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Forecasting the 2013–2014 Influenza Season Using Wikipedia

机译:使用Wikipedia预测2013–2014年流感季节

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摘要

Infectious diseases are one of the leading causes of morbidity and mortality around the world; thus, forecasting their impact is crucial for planning an effective response strategy. According to the Centers for Disease Control and Prevention (CDC), seasonal influenza affects 5% to 20% of the U.S. population and causes major economic impacts resulting from hospitalization and absenteeism. Understanding influenza dynamics and forecasting its impact is fundamental for developing prevention and mitigation strategies. We combine modern data assimilation methods with Wikipedia access logs and CDC influenza-like illness (ILI) reports to create a weekly forecast for seasonal influenza. The methods are applied to the 2013-2014 influenza season but are sufficiently general to forecast any disease outbreak, given incidence or case count data. We adjust the initialization and parametrization of a disease model and show that this allows us to determine systematic model bias. In addition, we provide a way to determine where the model diverges from observation and evaluate forecast accuracy. Wikipedia article access logs are shown to be highly correlated with historical ILI records and allow for accurate prediction of ILI data several weeks before it becomes available. The results show that prior to the peak of the flu season, our forecasting method produced 50% and 95% credible intervals for the 2013-2014 ILI observations that contained the actual observations for most weeks in the forecast. However, since our model does not account for re-infection or multiple strains of influenza, the tail of the epidemic is not predicted well after the peak of flu season has passed.
机译:传染病是全世界发病率和死亡率的主要原因之一;因此,预测其影响对于规划有效的应对策略至关重要。根据疾病控制与预防中心(CDC)的数据,季节性流感会影响美国5%至20%的人口,并因住院和旷工造成重大经济影响。了解流感动态并预测其影响是制定预防和缓解策略的基础。我们将现代数据同化方法与Wikipedia访问日志和CDC流感样疾病(ILI)报告相结合,以创建季节性流感的每周预报。该方法适用于2013-2014年流感季节,但具有足够的通用性,可以根据给定的发病率或病例数数据预测任何疾病的爆发。我们调整了疾病模型的初始化和参数化,并表明这可以确定系统模型的偏差。此外,我们提供了一种确定模型与观察结果有何不同并评估预测准确性的方法。维基百科的文章访问日志显示与历史ILI记录高度相关,并且可以在ILI数据可用前几周进行准确的预测。结果表明,在流感季节达到高峰之前,我们的预测方法得出了2013-2014年ILI观测值的50%和95%可信区间,其中包含了预测中大多数周的实际观测值。但是,由于我们的模型没有考虑再感染或多种流感毒株,因此在流感季节的高峰期过后,无法很好地预测流行的尾巴。

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