利用食品供应链的主动地理空间建模加速食源性疾病暴发的调查

Daniel Doerr, K. Hu, Sondra R. Renly, S. Edlund, Matthew A. Davis, J. Kaufman, J. Lessler, M. Filter, A. Käsbohrer, B. Appel
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引用次数: 10

摘要

在过去的几十年里,贸易全球化极大地改变了食品供应链的拓扑结构。尽管食源性疾病一直在持续下降,但污染事件的危险影响更大[1-3]。可能的污染物包括致病菌、病毒、寄生虫、毒素或化学物质。污染可能是偶然发生的,例如由于处理、制备或储存不当,或者是故意的,如三聚氰胺牛奶危机所证明的那样。为了确定食源性疾病的来源,通常需要重建跨越不同分销渠道或产品组的食品分销网络。追溯污染源所需的时间从几天到几周不等,这对疾病爆发的经济和公共卫生影响很大。在本文中,我们描述了一种基于模型的方法,旨在加快识别食源性疾病爆发源。此外,我们利用了仅限于给定食品类型的批发-零售商食品分销网络的地理空间信息,并应用了从零售商到消费者的食品分销重力模型。我们提出了一个可能性框架,允许根据地理编码的病例报告确定批发来源分发受污染食品的可能性。所开发的方法独立于潜在的食物分配内核,因此特别适用于食物获取的经验分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accelerating investigation of food-borne disease outbreaks using pro-active geospatial modeling of food supply chains
Over the last decades the globalization of trade has significantly altered the topology of food supply chains. Even though food-borne illness has been consistently on the decline, the hazardous impact of contamination events is larger [1-3]. Possible contaminants include pathogenic bacteria, viruses, parasites, toxins or chemicals. Contamination can occur accidentally, e.g. due to improper handling, preparation, or storage, or intentionally as the melamine milk crisis proved. To identify the source of a food-borne disease it is often necessary to reconstruct the food distribution networks spanning different distribution channels or product groups. The time needed to trace back the contamination source ranges from days to weeks and significantly influences the economic and public health impact of a disease outbreak. In this paper we describe a model-based approach designed to speed up the identification of a food-borne disease outbreak source. Further, we exploit the geospatial information of wholesaler-retailer food distribution networks limited to a given food type and apply a gravity model for food distribution from retailer to consumer. We present a likelihood framework that allows determining the likelihood of wholesale source(s) distributing contaminated food based on geo-coded case reports. The developed method is independent of the underlying food distribution kernel and thus particularly applicable to empirical distributions of food acquisition.
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