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Social Media for Nowcasting Flu Activity: Spatio-Temporal Big Data Analysis

机译:即时流感活动的社交媒体:时空大数据分析

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Contagious diseases pose significant challenges to public healthcare systems all over the world. The rise in emerging contagious and infectious diseases has led to calls for the use of new techniques and technologies capable of detecting, tracking, mapping and managing behavioral patterns in such diseases. In this study, we used Big Data technologies to analyze two sets of flu (influenza) activity data: Twitter data were used to extract behavioral patterns from a location-based social network and to monitor flu outbreaks (and their locations) in the US, and Cerner HealthFacts data warehouse was used to track real-world clinical encounters. We expected that the integration (mashing) of social media and real-world clinical encounters could be a valuable enhancement to the existing surveillance systems. Our results verified that flu-related traffic on social media is closely related with actual flu outbreaks. However, rather than using simple Pearson correlation, which assumes a zero lag between the online and real-world activities, we used a multi-method data analytics approach to obtain the spatio-temporal cross-correlation between the two flu trends and to explain behavioral patterns during the flu season. We found that clinical flu encounters lag behind online posts. Also, we identified several public locations from which a majority of posts initiated. These findings can help health authorities develop more effective interventions (behavioral and/or otherwise) during the outbreaks to reduce the spread and impact, and to inform individuals about the locations they should avoid during those periods.
机译:传染病给全世界的公共医疗系统带来了巨大的挑战。新出现的传染性和传染性疾病的增加导致人们呼吁使用能够检测,跟踪,绘制和管理此类疾病行为模式的新技术。在这项研究中,我们使用大数据技术分析了两组流感(流感)活动数据:Twitter数据用于从基于位置的社交网络中提取行为模式,并监控美国的流感爆发(及其位置), Cerner HealthFacts数据仓库用于跟踪现实世界中的临床情况。我们期望社交媒体与现实世界中的临床相遇的整合(融合)可以对现有监视系统进行有价值的改进。我们的结果证明,社交媒体上与流感相关的流量与实际的流感爆发密切相关。但是,我们并没有使用简单的Pearson相关性(假设在线活动与现实活动之间的滞后时间为零),而是使用多方法数据分析方法来获得两种流感趋势之间的时空互相关并解释行为流感季节的流行模式。我们发现,临床流感的遭遇落后于在线帖子。此外,我们确定了几个公共场所,大多数帖子都是从这些公共场所发起的。这些发现可以帮助卫生当局在暴发期间制定更有效的干预措施(行为和/或其他方式),以减少传播和影响,并告知个人在此期间应避免的地点。

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