符合FSKX标准的沙门氏菌病来源归因模型及其主要隐患分析

Esther M. Sundermann, Guido Correia Carreira, A. Käsbohrer
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引用次数: 0

摘要

为了减轻人畜共患疾病给人类社会造成的负担,重要的是要将来源归因于人类疾病。支持任何干预决策的一个强有力的方法是数学建模。本文提出了一个来源归因模型,该模型考虑了沙门氏菌病的五个来源(肉鸡、蛋鸡、猪、火鸡),并使用了德国在两个时间段收集的两个数据集;2004年至2007年一次,2010年至2011年一次。该模型使用了一种贝叶斯建模方法,该方法来源于所谓的Hald模型,并基于微生物亚型。在这种情况下,从人类和动物分离的沙门氏菌根据血清型和噬菌体类型进行了亚型。基于这种分型,该模型估计了可归因于每种考虑来源的人类沙门氏菌病病例的数量。该模型的参考描述可在DOI: 10.1111/zph.12645下获得。在这里,我们将该模型作为食品安全知识交换(FSKX)格式的现成资源。这种开放的信息交换格式允许重用、修改和进一步开发模型,并使用模型元数据和受控词汇表来协调注释。除了模型之外,我们还讨论了在运行基于马尔可夫链蒙特卡罗计算的贝叶斯模型时可能出现的一些技术缺陷。由于人畜共患疾病的来源归属是“同一个健康”方法的一个有用工具,我们的工作促进了国际和多部门社区对这一来源归属模型的交流、调整和再利用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An FSKX compliant source attribution model for salmonellosis and a look at its major hidden pitfalls
To reduce the burden of human society that is caused by zoonotic diseases, it is important to attribute sources to human illnesses. One powerful approach in supporting any intervention decision is mathematical modelling. This paper presents a source attribution model which considers five sources (broilers, laying hens, pigs, turkeys) for salmonellosis and uses two datasets from Germany collected over two time periods; one from 2004 to 2007 and one from 2010 to 2011. The model uses a Bayesian modelling approach derived from the so-called Hald model and is based on microbial subtyping. In this case, Salmonella isolates from humans and animals were subtyped with respect to serovar and phage type. Based on that typing, the model estimates how many human salmonellosis cases can be attributed to each of the considered sources. A reference description of the model is available under DOI: 10.1111/zph.12645. Here, we present this model as a ready-to-use resource in the Food Safety Knowledge Exchange (FSKX) format. This open information exchange format allows to re-use, modify, and further develop the model and uses model metadata and controlled vocabulary to harmonise the annotation. In addition to the model, we discuss some technical pitfalls that might occur when running this Bayesian model based on Markov chain Monte Carlo calculations. As source attribution of zoonotic disease is one useful tool for the One Health approach, our work facilitates the exchange, adjustment, and re-usage of this source attribution model by the international and multi-sectoral community.
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