LAHVA: Linked Animal-Human Health Visual Analytics

Ross Maciejewski, Benjamin Tyner, Yun Jang, Cheng Zheng, Rimma V. Nehme, D. Ebert, W. Cleveland, M. Ouzzani, S. Grannis, L. Glickman
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引用次数: 31

Abstract

Coordinated animal-human health monitoring can provide an early warning system with fewer false alarms for naturally occurring disease outbreaks, as well as biological, chemical and environmental incidents. This monitoring requires the integration and analysis of multi-field, multi-scale and multi-source data sets. In order to better understand these data sets, models and measurements at different resolutions must be analyzed. To facilitate these investigations, we have created an application to provide a visual analytics framework for analyzing both human emergency room data and veterinary hospital data. Our integrated visual analytic tool links temporally varying geospatial visualization of animal and human patient health information with advanced statistical analysis of these multi-source data. Various statistical analysis techniques have been applied in conjunction with a spatio-temporal viewing window. Such an application provides researchers with the ability to visually search the data for clusters in both a statistical model view and a spatio-temporal view. Our interface provides a factor specification/filtering component to allow exploration of causal factors and spread patterns. In this paper, we will discuss the application of our linked animal-human visual analytics (LAHVA) tool to two specific case studies. The first case study is the effect of seasonal influenza and its correlation with different companion animals (e.g., cats, dogs) syndromes. Here we use data from the Indiana Network for Patient Care (INPC) and Banfield Pet Hospitals in an attempt to determine if there are correlations between respiratory syndromes representing the onset of seasonal influenza in humans and general respiratory syndromes in cats and dogs. Our second case study examines the effect of the release of industrial wastewater in a community through companion animal surveillance.
链接动物-人类健康可视化分析
协调的动物-人类健康监测可以为自然发生的疾病暴发以及生物、化学和环境事件提供一个更少误报的早期预警系统。这种监测需要对多领域、多尺度和多源数据集进行集成和分析。为了更好地理解这些数据集,必须分析不同分辨率下的模型和测量结果。为了方便这些调查,我们创建了一个应用程序,为分析人类急诊室数据和兽医医院数据提供可视化分析框架。我们的集成可视化分析工具将动物和人类患者健康信息的时间变化的地理空间可视化与这些多源数据的高级统计分析联系起来。各种统计分析技术已与时空观察窗口一起应用。这样的应用程序为研究人员提供了在统计模型视图和时空视图中可视化搜索集群数据的能力。我们的接口提供了一个因素规范/过滤组件,允许探索因果因素和传播模式。在本文中,我们将讨论我们的动物-人类视觉分析(LAHVA)工具在两个具体案例研究中的应用。第一个案例研究是季节性流感的影响及其与不同伴侣动物(如猫、狗)综合症的相关性。在这里,我们使用来自印第安纳州患者护理网络(INPC)和班菲尔德宠物医院的数据,试图确定代表人类季节性流感发病的呼吸综合征与猫和狗的一般呼吸综合征之间是否存在相关性。我们的第二个案例研究考察了通过伴侣动物监测释放工业废水对社区的影响。
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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