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Three-Month Real-Time Dengue Forecast Models: An Early Warning System for Outbreak Alerts and Policy Decision Support in Singapore

机译:三个月实时登革热预测模型:新加坡的暴发预警和政策决策支持预警系统

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Background: With its tropical rainforest climate, rapid urbanization, and changing demography and ecology, Singapore experiences endemic dengue; the last large outbreak in 2013 culminated in 22,170 cases. In the absence of a vaccine on the market, vector control is the key approach for prevention. Objectives: We sought to forecast the evolution of dengue epidemics in Singapore to provide early warning of outbreaks and to facilitate the public health response to moderate an impending outbreak. Methods: We developed a set of statistical models using least absolute shrinkage and selection operator (LASSO) methods to forecast the weekly incidence of dengue notifications over a 3-month time horizon. This forecasting tool used a variety of data streams and was updated weekly, including recent case data, meteorological data, vector surveillance data, and population-based national statistics. The forecasting methodology was compared with alternative approaches that have been proposed to model dengue case data (seasonal autoregressive integrated moving average and step-down linear regression) by fielding them on the 2013 dengue epidemic, the largest on record in Singapore. Results: Operationally useful forecasts were obtained at a 3-month lag using the LASSO-derived models. Based on the mean average percentage error, the LASSO approach provided more accurate forecasts than the other methods we assessed. We demonstrate its utility in Singapore’s dengue control program by providing a forecast of the 2013 outbreak for advance preparation of outbreak response. Conclusions: Statistical models built using machine learning methods such as LASSO have the potential to markedly improve forecasting techniques for recurrent infectious disease outbreaks such as dengue. Citation: Shi Y, Liu X, Kok SY, Rajarethinam J, Liang S, Yap G, Chong CS, Lee KS, Tan SS, Chin CK, Lo A, Kong W, Ng LC, Cook AR. 2016. Three-month real-time dengue forecast models: an early warning system for outbreak alerts and policy decision support in Singapore. Environ Health Perspect 124:1369–1375;?http://dx.doi.org/10.1289/ehp.1509981.
机译:背景:由于热带雨林气候,快速的城市化以及人口和生态环境的变化,新加坡经历了登革热; 2013年的最后一次大规模疫情爆发了22,170例病例。在市场上没有疫苗的情况下,病媒控制是预防的关键方法。目标:我们试图预测新加坡的登革热流行趋势,以提供暴发的早期预警,并促进公共卫生应对中度即将来临的暴发。方法:我们使用最小绝对收缩和选择算子(LASSO)方法开发了一套统计模型,以预测3个月内每周登革热通报的发生率。该预测工具使用了各种数据流,并且每周进行更新,包括最近的病例数据,气象数据,媒介监测数据以及基于人口的国家统计数据。将预测方法与为模拟登革热病例数据而提出的替代方法(季节性自回归综合移动平均值和逐步下降线性回归)进行了比较,方法是将其应用于2013年登革热流行,这是新加坡有记录以来最大的流行病。结果:使用LASSO衍生的模型在三个月的延迟后获得了有用的运行预测。基于平均平均百分比误差,LASSO方法比我们评估的其他方法提供了更准确的预测。我们通过提供2013年暴发的预测来提前准备暴发应对,从而证明其在新加坡登革热控制计划中的作用。结论:使用诸如LASSO之类的机器学习方法构建的统计模型有可能显着改善对登革热等复发性传染病暴发的预测技术。引用文献:施Y,刘X,Kok SY,Rajarethinam J,Liang S,Yap G,Chong CS,Lee KS,Tan SS,Chin CK,Lo A,Kong W,Ng LC,Cook AR。 2016年。三个月的实时登革热预测模型:新加坡的暴发预警和政策决策支持预警系统。 Environ Health Perspect 124:1369–1375; http://dx.doi.org/10.1289/ehp.1509981。

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