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Use of daily Internet search query data improves real-time projections of influenza epidemics

机译:每天使用互联网搜索查询数据可以改善流感流行的实时预测

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摘要

Seasonal influenza causes millions of illnesses and tens of thousands of deaths per year in the USA alone. While the morbidity and mortality associated with influenza is substantial each year, the timing and magnitude of epidemics are highly variable which complicates efforts to anticipate demands on the healthcare system. Better methods to forecast influenza activity would help policymakers anticipate such stressors. The US Centers for Disease Control and Prevention (CDC) has recognized the importance of improving influenza forecasting and hosts an annual challenge for predicting influenza-like illness (ILI) activity in the USA. The CDC data serve as the reference for ILI in the USA, but this information is aggregated by epidemiological week and reported after a one-week delay (and may be subject to correction even after this reporting lag). Therefore, there has been substantial interest in whether real-time Internet search data, such as Google, Twitter or Wikipedia could be used to improve influenza forecasting. In this study, we combine a previously developed calibration and prediction framework with an established humidity-based transmission dynamic model to forecast influenza. We then compare predictions based on only CDC ILI data with predictions that leverage the earlier availability and finer temporal resolution of Wikipedia search data. We find that both the earlier availability and the finer temporal resolution are important for increasing forecasting performance. Using daily Wikipedia search data leads to a marked improvement in prediction performance compared to weekly data especially for a three- to four-week forecasting horizon.
机译:仅在美国,季节性流感每年就导致数百万种疾病和数以万计的死亡。尽管每年与流感相关的发病率和死亡率都是很高的,但流行的时间和程度是高度可变的,这使得预期医疗保健系统需求的努力变得复杂。更好的预测流感活动的方法将有助于决策者预料此类压力源。美国疾病控制与预防中心(CDC)已经认识到改善流感预测的重要性,并且在美国每年要面临预测流感样疾病(ILI)活动的挑战。 CDC数据可作为美国ILI的参考,但此信息是按流行病学周汇总的,并在延迟一周后报告(即使在报告延迟后也可能会进行更正)。因此,人们对是否可以使用实时互联网搜索数据(例如Google,Twitter或Wikipedia)来改善流感预测抱有极大的兴趣。在这项研究中,我们将先前开发的校准和预测框架与已建立的基于湿度的传播动力学模型相结合来预测流感。然后,我们将仅基于CDC ILI数据的预测与利用Wikipedia搜索数据的更早可用性和更精细时间分辨率的预测进行比较。我们发现,更早的可用性和更精细的时间分辨率对于提高预测性能都很重要。与每周数据相比,使用每日Wikipedia搜索数据可显着改善预测性能,尤其是对于三到四周的预测范围。

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