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A Mathematical Model for Pathogen Cross-Contamination Dynamics during the Postharvest Processing of Leafy Greens

机译:绿叶蔬菜采后加工过程中病原体交叉污染动力学的数学模型

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We developed a probabilistic mathematical model for the postharvest processing of leafy greens focusing on Escherichia coli O157:H7 contamination of fresh-cut romaine lettuce as the case study. Our model can (i) support the investigation of cross-contamination scenarios, and (ii) evaluate and compare different risk mitigation options. We used an agent-based modeling framework to predict the pathogen prevalence and levels in bags of fresh-cut lettuce and quantify spread of E. coli O157:H7 from contaminated lettuce to surface areas of processing equipment. Using an unbalanced factorial design, we were able to propagate combinations of random values assigned to model inputs through different processing steps and ranked statistically significant inputs with respect to their impacts on selected model outputs. Results indicated that whether contamination originated on incoming lettuce heads or on the surface areas of processing equipment, pathogen prevalence among bags of fresh-cut lettuce and batches was most significantly impacted by the level of free chlorine in the flume tank and frequency of replacing the wash water inside the tank. Pathogen levels in bags of fresh-cut lettuce were most significantly influenced by the initial levels of contamination on incoming lettuce heads or surface areas of processing equipment. The influence of surface contamination on pathogen prevalence or levels in fresh-cut bags depended on the location of that surface relative to the flume tank. This study demonstrates that developing a flexible yet mathematically rigorous modeling tool, a "virtual laboratory," can provide valuable insights into the effectiveness of individual and combined risk mitigation options.
机译:我们开发了一个概率数学模型,用于对绿叶蔬菜进行收获后加工的案例研究,重点是鲜切长叶莴苣的大肠杆菌O157:H7污染。我们的模型可以(i)支持对交叉污染场景的调查,并且(ii)评估和比较不同的风险缓解方案。我们使用了基于代理的建模框架来预测鲜切生菜袋中的病原菌患病率和水平,并量化大肠杆菌O157:H7从受污染的生菜到加工设备表面积的扩散。使用不平衡阶乘设计,我们能够通过不同的处理步骤传播分配给模型输入的随机值组合,并根据其对所选模型输出的影响对统计上显着的输入进行排名。结果表明,无论污染源是生菜头还是加工设备的表面,鲜切生菜袋和批次中的病原菌流行率受水槽水箱中的游离氯水平和更换洗液的频率的影响最大。水箱内的水。鲜切生菜袋中的病原水平受生菜头或加工设备表面积的初始污染水平影响最大。表面污染对鲜切袋中病原菌流行或水平的影响取决于表面相对于水槽的位置。这项研究表明,开发一种灵活而又在数学上严格的建模工具“虚拟实验室”可以为单个和组合的风险缓解方案的有效性提供有价值的见解。

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