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首页> 外文期刊>Acta tropica: Journal of Biomedical Sciences >Improving the prediction of arbovirus outbreaks: A comparison of climate-driven models for West Nile virus in an endemic region of the United States
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Improving the prediction of arbovirus outbreaks: A comparison of climate-driven models for West Nile virus in an endemic region of the United States

机译:改善arbovirus爆发的预测:在美国流行区域中西尼罗河病毒的气候驱动模型比较

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摘要

Models that forecast the timing and location of human arboviral disease have the potential to make mosquito control and disease prevention more effective. A common approach is to use statistical time-series models that predict disease cases as lagged functions of environmental variables. However, the simplifying assumptions required for standard modeling approaches may not capture important aspects of complex, non-linear transmission cycles. Here, we compared a set of alternative models of human West Nile virus (WNV) in 2004-2017 in South Dakota, USA. We used county-level logistic regressions to model historical human case data as functions of distributed lag summaries of air temperature and several moisture indices. We tested two variations of the standard model in which 1) the distributed lag functions were allowed to change over the transmission season, so that dependence on past meteorological conditions was time varying rather than static, and 2) an additional predictor was included that quantified the mosquito infection growth rate estimated from mosquito surveillance data. The best-fitting model included temperature and vapor pressure deficit as meteorological predictors, and also incorporated time-varying lags and the mosquito infection growth rate. The time-varying lags helped to predict the seasonal pattern of WNV cases, whereas the mosquito infection growth rate improved the prediction of year-to-year variability in WNV risk. These relatively simple and practical enhancements may be particularly helpful for developing data-driven time series models for use in arbovirus forecasting applications.
机译:预测人类武术疾病的时序和位置的模型有可能使蚊子控制和疾病预防更有效。一种常见的方法是使用预测疾病病例的统计时间序列模型作为环境变量的滞留功能。然而,标准建模方法所需的简化假设可能无法捕获复杂的非线性传输周期的重要方面。在这里,我们比较了2004 - 2017年在美国南达科他州2004-2017的一套替代模型。我们使用县级逻辑回归来模拟历史人案数据作为空气温度和几种水分指标的分布式滞后摘要的函数。我们测试了标准模型的两个变体,其中1)允许分布式滞后函数通过传输季节来改变,因此对过去的气象条件的依赖性是时变,而不是静态,并且包括额外的预测因子,其中包括量化蚊虫监控数据估计的蚊虫感染增长率。最佳拟合模型包括温度和蒸汽压力缺陷作为气象预测因子,并加入时变滞后和蚊虫感染生长速率。时变滞后有助于预测WNV病例的季节性模式,而蚊虫感染生长速率提高了对WNV风险的年度变异性的预测。这些相对简单和实用的增强可能特别有助于开发用于开发用于Abbovirus预测应用的数据驱动的时间序列模型。

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