Outlier detection of vital sign trajectories from COVID-19 patients
- URL: http://arxiv.org/abs/2207.07572v2
- Date: Thu, 20 Apr 2023 12:41:58 GMT
- Title: Outlier detection of vital sign trajectories from COVID-19 patients
- Authors: Sara Summerton, Ann Tivey, Rohan Shotton, Gavin Brown, Oliver C.
Redfern, Rachel Oakley, John Radford, and David C. Wong
- Abstract summary: We introduce a dynamic time warp distance-based measure to compare time series trajectories.
We show in synthetically generated data that this method can identify abnormal epochs and cluster epochs with similar trajectories.
We show how outlier epochs correspond well with the abnormal vital signs and identify patients who were subsequently readmitted to hospital.
- Score: 0.196743816844807
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: In this work, we present a novel trajectory comparison algorithm to identify
abnormal vital sign trends, with the aim of improving recognition of
deteriorating health.
There is growing interest in continuous wearable vital sign sensors for
monitoring patients remotely at home. These monitors are usually coupled to an
alerting system, which is triggered when vital sign measurements fall outside a
predefined normal range. Trends in vital signs, such as increasing heart rate,
are often indicative of deteriorating health, but are rarely incorporated into
alerting systems.
We introduce a dynamic time warp distance-based measure to compare time
series trajectories. We split each multi-variable sign time series into 180
minute, non-overlapping epochs. We then calculate the distance between all
pairs of epochs. Each epoch is characterized by its mean pairwise distance
(average link distance) to all other epochs, with clusters forming with nearby
epochs.
We demonstrate in synthetically generated data that this method can identify
abnormal epochs and cluster epochs with similar trajectories. We then apply
this method to a real-world data set of vital signs from 8 patients who had
recently been discharged from hospital after contracting COVID-19. We show how
outlier epochs correspond well with the abnormal vital signs and identify
patients who were subsequently readmitted to hospital.
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