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Forecasting the 2001 Foot-and-Mouth Disease Epidemic in the UK

机译:预测英国2001年口蹄疫流行情况

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摘要

Near real-time epidemic forecasting approaches are needed to respond to the increasing number of infectious disease outbreaks. In this paper, we retrospectively assess the performance of simple phenomenological models that incorporate early sub-exponential growth dynamics to generate short-term forecasts of the 2001 foot-and-mouth disease epidemic in the UK. For this purpose, we employed the generalized-growth model (GGM) for pre-peak predictions and the generalized-Richards model (GRM) for post-peak predictions. The epidemic exhibits a growth-decelerating pattern as the relative growth rate declines inversely with time. The uncertainty of the parameter estimates (r and p) narrows down and becomes more precise using an increasing amount of data of the epidemic growth phase. Indeed, using only the first 10–15 days of the epidemic, the scaling of growth parameter (p) displays wide uncertainty with the confidence interval for p ranging from values ~ 0.5 to 1.0, indicating that less than 15 epidemic days of data are not sufficient to discriminate between sub-exponential (i.e., p < 1) and exponential growth dynamics (i.e., p = 1). By contrast, using 20, 25, or 30 days of epidemic data, it is possible to recover estimates of p around 0.6 and the confidence interval is substantially below the exponential growth regime. Local and national bans on the movement of livestock and a nationwide cull of infected and contiguous premises likely contributed to the decelerating trajectory of the epidemic. The GGM and GRM provided useful 10-day forecasts of the epidemic before and after the peak of the epidemic, respectively. Short-term forecasts improved as the model was calibrated with an increasing length of the epidemic growth phase. Phenomenological models incorporating generalized-growth dynamics are useful tools to generate short-term forecasts of epidemic growth in near real time, particularly in the context of limited epidemiological data as well as information about transmission mechanisms and the effects of control interventions.
机译:需要近实时的流行病预测方法来应对不断增长的传染病暴发。在本文中,我们回顾性地评估了简单的现象学模型的性能,该模型结合了早期的亚指数增长动态,以生成对2001年英国口蹄疫流行的短期预测。为此,我们将广义增长模型(GGM)用于峰前预测,并将广义理查兹模型(GRM)用于峰后预测。随着相对增长率随时间成反比下降,该流行病表现出增长减速的模式。随着流行病生长期数据的增加,参数估计值(r和p)的不确定性变窄并且变得更加精确。确实,仅使用流行病的前10-15天,增长参数(p)的标度显示出很大的不确定性,p的置信区间范围为〜0.5至1.0的值,这表明少于15个流行病日没有足以区分次指数(即p <1)和指数增长动力(即p = 1)。相比之下,使用20、25或30天的流行病数据,有可能恢复p约为0.6的估计值,并且置信区间显着低于指数增长机制。地方和国家禁止牲畜迁徙以及全国范围内被感染和邻近的房屋被淘汰,这可能导致该流行病的发展速度下降。 GGM和GRM分别提供了流行高峰前后的10天有用的流行预测。当模型随着流行病生长阶段的增加而校准时,短期预测有所改善。结合了广义增长动力学的现象学模型是有用的工具,可用于近实时地实时预测流行病的增长,特别是在流行病学数据以及传播机制和控制干预措施效果有限的情况下。

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