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arxiv 2108.11476 v1 pith:V5A4IQOS submitted 2021-08-25 cs.HC

Enabling Longitudinal Exploratory Analysis of Clinical COVID Data

classification cs.HC
keywords dataanalysisclinicallongitudinalvisualanalyticscovid-19exploratory
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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As the COVID-19 pandemic continues to impact the world, data is being gathered and analyzed to better understand the disease. Recognizing the potential for visual analytics technologies to support exploratory analysis and hypothesis generation from longitudinal clinical data, a team of collaborators worked to apply existing event sequence visual analytics technologies to a longitudinal clinical data from a cohort of 998 patients with high rates of COVID-19 infection. This paper describes the initial steps toward this goal, including: (1) the data transformation and processing work required to prepare the data for visual analysis, (2) initial findings and observations, and (3) qualitative feedback and lessons learned which highlight key features as well as limitations to address in future work.

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