Visualizing multilayer spatiotemporal epidemiological data with animated geocircles

Author:

Ondov Brian1ORCID,Patel Harsh B2,Kuo Ai-Te3,Kastner John4,Han Yunheng5,Wei Hong6,Elmqvist Niklas7,Samet Hanan5

Affiliation:

1. Department of Biomedical Informatics & Data Science, Yale School of Medicine , New Haven, CT 06510, United States

2. T. Rowe Price , Baltimore, MD 21202, United States

3. Department of Computer Science, Auburn University , Auburn, AL 36849, United States

4. Amazon Web Services, Amazon, Inc , Seattle, WA 98109, United States

5. Department of Computer Science, University of Maryland , College Park, MD 20742, United States

6. Meta Research, Meta Platforms, Inc. , Menlo Park, CA 94025, United States

7. Department of Computer Science, Aarhus Universitet , 8200 Aarhus, Denmark

Abstract

Abstract Objective The COVID-19 pandemic emphasized the value of geospatial visual analytics for both epidemiologists and the general public. However, systems struggled to encode temporal and geospatial trends of multiple, potentially interacting variables, such as active cases, deaths, and vaccinations. We sought to ask (1) how epidemiologists interact with visual analytics tools, (2) how multiple, time-varying, geospatial variables can be conveyed in a unified view, and (3) how complex spatiotemporal encodings affect utility for both experts and non-experts. Materials and Methods We propose encoding variables with animated, concentric, hollow circles, allowing multiple variables via color encoding and avoiding occlusion problems, and we implement this method in a browser-based tool called CoronaViz. We conduct task-based evaluations with non-experts, as well as in-depth interviews and observational sessions with epidemiologists, covering a range of tools and encodings. Results Sessions with epidemiologists confirmed the importance of multivariate, spatiotemporal queries and the utility of CoronaViz for answering them, while providing direction for future development. Non-experts tasked with performing spatiotemporal queries unanimously preferred animation to multi-view dashboards. Discussion We find that conveying complex, multivariate data necessarily involves trade-offs. Yet, our studies suggest the importance of complementary visualization strategies, with our animated multivariate spatiotemporal encoding filling important needs for exploration and presentation. Conclusion CoronaViz’s unique ability to convey multiple, time-varying, geospatial variables makes it both a valuable addition to interactive COVID-19 dashboards and a platform for empowering experts and the public during future disease outbreaks. CoronaViz is open-source and a live instance is freely hosted at http://coronaviz.umiacs.io.

Funder

US National Science Foundation

Publisher

Oxford University Press (OUP)

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