对医疗生态系统内检测到的公共卫生事件的用户研究

Avare Stewart, E. Herder, Matthew Smith, W. Nejdl
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引用次数: 2

摘要

医疗网络数据的大量涌入使得计算机辅助收集和解释基于社交媒体的流行病情报(SM-EI)的任务非常具有挑战性。最先进的方法通常使用监督机器学习算法从这个医疗生态系统中的各种来源收集数据,挖掘这些数据以获得特定的事件模式和信息发现。监督方法不仅限制了可检测事件的类型,而且需要提前给机器学习算法提供学习示例。另一方面,更通用和灵活的无监督机器学习方法目前产生的结果非常复杂,以至于领域专家无法以自然和有效的方式评估结果。在本文中,我们提出了一个新的框架,通过该框架,SM-EI领域的从业者可以与医疗生态系统数据进行交互,并评估这种复杂的无监督SM-EI算法的结果。对评估框架和无监督流行病事件检测算法进行了全面实现,并进行了定量研究,证明了该方法对SM-EI的有效性。
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A user study on public health events detected within the medical ecosystem
The great influx of Medical-Web data makes the task of computer-assisted gathering and interpretation of Social Media-based Epidemic Intelligence (SM-EI) a very challenging one. State-of-the-art approaches usually use supervised machine learning algorithms to gather data from a variety of sources in this medical ecosystem, mining this data for specific event patterns and information discovery. Supervised approaches not only limit the type of detectable events, but also requires learning examples be given to the machine learning algorithm in advance. On the other hand, the more generic and flexible unsupervised machine learning methods currently produce such complex results, that the domain experts are not capable of assessing the results in a natural and efficient manner. In this paper, we present a novel framework with which SM-EI field practitioners can interact with medical ecosystem data, and assess the results of such complex unsupervised SM-EI algorithms. The assessment framework and the unsupervised epidemic event detection algorithm have been fully implemented and a quantitative study is presented to show the validity of the new approach to SM-EI.
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