从维基百科文章中获取疾病数据

Geoffrey Fairchild, Lalindra De Silva, S. D. Valle, Alberto Maria Segre
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引用次数: 10

摘要

传统的疾病监测系统存在一些缺点,包括报告滞后和技术过时,这导致了向基于互联网的疾病监测系统的转变。互联网系统对疾病暴发特别有吸引力,因为它们可以提供近乎实时的数据,并且可以由全球各地的个人进行验证。然而,大多数现有的系统都侧重于疾病监测,没有为决策者或研究人员提供数据存储库。为了填补这一空白,我们分析了维基百科的文章内容。我们演示了如何训练命名实体识别器来标记文章叙述中的病例数、死亡数和住院数,从而获得0.753的F1分数。我们还以2014年西非埃博拉病毒病流行文章为例研究表明,有详细的时间序列数据不断更新,与地面真实数据密切一致。我们认为维基百科可以用来创建第一个社区驱动的开源新兴疾病检测、监测和存储系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Eliciting Disease Data from Wikipedia Articles
Traditional disease surveillance systems suffer from several disadvantages, including reporting lags and antiquated technology, that have caused a movement towards internet-based disease surveillance systems. Internet systems are particularly attractive for disease outbreaks because they can provide data in near real-time and can be verified by individuals around the globe. However, most existing systems have focused on disease monitoring and do not provide a data repository for policy makers or researchers. In order to fill this gap, we analyzed Wikipedia article content. We demonstrate how a named-entity recognizer can be trained to tag case counts, death counts, and hospitalization counts in the article narrative that achieves an F1 score of 0.753. We also show, using the 2014 West African Ebola virus disease epidemic article as a case study, that there are detailed time series data that are consistently updated that closely align with ground truth data. We argue that Wikipedia can be used to create the first community-driven open-source emerging disease detection, monitoring, and repository system.
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