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Unsupervised machine learning to investigate trajectory patterns of COVID-19 symptoms and physical activity measured via the MyHeart Counts App and smart devices
by
Wild, Jim M
, Ashley, Euan A
, Cole, Joby
, Javed, Ali
, Brook, Martin
, Wang, Dennis
, Errington, Niamh
, Alhathli, Elham
, Rajab, Mohammed D
, Kariotis, Sokratis
, Jammeh, Emmanuel
, de Silva, Thushan
, Hershman, Steven
, Thompson, A. A. Roger
, Collini, Paul
, Meardon, Naomi
, Gupta, Varsha
, Lawrie, Allan
in
COVID-19
/ Exercise
/ Health behavior
/ Machine learning
/ Recovery (Medical)
/ Sedentary behavior
/ Sensors
/ Smart devices
/ Smartphones
2023
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Unsupervised machine learning to investigate trajectory patterns of COVID-19 symptoms and physical activity measured via the MyHeart Counts App and smart devices
by
Wild, Jim M
, Ashley, Euan A
, Cole, Joby
, Javed, Ali
, Brook, Martin
, Wang, Dennis
, Errington, Niamh
, Alhathli, Elham
, Rajab, Mohammed D
, Kariotis, Sokratis
, Jammeh, Emmanuel
, de Silva, Thushan
, Hershman, Steven
, Thompson, A. A. Roger
, Collini, Paul
, Meardon, Naomi
, Gupta, Varsha
, Lawrie, Allan
in
COVID-19
/ Exercise
/ Health behavior
/ Machine learning
/ Recovery (Medical)
/ Sedentary behavior
/ Sensors
/ Smart devices
/ Smartphones
2023
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Unsupervised machine learning to investigate trajectory patterns of COVID-19 symptoms and physical activity measured via the MyHeart Counts App and smart devices
by
Wild, Jim M
, Ashley, Euan A
, Cole, Joby
, Javed, Ali
, Brook, Martin
, Wang, Dennis
, Errington, Niamh
, Alhathli, Elham
, Rajab, Mohammed D
, Kariotis, Sokratis
, Jammeh, Emmanuel
, de Silva, Thushan
, Hershman, Steven
, Thompson, A. A. Roger
, Collini, Paul
, Meardon, Naomi
, Gupta, Varsha
, Lawrie, Allan
in
COVID-19
/ Exercise
/ Health behavior
/ Machine learning
/ Recovery (Medical)
/ Sedentary behavior
/ Sensors
/ Smart devices
/ Smartphones
2023
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Unsupervised machine learning to investigate trajectory patterns of COVID-19 symptoms and physical activity measured via the MyHeart Counts App and smart devices
Journal Article
Unsupervised machine learning to investigate trajectory patterns of COVID-19 symptoms and physical activity measured via the MyHeart Counts App and smart devices
2023
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Overview
Previous studies have associated COVID-19 symptoms severity with levels of physical activity. We therefore investigated longitudinal trajectories of COVID-19 symptoms in a cohort of healthcare workers (HCWs) with non-hospitalised COVID-19 and their real-world physical activity. 121 HCWs with a history of COVID-19 infection who had symptoms monitored through at least two research clinic visits, and via smartphone were examined. HCWs with a compatible smartphone were provided with an Apple Watch Series 4 and were asked to install the MyHeart Counts Study App to collect COVID-19 symptom data and multiple physical activity parameters. Unsupervised classification analysis of symptoms identified two trajectory patterns of long and short symptom duration. The prevalence for longitudinal persistence of any COVID-19 symptom was 36% with fatigue and loss of smell being the two most prevalent individual symptom trajectories (24.8% and 21.5%, respectively). 8 physical activity features obtained via the MyHeart Counts App identified two groups of trajectories for high and low activity. Of these 8 parameters only ‘distance moved walking or running’ was associated with COVID-19 symptom trajectories. We report a high prevalence of long-term symptoms of COVID-19 in a non-hospitalised cohort of HCWs, a method to identify physical activity trends, and investigate their association. These data highlight the importance of tracking symptoms from onset to recovery even in non-hospitalised COVID-19 individuals. The increasing ease in collecting real-world physical activity data non-invasively from wearable devices provides opportunity to investigate the association of physical activity to symptoms of COVID-19 and other cardio-respiratory diseases.
Publisher
Nature Publishing Group
Subject
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