Symptom clusters in Covid19: A potential clinical prediction tool from the COVID Symptom study app
preprint
OA: gold
CC-BY-ND-4.0
Abstract
As no one symptom can predict disease severity or the need for dedicated medical support in COVID-19, we asked if documenting symptom time series over the first few days informs outcome. Unsupervised time series clustering over symptom presentation was performed on data collected from a training dataset of completed cases enlisted early from the COVID Symptom Study Smartphone application, yielding six distinct symptom presentations. Clustering was validated on an independent replication dataset between May 1-May 28 th , 2020. Using the first 5 days of symptom logging, the ROC-AUC of need for respiratory support was 78.8%, substantially outperforming personal characteristics alone (ROC-AUC 69.5%). Such an approach could be used to monitor at-risk patients and predict medical resource requirements days before they are required. One sentence summary Longitudinal clustering of symptoms can predict the need for respiratory support in severe COVID-19.
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License: CC-BY-ND-4.0