Quantile Coarsening Analysis of High-Volume Wearable Activity Data in a Longitudinal Observational Study

Owing to advances in sensor technologies on wearable devices, it is feasible to measure physical activity of an individual continuously over a long period. These devices afford opportunities to understand individual behaviors, which may then provide a basis for tailored behavior interventions. The l...

Full description

Bibliographic Details
Main Authors: Ying Kuen Cheung, Pei-Yun Sabrina Hsueh, Ipek Ensari, Joshua Z. Willey, Keith M. Diaz
Format: Article
Language:English
Published: MDPI AG 2018-09-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/18/9/3056
id doaj-31a556ef752f40aa9a5ba415e9dc9ae3
record_format Article
spelling doaj-31a556ef752f40aa9a5ba415e9dc9ae32020-11-25T00:40:59ZengMDPI AGSensors1424-82202018-09-01189305610.3390/s18093056s18093056Quantile Coarsening Analysis of High-Volume Wearable Activity Data in a Longitudinal Observational StudyYing Kuen Cheung0Pei-Yun Sabrina Hsueh1Ipek Ensari2Joshua Z. Willey3Keith M. Diaz4Department of Biostatistics, Mailman School of Public Health, Columbia University, New York, NY 10032, USAIBM Watson Research Center, Yorktown Heights, NY 10598, USACenter for Behavioral Cardiovascular Health, Department of Medicine, Columbia University Medical Center, New York, NY 10032, USADepartment of Neurology, Columbia University Medical Center, New York, NY 10032, USACenter for Behavioral Cardiovascular Health, Department of Medicine, Columbia University Medical Center, New York, NY 10032, USAOwing to advances in sensor technologies on wearable devices, it is feasible to measure physical activity of an individual continuously over a long period. These devices afford opportunities to understand individual behaviors, which may then provide a basis for tailored behavior interventions. The large volume of data however poses challenges in data management and analysis. We propose a novel quantile coarsening analysis (QCA) of daily physical activity data, with a goal to reduce the volume of data while preserving key information. We applied QCA to a longitudinal study of 79 healthy participants whose step counts were monitored for up to 1 year by a Fitbit device, performed cluster analysis of daily activity, and identified individual activity signature or pattern in terms of the clusters identified. Using 21,393 time series of daily physical activity, we identified eight clusters. Employment and partner status were each associated with 5 of the 8 clusters. Using less than 2% of the original data, QCA provides accurate approximation of the mean physical activity, forms meaningful activity patterns associated with individual characteristics, and is a versatile tool for dimension reduction of densely sampled data.http://www.mdpi.com/1424-8220/18/9/3056citizen sciencecluster analysisphysical activitysedentary behaviorwalking
collection DOAJ
language English
format Article
sources DOAJ
author Ying Kuen Cheung
Pei-Yun Sabrina Hsueh
Ipek Ensari
Joshua Z. Willey
Keith M. Diaz
spellingShingle Ying Kuen Cheung
Pei-Yun Sabrina Hsueh
Ipek Ensari
Joshua Z. Willey
Keith M. Diaz
Quantile Coarsening Analysis of High-Volume Wearable Activity Data in a Longitudinal Observational Study
Sensors
citizen science
cluster analysis
physical activity
sedentary behavior
walking
author_facet Ying Kuen Cheung
Pei-Yun Sabrina Hsueh
Ipek Ensari
Joshua Z. Willey
Keith M. Diaz
author_sort Ying Kuen Cheung
title Quantile Coarsening Analysis of High-Volume Wearable Activity Data in a Longitudinal Observational Study
title_short Quantile Coarsening Analysis of High-Volume Wearable Activity Data in a Longitudinal Observational Study
title_full Quantile Coarsening Analysis of High-Volume Wearable Activity Data in a Longitudinal Observational Study
title_fullStr Quantile Coarsening Analysis of High-Volume Wearable Activity Data in a Longitudinal Observational Study
title_full_unstemmed Quantile Coarsening Analysis of High-Volume Wearable Activity Data in a Longitudinal Observational Study
title_sort quantile coarsening analysis of high-volume wearable activity data in a longitudinal observational study
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2018-09-01
description Owing to advances in sensor technologies on wearable devices, it is feasible to measure physical activity of an individual continuously over a long period. These devices afford opportunities to understand individual behaviors, which may then provide a basis for tailored behavior interventions. The large volume of data however poses challenges in data management and analysis. We propose a novel quantile coarsening analysis (QCA) of daily physical activity data, with a goal to reduce the volume of data while preserving key information. We applied QCA to a longitudinal study of 79 healthy participants whose step counts were monitored for up to 1 year by a Fitbit device, performed cluster analysis of daily activity, and identified individual activity signature or pattern in terms of the clusters identified. Using 21,393 time series of daily physical activity, we identified eight clusters. Employment and partner status were each associated with 5 of the 8 clusters. Using less than 2% of the original data, QCA provides accurate approximation of the mean physical activity, forms meaningful activity patterns associated with individual characteristics, and is a versatile tool for dimension reduction of densely sampled data.
topic citizen science
cluster analysis
physical activity
sedentary behavior
walking
url http://www.mdpi.com/1424-8220/18/9/3056
work_keys_str_mv AT yingkuencheung quantilecoarseninganalysisofhighvolumewearableactivitydatainalongitudinalobservationalstudy
AT peiyunsabrinahsueh quantilecoarseninganalysisofhighvolumewearableactivitydatainalongitudinalobservationalstudy
AT ipekensari quantilecoarseninganalysisofhighvolumewearableactivitydatainalongitudinalobservationalstudy
AT joshuazwilley quantilecoarseninganalysisofhighvolumewearableactivitydatainalongitudinalobservationalstudy
AT keithmdiaz quantilecoarseninganalysisofhighvolumewearableactivitydatainalongitudinalobservationalstudy
_version_ 1725287788238077952