Department of Population Medicine and Diagnostic Sciences, Cornell University, Ithaca, New York, United States of America.
Department of Food Science, College of Agriculture and Life Sciences, Cornell University, Ithaca, New York, United States of America.
PLoS One. 2022 Mar 23;17(3):e0265251. doi: 10.1371/journal.pone.0265251. eCollection 2022.
The complex environment of a produce packinghouse can facilitate the spread of pathogens such as Listeria monocytogenes in unexpected ways. This can lead to finished product contamination and potential foodborne disease cases. There is a need for simulation-based decision support tools that can test different corrective actions and are able to account for a facility's interior cross-contamination dynamics. Thus, we developed agent-based models of Listeria contamination dynamics for two produce packinghouse facilities; agents in the models represented equipment surfaces and employees, and models were parameterized using observations, values from published literature and expert opinion. Once validated with historical data from Listeria environmental sampling, each model's baseline conditions were investigated and used to determine the effectiveness of corrective actions in reducing prevalence of agents contaminated with Listeria and concentration of Listeria on contaminated agents. Evaluated corrective actions included reducing incoming Listeria, modifying cleaning and sanitation strategies, and reducing transmission pathways, and combinations thereof. Analysis of Listeria contamination predictions revealed differences between the facilities despite their functional similarities, highlighting that one-size-fits-all approaches may not always be the most effective means for selection of corrective actions in fresh produce packinghouses. Corrective actions targeting Listeria introduced in the facility on raw materials, implementing risk-based cleaning and sanitation, and modifying equipment connectivity were shown to be most effective in reducing Listeria contamination prevalence. Overall, our results suggest that a well-designed cleaning and sanitation schedule, coupled with good manufacturing practices can be effective in controlling contamination, even if incoming Listeria spp. on raw materials cannot be reduced. The presence of water within specific areas was also shown to influence corrective action performance. Our findings support that agent-based models can serve as effective decision support tools in identifying Listeria-specific vulnerabilities within individual packinghouses and hence may help reduce risks of food contamination and potential human exposure.
农产品包装厂复杂的环境会以意想不到的方式促进病原体(如李斯特菌)的传播。这可能导致成品污染和潜在的食源性疾病病例。我们需要基于模拟的决策支持工具来测试不同的纠正措施,并能够考虑到设施内部的交叉污染动态。因此,我们为两个农产品包装厂开发了基于代理的李斯特菌污染动态模型;模型中的代理代表设备表面和员工,模型使用观察结果、已发表文献中的值和专家意见进行参数化。在用李斯特菌环境抽样的历史数据验证后,研究了每个模型的基准条件,并用于确定纠正措施在降低污染有李斯特菌的代理的流行率和污染代理上的李斯特菌浓度方面的有效性。评估的纠正措施包括减少传入的李斯特菌、修改清洁和消毒策略以及减少传播途径,以及它们的组合。尽管设施具有相似的功能,但对李斯特菌污染预测的分析揭示了它们之间的差异,这表明一刀切的方法可能并不总是在新鲜农产品包装厂选择纠正措施方面最有效的方法。针对原材料中引入的李斯特菌、实施基于风险的清洁和消毒以及修改设备连接性的纠正措施被证明在降低李斯特菌污染流行率方面最有效。总的来说,我们的结果表明,精心设计的清洁和消毒计划,加上良好的制造规范,可以有效地控制污染,即使不能减少原材料中的李斯特菌属。还表明,特定区域内的水的存在也会影响纠正措施的性能。我们的研究结果支持基于代理的模型可以作为有效的决策支持工具,用于识别单个包装厂内的李斯特菌特定脆弱性,从而有助于降低食品污染和潜在人类暴露的风险。