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Identifying spatio-temporal patterns of transboundary disease spread: examples using avian influenza H5N1 outbreaks

机译:确定跨界疾病传播的时空格局:以禽流感H5N1爆发为例

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摘要

Characterizing spatio-temporal patterns among epidemics in which the mechanism of spread is uncertain is important for generating disease spread hypotheses, which may in turn inform disease control and prevention strategies. Using a dataset representing three phases of highly pathogenic avian influenza H5N1 outbreaks in village poultry in Romania, 2005–2006, spatio-temporal patterns were characterized. We first fit a set of hierarchical Bayesian models that quantified changes in the spatio-temporal relative risk for each of the 23 affected counties. We then modeled spatial synchrony in each of the three epidemic phases using non-parametric covariance functions and Thin Plate Spline regression models. We found clear differences in the spatio-temporal patterns among the epidemic phases (local versus regional correlated processes), which may indicate differing spread mechanisms (for example wild bird versus human-mediated). Elucidating these patterns allowed us to postulate that a shift in the primary mechanism of disease spread may have taken place between the second and third phases of this epidemic. Information generated by such analyses could assist affected countries in determining the most appropriate control programs to implement, and to allocate appropriate resources to preventing contact between domestic poultry and wild birds versus enforcing bans on poultry movements and quarantine. The methods used in this study could be applied in many different situations to analyze transboundary disease data in which only location and time of occurrence data are reported.
机译:在流行病中描述传播机制不确定的流行病时空模式,对于产生疾病传播假说很重要,这可能反过来为疾病控制和预防策略提供依据。利用一个代表三个阶段的高致病性禽流感H5N1爆发的数据集,罗马尼亚罗马尼亚乡村禽类在2005-2006年间进行了特征分析。我们首先拟合了一组分层贝叶斯模型,该模型量化了23个受影响县中每个县的时空相对风险变化。然后,我们使用非参数协方差函数和Thin Plate Spline回归模型对三个流行阶段的每个阶段的空间同步进行建模。我们发现流行阶段之间的时空格局存在明显差异(局部与区域相关过程),这可能表明传播机制不同(例如野生鸟类与人类介导的传播)。对这些模式的阐明使我们能够假定,在该流行病的第二阶段和第三阶段之间,疾病传播的主要机制发生了转变。这种分析所产生的信息可以帮助受影响的国家确定最合适的控制计划,并分配适当的资源来防止家禽与野禽之间的接触,以及禁止家禽移动和检疫。本研究中使用的方法可以在许多不同情况下应用,以分析仅报告位置和发生时间数据的跨界疾病数据。

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