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Infectious Disease Surveillance in the Big Data Era: Towards Faster and Locally Relevant Systems

机译:大数据时代的传染病监测:朝着更快更相关的系统发展

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摘要

While big data have proven immensely useful in fields such as marketing and earth sciences, public health is still relying on more traditional surveillance systems and awaiting the fruits of a big data revolution. A new generation of big data surveillance systems is needed to achieve rapid, flexible, and local tracking of infectious diseases, especially for emerging pathogens. In this opinion piece, we reflect on the long and distinguished history of disease surveillance and discuss recent developments related to use of big data. We start with a brief review of traditional systems relying on clinical and laboratory reports. We then examine how large-volume medical claims data can, with great spatiotemporal resolution, help elucidate local disease patterns. Finally, we review efforts to develop surveillance systems based on digital and social data streams, including the recent rise and fall of Google Flu Trends. We conclude by advocating for increased use of hybrid systems combining information from traditional surveillance and big data sources, which seems the most promising option moving forward. Throughout the article, we use influenza as an exemplar of an emerging and reemerging infection which has traditionally been considered a model system for surveillance and modeling.
机译:尽管大数据已证明在市场营销和地球科学等领域非常有用,但公共卫生仍然依赖于更传统的监视系统,并等待着大数据革命的成果。需要新一代的大数据监视系统来实现对传染病,特别是新兴病原体的传染病的快速,灵活和本地跟踪。在这篇观点中,我们回顾了疾病监测的悠久而杰出的历史,并讨论了与使用大数据有关的最新发展。我们首先根据临床和实验室报告简要回顾传统系统。然后,我们研究大量的医疗索赔数据如何以较大的时空分辨率来帮助阐明局部疾病模式。最后,我们回顾了基于数字和社交数据流开发监控系统的努力,包括最近Google Flu Trends的兴衰。最后,我们提倡增加混合系统的使用,这些系统结合了来自传统监视和大数据源的信息,这似乎是最有前途的选择。在整篇文章中,我们将流感作为新兴和重新出现的感染的典范,传统上将其视为用于监视和建模的模型系统。

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