Gowda N A Nanje, Singh Manjari, Lommerse Gijs, Kumar Saurabh, Heintz Eelco, Subbiah Jeyamkondan
Department of Food Science, University of Arkansas Division of Agriculture, Fayetteville, AR 72204, USA.
Food Preservation and Protection, Kerry Taste & Nutrition, 6708 Wageningen, The Netherlands.
Foods. 2024 Dec 6;13(23):3948. doi: 10.3390/foods13233948.
Post-processing contamination of has remained a major concern for the safety of ready-to-eat (RTE) meat products that are not reheated before consumption. Mathematical models are rapid and cost-effective tools to predict pathogen behavior, product shelf life, and safety. The objective of this study was to develop and validate a comprehensive model to predict the growth rate in RTE meat products as a function of temperature, pH, water activity, nitrite, acetic, lactic, and propionic acids. The growth data in RTE food matrices, including RTE beef, pork, and poultry products (731 data sets), were collected from the literature and databases like ComBase. The growth parameters were estimated using the logistic-with-delay primary model. The good-quality growth rate data ( = 596, R > 0.9) were randomly divided into 80% training ( = 480) and 20% testing ( = 116) datasets. The training growth rates were used to develop a secondary gamma model, followed by validation in testing data. The growth model's performance was evaluated by comparing the predicted and observed growth rates. The goodness-of-fit parameter of the secondary model includes R of 0.86 and RMSE of 0.06 (μ) during the development stage. During validation, the gamma model with interaction included an RMSE of 0.074 (μ), bias, and accuracy factor of 0.95 and 1.50, respectively. Overall, about 81.03% of the relative errors (RE) of the model's predictions were within the acceptable simulation zone (RE ± 0.5 log CFU/h). In lag time model validation, predictions were 7% fail-dangerously biased, and the accuracy factor of 2.23 indicated that the lag time prediction is challenging. The model may be used to quantify the growth in naturally contaminated RTE meats. This model may be helpful in formulations, shelf-life assessment, and decision-making for the safety of RTE meat products.
[未提及的病原体]的后处理污染一直是即食(RTE)肉类产品安全的主要关注点,这些产品在食用前不进行重新加热。数学模型是预测病原体行为、产品保质期和安全性的快速且具有成本效益的工具。本研究的目的是开发并验证一个综合模型,以预测即食肉类产品中[未提及的病原体]的生长速率,该生长速率是温度、pH值、水分活度、亚硝酸盐、乙酸、乳酸和丙酸的函数。从文献以及ComBase等数据库中收集了即食食品基质(包括即食牛肉、猪肉和禽肉产品,共731个数据集)中的[未提及的病原体]生长数据。使用带延迟的逻辑斯谛初级模型估计生长参数。将高质量的生长速率数据(n = 596,R > 0.9)随机分为80%的训练数据集(n = 480)和20%的测试数据集(n = 116)。训练生长速率用于开发二级伽马模型,随后在测试数据中进行验证。通过比较预测生长速率和观察到的生长速率来评估生长模型的性能。二级模型的拟合优度参数在开发阶段包括R为0.86和RMSE为0.06(μ)。在验证期间,包含相互作用的伽马模型的RMSE为0.074(μ),偏差以及准确度因子分别为0.95和1.50。总体而言,该模型预测的相对误差(RE)约81.03%在可接受的模拟区域内(RE ± 0.5 log CFU/h)。在延迟时间模型验证中,预测有7%的严重危险偏差,准确度因子为2.23表明延迟时间预测具有挑战性。该模型可用于量化天然污染的即食肉类中[未提及的病原体]的生长。此模型可能有助于即食肉类产品的配方设计、保质期评估和安全决策。