Segmenting accelerometer data from daily life with unsupervised machine learning.

<h4>Purpose</h4>Accelerometers are increasingly used to obtain valuable descriptors of physical activity for health research. The cut-points approach to segment accelerometer data is widely used in physical activity research but requires resource expensive calibration studies and does no...

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Main Authors: Dafne van Kuppevelt, Joe Heywood, Mark Hamer, Séverine Sabia, Emla Fitzsimons, Vincent van Hees
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0208692
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spelling doaj-678df587ea114bd4a12e5bdccf291d7b2021-03-04T12:39:10ZengPublic Library of Science (PLoS)PLoS ONE1932-62032019-01-01141e020869210.1371/journal.pone.0208692Segmenting accelerometer data from daily life with unsupervised machine learning.Dafne van KuppeveltJoe HeywoodMark HamerSéverine SabiaEmla FitzsimonsVincent van Hees<h4>Purpose</h4>Accelerometers are increasingly used to obtain valuable descriptors of physical activity for health research. The cut-points approach to segment accelerometer data is widely used in physical activity research but requires resource expensive calibration studies and does not make it easy to explore the information that can be gained for a variety of raw data metrics. To address these limitations, we present a data-driven approach for segmenting and clustering the accelerometer data using unsupervised machine learning.<h4>Methods</h4>The data used came from five hundred fourteen-year-old participants from the Millennium cohort study who wore an accelerometer (GENEActiv) on their wrist on one weekday and one weekend day. A Hidden Semi-Markov Model (HSMM), configured to identify a maximum of ten behavioral states from five second averaged acceleration with and without addition of x, y, and z-angles, was used for segmenting and clustering of the data. A cut-points approach was used as comparison.<h4>Results</h4>Time spent in behavioral states with or without angle metrics constituted eight and five principal components to reach 95% explained variance, respectively; in comparison four components were identified with the cut-points approach. In the HSMM with acceleration and angle as input, the distributions for acceleration in the states showed similar groupings as the cut-points categories, while more variety was seen in the distribution of angles.<h4>Conclusion</h4>Our unsupervised classification approach learns a construct of human behavior based on the data it observes, without the need for resource expensive calibration studies, has the ability to combine multiple data metrics, and offers a higher dimensional description of physical behavior. States are interpretable from the distributions of observations and by their duration.https://doi.org/10.1371/journal.pone.0208692
collection DOAJ
language English
format Article
sources DOAJ
author Dafne van Kuppevelt
Joe Heywood
Mark Hamer
Séverine Sabia
Emla Fitzsimons
Vincent van Hees
spellingShingle Dafne van Kuppevelt
Joe Heywood
Mark Hamer
Séverine Sabia
Emla Fitzsimons
Vincent van Hees
Segmenting accelerometer data from daily life with unsupervised machine learning.
PLoS ONE
author_facet Dafne van Kuppevelt
Joe Heywood
Mark Hamer
Séverine Sabia
Emla Fitzsimons
Vincent van Hees
author_sort Dafne van Kuppevelt
title Segmenting accelerometer data from daily life with unsupervised machine learning.
title_short Segmenting accelerometer data from daily life with unsupervised machine learning.
title_full Segmenting accelerometer data from daily life with unsupervised machine learning.
title_fullStr Segmenting accelerometer data from daily life with unsupervised machine learning.
title_full_unstemmed Segmenting accelerometer data from daily life with unsupervised machine learning.
title_sort segmenting accelerometer data from daily life with unsupervised machine learning.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2019-01-01
description <h4>Purpose</h4>Accelerometers are increasingly used to obtain valuable descriptors of physical activity for health research. The cut-points approach to segment accelerometer data is widely used in physical activity research but requires resource expensive calibration studies and does not make it easy to explore the information that can be gained for a variety of raw data metrics. To address these limitations, we present a data-driven approach for segmenting and clustering the accelerometer data using unsupervised machine learning.<h4>Methods</h4>The data used came from five hundred fourteen-year-old participants from the Millennium cohort study who wore an accelerometer (GENEActiv) on their wrist on one weekday and one weekend day. A Hidden Semi-Markov Model (HSMM), configured to identify a maximum of ten behavioral states from five second averaged acceleration with and without addition of x, y, and z-angles, was used for segmenting and clustering of the data. A cut-points approach was used as comparison.<h4>Results</h4>Time spent in behavioral states with or without angle metrics constituted eight and five principal components to reach 95% explained variance, respectively; in comparison four components were identified with the cut-points approach. In the HSMM with acceleration and angle as input, the distributions for acceleration in the states showed similar groupings as the cut-points categories, while more variety was seen in the distribution of angles.<h4>Conclusion</h4>Our unsupervised classification approach learns a construct of human behavior based on the data it observes, without the need for resource expensive calibration studies, has the ability to combine multiple data metrics, and offers a higher dimensional description of physical behavior. States are interpretable from the distributions of observations and by their duration.
url https://doi.org/10.1371/journal.pone.0208692
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