COVID-19 geoviz for spatio-temporal structures detection

Jacques Gautier, M. Lobo, B. Fau, Armand Drugeon, S. Christophe, G. Touya
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Abstract

Abstract. The spread of COVID-19 has motivated a wide interest in visualization tools to represent the pandemic’s spatio-temporal evolution. This tools usually rely on dashboard environments which depict COVID-19 data as temporal series related to different indicators (number of cases, deaths) calculated for several spatial entities at different scales (countries or regions). In these tools, diagrams (line charts or histograms) display the temporal component of data, and 2D cartographic representations display the spatial distribution of data at one moment in time. In this paper, we aim at proposing novel visualization designs in order to help medical experts to detect spatio-temporal structures such as clusters of cases and spatial axes of propagation of the epidemic, through a visual analysis of detailed COVID-19 event data. In this context, we investigate and revisit two visualizations, one based on the Growth Ring Map technique and the other based on the space-time cube applied on a spatial hexagonal grid. We assess the potential of these visualizations for the visual analysis of COVID-19 event data, through two proofs of concept using synthetic cases data and web-based prototypes. The Grow Ring Map visualization appears to facilitate the identification of clusters and propagation axes in the cases distribution, while the space-time cube appears to be suited for the identification of local temporal trends.
COVID-19 geoviz用于时空结构检测
摘要COVID-19的传播激发了人们对可视化工具的广泛兴趣,以代表大流行的时空演变。这些工具通常依赖于仪表板环境,这些仪表板环境将COVID-19数据描述为与不同指标(病例数、死亡人数)相关的时间序列,这些指标是为不同规模(国家或区域)的几个空间实体计算的。在这些工具中,图表(折线图或直方图)显示数据的时间成分,2D地图表示显示数据在某个时刻的空间分布。本文旨在通过对COVID-19详细事件数据的可视化分析,提出新颖的可视化设计,帮助医学专家发现疫情聚集、传播空间轴等时空结构。在此背景下,我们研究并重新审视了两种可视化方法,一种是基于生长环图技术,另一种是基于空间六边形网格上的时空立方体。我们通过使用综合病例数据和基于网络的原型进行两次概念验证,评估了这些可视化技术在COVID-19事件数据可视化分析方面的潜力。生长环图可视化有助于识别病例分布中的集群和传播轴,而时空立方体则适合于识别局部时间趋势。
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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