Department of Biotechnology and Bioinformatics, College of Science and Technology, Korea University, Sejong, Korea.
PLoS One. 2013 Jul 24;8(7):e69305. doi: 10.1371/journal.pone.0069305. Print 2013.
Influenza epidemics arise through the accumulation of viral genetic changes. The emergence of new virus strains coincides with a higher level of influenza-like illness (ILI), which is seen as a peak of a normal season. Monitoring the spread of an epidemic influenza in populations is a difficult and important task. Twitter is a free social networking service whose messages can improve the accuracy of forecasting models by providing early warnings of influenza outbreaks. In this study, we have examined the use of information embedded in the Hangeul Twitter stream to detect rapidly evolving public awareness or concern with respect to influenza transmission and developed regression models that can track levels of actual disease activity and predict influenza epidemics in the real world. Our prediction model using a delay mode provides not only a real-time assessment of the current influenza epidemic activity but also a significant improvement in prediction performance at the initial phase of ILI peak when prediction is of most importance.
流感疫情是通过病毒遗传变化的积累而出现的。新病毒株的出现恰逢流感样疾病(ILI)水平升高,这被视为正常季节的高峰。监测人群中流行流感的传播是一项艰巨而重要的任务。Twitter 是一种免费的社交网络服务,其消息可以通过提前预警流感爆发来提高预测模型的准确性。在这项研究中,我们研究了利用嵌入在韩文 Twitter 流中的信息来快速检测公众对流感传播的意识或关注程度,并开发了回归模型,可以跟踪实际疾病活动的水平,并预测现实世界中的流感疫情。我们使用延迟模式的预测模型不仅可以实时评估当前流感疫情活动,而且还可以在 ILI 高峰的初始阶段显著提高预测性能,此时预测最为重要。