool for predicting Salmonella behavior in different chicken products and thus reducing the risk of foodborne illnesses through the development of strategic interventions. However, it is important to recognize that some modifications to the chicken juice model will be necessary to accurately mimic all real-life conditions, as multiple factors particularly those related to food processing can vary between different products.

摘要

鸡肉中沙门氏菌污染的日益普遍强调了合适的预测微生物模型对于估计沙门氏菌生长行为的重要性。本研究旨在评估鸡汁作为模型系统预测沙门氏菌在熟鸡肉和生鸡肉产品中行为的潜力,并评估其预测交叉污染情况的能力。将四种沙门氏菌血清型的混合物接种到鸡汁、切片鸡肉、绞碎鸡肉和鸡肉饼中,然后在 10、15、20 和 25°C 下孵育 39 小时。使用实时聚合酶链反应确定每个样品中的沙门氏菌数量。使用主巴尼和罗伯茨模型拟合生长曲线以获得生长参数。使用二次拉特科夫斯基平方根模型描述温度和生长参数之间的相互作用。使用鸡汁模型生成的预测结果与其他鸡肉模型的预测结果进行比较。此外,还使用鸡汁模型的参数预测了六个最坏情况下的交叉污染场景中的沙门氏菌数量。通过从 -1.0(安全失败)到 0.5(危险失败)的可接受预测区评估鸡汁模型的性能。鸡汁模型在可接受范围内准确地预测了所有观察到的数据点,残差的分布在安全失败区(75%)附近比危险失败区(25%)附近更宽。本研究为鸡肉产品中沙门氏菌生长建模提供了一种新方法,通过开发战略干预措施,为食品安全提供了有价值的见解。实际应用:本研究的结果在食品工业中有重要意义,因为鸡汁可以成为预测不同鸡肉产品中沙门氏菌行为的有用工具,从而通过开发战略干预措施降低食源性疾病的风险。然而,需要认识到,需要对鸡汁模型进行一些修改,以准确模拟所有实际情况,因为许多因素,特别是与食品加工相关的因素,在不同产品之间可能会有所不同。

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