Understanding syndromic hotspots - a visual analytics approach

Ross Maciejewski, Stephen Rudolph, R. Hafen, A. Abusalah, M. Yakout, M. Ouzzani, W. Cleveland, S. Grannis, Michael Wade, D. Ebert
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引用次数: 28

Abstract

When analyzing syndromic surveillance data, health care officials look for areas with unusually high cases of syndromes. Unfortunately, many outbreaks are difficult to detect because their signal is obscured by the statistical noise. Consequently, many detection algorithms have a high false positive rate. While many false alerts can be easily filtered by trained epidemiologists, others require health officials to drill down into the data, analyzing specific segments of the population and historical trends over time and space. Furthermore, the ability to accurately recognize meaningful patterns in the data becomes more challenging as these data sources increase in volume and complexity. To facilitate more accurate and efficient event detection, we have created a visual analytics tool that provides analysts with linked geo-spatiotemporal and statistical analytic views. We model syndromic hotspots by applying a kernel density estimation on the population sample. When an analyst selects a syndromic hotspot, temporal statistical graphs of the hotspot are created. Similarly, regions in the statistical plots may be selected to generate geospatial features specific to the current time period. Demographic filtering can then be combined to determine if certain populations are more affected than others. These tools allow analysts to perform real-time hypothesis testing and evaluation.
理解综合征热点-一种可视化分析方法
在分析综合征监测数据时,卫生保健官员会寻找综合征病例异常高的地区。不幸的是,许多疫情很难被发现,因为它们的信号被统计噪声所掩盖。因此,许多检测算法具有很高的假阳性率。虽然许多虚假警报可以很容易地被训练有素的流行病学家过滤掉,但也有一些错误警报需要卫生官员深入研究数据,分析特定人群和历史趋势,随着时间和空间的变化。此外,随着这些数据源的数量和复杂性的增加,准确识别数据中有意义的模式的能力变得更加具有挑战性。为了促进更准确和有效的事件检测,我们创建了一个可视化分析工具,为分析人员提供链接的地理-时空和统计分析视图。我们通过在总体样本上应用核密度估计来建模综合征热点。当分析人员选择一个症候群热点时,将创建该热点的时间统计图。同样,可以选择统计图中的区域来生成特定于当前时间段的地理空间特征。然后可以结合人口统计过滤来确定某些人群是否比其他人群受影响更大。这些工具允许分析人员执行实时假设检验和评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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