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Modeling the growth of Listeria monocytogenes on the surface of smear- or mold-ripened cheese.

机译:模拟单核细胞增生李斯特氏菌在涂抹或霉菌化的奶酪表面的生长。

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摘要

Surface-ripened cheeses are matured by means of manual or mechanical technologies posing a risk of cross-contamination, if any cheeses are contaminated with Listeria monocytogenes. In predictive microbiology, primary models are used to describe microbial responses, such as growth rate over time and secondary models explain how those responses change with environmental factors. In this way, primary models were used to assess the growth rate of L. monocytogenes during ripening of the cheeses and the secondary models to test how much the growth rate was affected by either the pH and/or the water activity (aw) of the cheeses. The two models combined can be used to predict outcomes. The purpose of these experiments was to test three primary (the modified Gompertz equation, the Baranyi and Roberts model, and the Logistic model) and three secondary (the Cardinal model, the Ratowski model, and the Presser model) mathematical models in order to define which combination of models would best predict the growth of L. monocytogenes on the surface of artificially contaminated surface-ripened cheeses. Growth on the surface of the cheese was assessed and modeled. The primary models were firstly fitted to the data and the effects of pH and aw on the growth rate (mumax) were incorporated and assessed one by one with the secondary models. The Logistic primary model by itself did not show a better fit of the data among the other primary models tested, but the inclusion of the Cardinal secondary model improved the final fit. The aw was not related to the growth of Listeria. This study suggests that surface-ripened cheese should be separately regulated within EU microbiological food legislation and results expressed as counts per surface area rather than per gram.
机译:如果任何奶酪被单核细胞增生性李斯特菌污染,则通过人工或机械技术使表面成熟的奶酪成熟,这会产生交叉污染的风险。在预测微生物学中,主要模型用于描述微生物响应,例如随时间的增长率,而次要模型解释这些响应如何随环境因素而变化。通过这种方式,主要模型用于评估奶酪成熟过程中单核细胞增生李斯特菌的生长速率,而次要模型则用于测试奶酪的pH和/或水分活度(aw)对生长速率的影响程度。奶酪。结合使用这两个模型可以预测结果。这些实验的目的是测试三个主要的数学模型(改进的Gompertz方程,Baranyi和Roberts模型以及Logistic模型)和三个辅助的数学模型(Cardinal模型,Ratowski模型和Presser模型)哪种模型组合最能预测人工污染的表面成熟干酪表面单核细胞增生李斯特菌的生长。评估和模拟了奶酪表面的生长。首先将主要模型与数据拟合,然后合并pH和aw对生长速率(mumax)的影响,并与次要模型进行一次评估。 Logistic主模型本身并未显示其他测试的主模型中数据的更好拟合度,但是Cardinal次要模型的引入改善了最终拟合度。 aw与李斯特菌的生长无关。这项研究表明,应在欧盟微生物食品法规中对经过表面处理的奶酪进行单独监管,其结果应以每表面积而不是每克的数量表示。

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