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An ensemble forecast model of dengue in Guangzhou, China using climate and social media surveillance data

机译:使用气候和社交媒体监测数据的中国广州登革热总体预测模型

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Background: China experienced an unprecedented outbreak of dengue in 2014, and the number of dengue cases reached the highest level over the past 25 years. There is a significant delay in the release of official case count data, and our ability to timely track the timing and magnitude of local outbreaks of dengue remains limited.Material and methods: We developed an ensemble penalized regression algorithm (EPRA) for initializing near-real time forecasts of the dengue epidemic trajectory by integrating different penalties (LASSO, Ridge, Elastic Net, SCAD and MCP) with the techniques of iteratively sampling and model averaging. Multiple streams of near-real time data including dengue-related Baidu searches, Sina Weibo posts, and climatic conditions with historical dengue incidence were used. We compared the predictive power of the EPRA with the alternates, penalized regression models using single penalties, to retrospectively forecast weekly dengue incidence and detect outbreak occurrence defined using different cutoffs, during the periods of 2011-2016 in Guangzhou, south China.Results: The EPRA showed the best or at least comparable performance for 1-, 2-week ahead out-of-sample and leave-one-out cross validation forecasts. The findings indicate that skillful near-real time forecasts of dengue and confidence in those predictions can be made. For detecting dengue outbreaks, the EPRA predicted periods of high incidence of dengue more accurately than the alternates.Conclusion: This study developed a statistically rigorous approach for near-real time forecast of dengue in China. The EPRA provides skillful forecasts and can be used as timely and complementary ways to assess dengue dynamics, which will help to design interventions to mitigate dengue transmission. (c) 2018 Elsevier B.V. All rights reserved.
机译:背景:2014年,中国经历了前所未有的登革热暴发,登革热病例数达到了过去25年以来的最高水平。官方病例计数数据的发布存在重大延迟,并且我们及时跟踪登革热局部暴发的时间和规模的能力仍然有限。材料和方法:我们开发了集成罚分回归算法(EPRA)来初始化接近通过将不同的惩罚因素(LASSO,Ridge,Elastic Net,SCAD和MCP)与迭代采样和模型平均技术相结合,可以实时预测登革热疫情的轨迹。使用了多条近实时数据流,包括与登革热相关的百度搜索,新浪微博帖子以及具有历史登革热发病率的气候条件。我们将EPRA的预测能力与使用单一惩罚的替代惩罚惩罚模型进行了比较,以回顾性预测2011年至2016年期间华南广州市的每周登革热发病率,并检测使用不同临界值定义的暴发发生率。 EPRA提前1、2周超出样本,并留下一劳永逸的交叉验证预测,表现出最佳或至少可比的性能。研究结果表明,可以对登革热进行熟练的近实时预测,并对这些预测充满信心。为了检测登革热暴发,EPRA预测登革热高发期要比其他登革热更准确。结论:本研究开发了一种统计严谨的方法来对中国登革热进行近实时预测。 EPRA提供熟练的预测,可以用作评估登革热动态的及时补充方法,这将有助于设计减轻登革热传播的干预措施。 (c)2018 Elsevier B.V.保留所有权利。

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