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首页> 外文期刊>Applied and Environmental Microbiology >Estimation of Microbial Contamination of Food from Prevalence and Concentration Data: Application to Listeria monocytogenes in Fresh Vegetables
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Estimation of Microbial Contamination of Food from Prevalence and Concentration Data: Application to Listeria monocytogenes in Fresh Vegetables

机译:从患病率和浓度数据估算食品的微生物污染:在新鲜蔬菜中单核细胞增生李斯特菌的应用

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摘要

A normal distribution and a mixture model of two normal distributions in a Bayesian approach using prevalence and concentration data were used to establish the distribution of contamination of the food-borne pathogenic bacteria Listeria monocytogenes in unprocessed and minimally processed fresh vegetables. A total of 165 prevalence studies, including 15 studies with concentration data, were taken from the scientific literature and from technical reports and used for statistical analysis. The predicted mean of the normal distribution of the logarithms of viable L. monocytogenes per gram of fresh vegetables was ?2.63 log viable L. monocytogenes organisms/g, and its standard deviation was 1.48 log viable L. monocytogenes organisms/g. These values were determined by considering one contaminated sample in prevalence studies in which samples are in fact negative. This deliberate overestimation is necessary to complete calculations. With the mixture model, the predicted mean of the distribution of the logarithm of viable L. monocytogenes per gram of fresh vegetables was ?3.38 log viable L. monocytogenes organisms/g and its standard deviation was 1.46 log viable L. monocytogenes organisms/g. The probabilities of fresh unprocessed and minimally processed vegetables being contaminated with concentrations higher than 1, 2, and 3 log viable L. monocytogenes organisms/g were 1.44, 0.63, and 0.17%, respectively. Introducing a sensitivity rate of 80 or 95% in the mixture model had a small effect on the estimation of the contamination. In contrast, introducing a low sensitivity rate (40%) resulted in marked differences, especially for high percentiles. There was a significantly lower estimation of contamination in the papers and reports of 2000 to 2005 than in those of 1988 to 1999 and a lower estimation of contamination of leafy salads than that of sprouts and other vegetables. The interest of the mixture model for the estimation of microbial contamination is discussed.
机译:贝叶斯方法使用患病率和浓度数据的正态分布和两种正态分布的混合模型,用于建立未经加工和经最低加工的新鲜蔬菜中食源性致病菌单核细胞增生李斯特菌的污染分布。从科学文献和技术报告中总共进行了165项患病率研究,包括15项浓度数据研究,并用于统计分析。每克新鲜蔬菜中单核细胞增生李斯特菌的对数的正态分布的预期平均数为〜2.63 log单核细胞增生李斯特菌/ g,其标准偏差为1.48 log单核细胞增生李斯特菌/ g。这些值是通过在患病率研究中考虑一个污染样本而确定的,这些样本中的样本实际上是阴性的。这种有意的高估是完成计算所必需的。使用混合模型,每克新鲜蔬菜中单核细胞增生李斯特菌对数分布的预测平均值为?3.38对数单核增生李斯特菌生物/克,其标准偏差为1.46对数单核增生李斯特菌生物/克。新鲜未经加工和经过最低加工的蔬菜被污染的概率分别高于1.,2和3个对数活单核细胞增生李斯特菌/ g,分别为1.44、0.63和0.17%。在混合模型中引入80%或95%的敏感度对污染的估计影响很小。相反,引入较低的敏感度(40%)会导致明显的差异,尤其是对于高百分位数而言。 2000年至2005年的论文和报告中的污染估计值明显低于1988年至1999年的论文和报告,而绿叶沙拉的污染估计值则比芽菜和其他蔬菜低。讨论了混合模型对微生物污染评估的兴趣。

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