ESID: Exploring the Design and Development of a Visual Analytics Tool for Epidemiological Emergencies
April 10, 2023 Β· Declared Dead Β· π 2023 IEEE VIS Workshop on Visualization for Pandemic and Emergency Responses (Vis4PandEmRes)
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Authors
Pawandeep Kaur Betz, Julien Stoll, Valerie Grappendorf, Jonas Gilg, Moritz Zeumer, Margrit Klitz, Luca Spataro, Anna Klein, Lena RothenhΓ€usler, Hartmut Bohnacker, Hans KrΓ€mer, Michael Meyer-Hermann, Sybille Somogyi, Andreas Gerndt, Martin J. KΓΌhn
arXiv ID
2304.04635
Category
cs.HC: Human-Computer Interaction
Citations
5
Venue
2023 IEEE VIS Workshop on Visualization for Pandemic and Emergency Responses (Vis4PandEmRes)
Last Checked
4 months ago
Abstract
Visual analytics tools can help illustrate the spread of infectious diseases and enable informed decisions on epidemiological and public health issues. To create visualisation tools that are intuitive, easy to use, and effective in communicating information, continued research and development focusing on user-centric and methodological design models is extremely important. As a contribution to this topic, this paper presents the design and development process of the visual analytics application ESID (Epidemiological Scenarios for Infectious Diseases). ESID is a visual analytics tool aimed at projecting the future developments of infectious disease spread using reported and simulated data based on sound mathematical-epidemiological models. The development process involved a collaborative and participatory design approach with project partners from diverse scientific fields. The findings from these studies, along with the guidelines derived from them, played a pivotal role in shaping the visualisation tool.
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