...
首页> 外文期刊>PLoS Computational Biology >A Likelihood-Based Approach to Identifying Contaminated Food Products Using Sales Data: Performance and Challenges
【24h】

A Likelihood-Based Approach to Identifying Contaminated Food Products Using Sales Data: Performance and Challenges

机译:基于可能性的销售数据识别受污染食品的方法:性能和挑战

获取原文

摘要

Foodborne disease outbreaks of recent years demonstrate that due to increasingly interconnected supply chains these type of crisis situations have the potential to affect thousands of people, leading to significant healthcare costs, loss of revenue for food companies, and—in the worst cases—death. When a disease outbreak is detected, identifying the contaminated food quickly is vital to minimize suffering and limit economic losses. Here we present a likelihood-based approach that has the potential to accelerate the time needed to identify possibly contaminated food products, which is based on exploitation of food products sales data and the distribution of foodborne illness case reports. Using a real world food sales data set and artificially generated outbreak scenarios, we show that this method performs very well for contamination scenarios originating from a single “guilty” food product. As it is neither always possible nor necessary to identify the single offending product, the method has been extended such that it can be used as a binary classifier. With this extension it is possible to generate a set of potentially “guilty” products that contains the real outbreak source with very high accuracy. Furthermore we explore the patterns of food distributions that lead to “hard-to-identify” foods, the possibility of identifying these food groups a priori, and the extent to which the likelihood-based method can be used to quantify uncertainty. We find that high spatial correlation of sales data between products may be a useful indicator for “hard-to-identify” products.
机译:近年来的食源性疾病暴发表明,由于供应链之间的相互联系日益紧密,这类危机情况有可能影响成千上万的人,从而导致巨额医疗费用,食品公司的收入损失,以及在最坏的情况下死亡。当检测到疾病暴发时,迅速识别受污染的食物对于最大程度地减少痛苦并限制经济损失至关重要。在这里,我们提出一种基于可能性的方法,该方法有可能加快识别可能受污染的食品所需的时间,这是基于对食品销售数据的利用和食源性疾病病例报告的分发。通过使用真实的食品销售数据集和人为生成的暴发情景,我们证明了该方法在源自单一“有罪”食品的污染情景下的效果非常好。由于并非总是可能也没有必要识别单个违规产品,因此对该方法进行了扩展,使其可以用作二进制分类器。通过此扩展,可以生成一组潜在的“有罪”产品,其中包含非常高精度的真实爆发源。此外,我们探索了导致“难以识别”食物的食物分布模式,先验识别这些食物组的可能性,以及基于可能性的方法可用于量化不确定性的程度。我们发现,产品之间销售数据的高度空间相关性可能是“难以识别”产品的有用指标。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号