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Surveillance of animal diseases through implementation of a Bayesian spatio-temporal model: A simulation example with neurological syndromes in horses and West Nile Virus

机译:通过实施贝叶斯时空模型监测动物疾病:马匹和西尼罗河病毒神经综合征的模拟例

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A potentially sensitive way to detect disease outbreaks is syndromic surveillance, i.e. monitoring the number of syndromes reported in the population of interest, comparing it to the baseline rate, and drawing conclusions about outbreaks using statistical methods. A decision maker may use the results to take disease control actions or to initiate enhanced epidemiological investigations. In addition to the total count of syndromes there are often additional pieces of information to consider when assessing the probability of an outbreak. This includes clustering of syndromes in space and time as well as historical data on the occurrence of syndromes, seasonality of the disease, etc. In this paper, we show how Bayesian theory for syndromic surveillance applies to the occurrence of neurological syndromes in horses in France. Neurological syndromes in horses may be connected e.g. to West Nile Virus (WNV), a zoonotic disease of growing concern for public health in Europe. A Bayesian method for spatio-temporal cluster detection of syndromes and for determining the probability of an outbreak is presented. It is shown how surveillance can be performed simultaneously for a specific class of diseases (WNV or diseases similar to WNV in terms of the information available to the system) and a non-specific class of diseases (not similar to WNV in terms of the information available to the system). We also discuss some new extensions to the spatio-temporal models and the computational algorithms involved. It is shown step-by-step how data from historical WNV outbreaks and surveillance data for neurological syndromes can be used for model construction. The model is implemented using a Gibbs sampling procedure, and its sensitivity and specificity is evaluated. Finally, it is illustrated how predictive modelling of syndromes can be useful for decision making in animal health surveillance.
机译:一种潜在敏感的方法来检测疾病爆发是综合征监测,即监测利息群中报告的综合征数,将其与基准率相比,并使用统计方法绘制爆发的结论。决策者可能会使用结果以服用疾病控制行为或开始增强的流行病学调查。除了综合征的总计数之外,在评估爆发的概率时通常需要额外的信息。这包括在空间和时间和时间以及综合征出现的历史数据中聚类综合征,疾病季节性等。在本文中,我们展示了贝叶斯思想监测的理论如何适用于法国马匹的神经综合征的发生。马匹中的神经系统综合征可以是如此。对西尼罗河病毒(WNV),这是一种对欧洲公共卫生人口越来越关注的人畜共患疾病。展示了一种贝叶斯的时空簇检测综合征和确定爆发概率的方法。显示了如何为特定类别的疾病同时进行监测(在系统上可用的信息的WNV类似于WNV的WNV或疾病)和非特异性疾病(在信息方面没有类似于WNV可用于系统)。我们还讨论了一些新的扩展到时空模型和所涉及的计算算法。逐步显示如何从历史WNV爆发和神经综合征的监测数据的数据可用于模型结构。该模型是使用GIBBS采样过程来实现的,并且评估其灵敏度和特异性。最后,说明了综合征的预测建模如何对动物健康监测的决策有用。

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