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Using Baidu index to nowcast hand-foot-mouth disease in China: a meta learning approach

机译:在中国使用百度指数到现在的北卡手脚口病:元学习方法

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Hand, foot, and mouth disease (HFMD) has been recognized as one of the leading infectious diseases among children in China, which causes hundreds of annual deaths since 2008. In China, the reports of monthly HFMD cases usually have a delay of 1-2 months due to the time needed for collecting and processing clinical information. This time lag is far from optimal for policymakers making decisions. To alleviate this information gap, this study uses a meta learning framework and combines publicly Internet-based information (Baidu search queries) for real-time estimation of HFMD cases. We incorporate Baidu index into modeling to nowcast the monthly HFMD incidences in Guangxi, Zhejiang, Henan provinces and the whole China. We develop a meta learning framework to select appropriate predictive model based on the statistical and time series meta features. Our proposed approach is assessed for the HFMD cases within the time period from July 2015 to June 2016 using multiple evaluation metrics including root mean squared error (RMSE) and correlation coefficient (Corr). For the four areas: whole China, Guangxi, Zhejiang, and Henan, our approach is superior to the best competing models, reducing the RMSE by 37, 20, 20, and 30% respectively. Compared with all the alternative predictive methods, our estimates show the strongest correlation with the observations. In this study, the proposed meta learning method significantly improves the HFMD prediction accuracy, demonstrating that: (1) the Internet-based information offers the possibility for effective HFMD nowcasts; (2) the meta learning approach is capable of adapting to a wide variety of data, and enables selecting appropriate method for improving the nowcasting accuracy.
机译:手,脚和口腔疾病(HFMD)被认为是中国儿童的主要传染病之一,这是自2008年以来的数百年度死亡。在中国,每月HFMD病例的报告通常延迟1-由于收集和处理临床信息所需的时间,2个月。这次滞后远非最佳决策者做出决定。为了缓解此信息差距,本研究使用元学习框架,并将公开的基于互联网的信息(百度搜索查询)结合起来进行HFMD案例的实时估计。我们将百度指数纳入了日本广西,浙江,河南省和整个中国的月度HFMD发病率的建模。我们开发了元学习框架,以根据统计和时间序列元特征选择适当的预测模型。我们的拟议方法是在2015年7月至2016年6月的时间段内评估了HFMD案件,使用包括root均方误差(RMSE)和相关系数(Corr)的多个评估度量。对于四个方面:整个中国,广西,浙江和河南,我们的方法优于最佳竞争模式,减少了37,20,20和30%的RMSE。与所有替代预测方法相比,我们的估计显示与观察结果最强相关。在这项研究中,所提出的元学习方法显着提高了HFMD预测精度,展示了:(1)基于互联网的信息提供了有效的HFMD Nowcasts的可能性; (2)元学习方法能够适应各种数据,并能够选择适当的方法来提高垂圈的准确性。

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