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Tracking the flu pandemic by monitoring the social web

机译:通过监视社交网络跟踪流感大流行

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Tracking the spread of an epidemic disease like seasonal or pandemic influenza is an important task that can reduce its impact and help authorities plan their response. In particular, early detection and geolocation of an outbreak are important aspects of this monitoring activity. Various methods are routinely employed for this monitoring, such as counting the consultation rates of general practitioners. We report on a monitoring tool to measure the prevalence of disease in a population by analysing the contents of social networking tools, such as Twitter. Our method is based on the analysis of hundreds of thousands of tweets per day, searching for symptom-related statements, and turning statistical information into a flu-score. We have tested it in the United Kingdom for 24 weeks during the H1N1 flu pandemic. We compare our flu-score with data from the Health Protection Agency, obtaining on average a statistically significant linear correlation which is greater than 95%. This method uses completely independent data to that commonly used for these purposes, and can be used at close time intervals, hence providing inexpensive and timely information about the state of an epidemic.
机译:跟踪季节性或大流行性流感等流行病的传播是一项重要任务,可以减少其影响并帮助当局计划应对措施。特别是,爆发的早期发现和地理位置是此监视活动的重要方面。常规使用各种方法进行此监视,例如计算全科医生的咨询率。我们报告了一种监测工具,可通过分析诸如Twitter之类的社交网络工具的内容来测量人群中的疾病流行率。我们的方法基于每天分析数十万条推文,搜索与症状相关的陈述并将统计信息转化为流感评分。在H1N1流感大流行期间,我们已经在英国对其进行了24周的测试。我们将流感评分与健康保护局的数据进行比较,平均得出的统计学显着线性相关性大于95%。该方法使用与通常用于这些目的的数据完全独立的数据,并且可以在很短的时间间隔内使用,因此可以提供有关流行病状态的廉价且及时的信息。

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