Assessing a novel way to measure step count while walking using a custom mobile phone application.

INTRODUCTION:Walking speed has been associated with many clinical outcomes (e.g., frailty, mortality, joint replacement need, etc.). Accurately measuring walking speed (stride length x step count/time) typically requires significant clinician/staff time or a gait lab with specialized equipment (i.e....

Full description

Bibliographic Details
Main Authors: Christopher P Hurt, Donald H Lein, Christian R Smith, Jeffrey R Curtis, Andrew O Westfall, Jonathan Cortis, Clayton Rice, James H Willig
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC6219786?pdf=render
_version_ 1818310207414992896
author Christopher P Hurt
Donald H Lein
Christian R Smith
Jeffrey R Curtis
Andrew O Westfall
Jonathan Cortis
Clayton Rice
James H Willig
author_facet Christopher P Hurt
Donald H Lein
Christian R Smith
Jeffrey R Curtis
Andrew O Westfall
Jonathan Cortis
Clayton Rice
James H Willig
author_sort Christopher P Hurt
collection DOAJ
description INTRODUCTION:Walking speed has been associated with many clinical outcomes (e.g., frailty, mortality, joint replacement need, etc.). Accurately measuring walking speed (stride length x step count/time) typically requires significant clinician/staff time or a gait lab with specialized equipment (i.e., electronic timers or motion capture). In the present study, our goal was to measure "step count" via smartphones through novel software and to compare with step tracking software that come standard with iOS and Android smartphones as a first step in walking speed measurement. METHODS:A separate calibration and validation data collection was performed. Individuals in the calibration collection (n = 5) walked 20m at normal and slow speed (<1.0 m/s). Appropriate settings for the novel mobile application were chosen to measure step count. Individuals in the validation (n = 52) collection walked at 6m, 10m, and 20m at normal and slow walking speeds. We compared step difference (absolute difference) from observed step counts to native step tracking software and our novel software derived step counts. We used generalized estimated equation adjusted (participant level) negative binomial regression models of absolute step difference from observed step counts, to determine optimal settings (calibration) and subsequently to gauge performance of the shake algorithm settings and native step tracking software across different distances and speeds (validation). RESULTS:For iOS/iPhone 6, when compared to observed step count, the shake service (software driven approach) significantly outperformed the embedded native step tracking software across all distances at slow speed, and for short distance (6m) at normal speed. On the Android phone, the shake service outperformed the native step tracking software at slow speed at 6 meters and 20 meters, while its performance eclipsed the native step tracking software only at 20 meters at normal speed. DISCUSSION:Our software based approach outperformed native step tracking software across various speeds and distances and carries the advantage of having adjustable measurement parameters that can be further optimized for specific medical conditions. Such software applications will provide an effective way to capture standardized data across multiple commercial smartphone devices, facilitating the future capture of walking speed and other clinically important performance parameters that will influence clinical and home care in the era of value based care.
first_indexed 2024-12-13T07:42:24Z
format Article
id doaj.art-cbf6a8ff528e4699a7055b19ee8f38d5
institution Directory Open Access Journal
issn 1932-6203
language English
last_indexed 2024-12-13T07:42:24Z
publishDate 2018-01-01
publisher Public Library of Science (PLoS)
record_format Article
series PLoS ONE
spelling doaj.art-cbf6a8ff528e4699a7055b19ee8f38d52022-12-21T23:54:56ZengPublic Library of Science (PLoS)PLoS ONE1932-62032018-01-011311e020682810.1371/journal.pone.0206828Assessing a novel way to measure step count while walking using a custom mobile phone application.Christopher P HurtDonald H LeinChristian R SmithJeffrey R CurtisAndrew O WestfallJonathan CortisClayton RiceJames H WilligINTRODUCTION:Walking speed has been associated with many clinical outcomes (e.g., frailty, mortality, joint replacement need, etc.). Accurately measuring walking speed (stride length x step count/time) typically requires significant clinician/staff time or a gait lab with specialized equipment (i.e., electronic timers or motion capture). In the present study, our goal was to measure "step count" via smartphones through novel software and to compare with step tracking software that come standard with iOS and Android smartphones as a first step in walking speed measurement. METHODS:A separate calibration and validation data collection was performed. Individuals in the calibration collection (n = 5) walked 20m at normal and slow speed (<1.0 m/s). Appropriate settings for the novel mobile application were chosen to measure step count. Individuals in the validation (n = 52) collection walked at 6m, 10m, and 20m at normal and slow walking speeds. We compared step difference (absolute difference) from observed step counts to native step tracking software and our novel software derived step counts. We used generalized estimated equation adjusted (participant level) negative binomial regression models of absolute step difference from observed step counts, to determine optimal settings (calibration) and subsequently to gauge performance of the shake algorithm settings and native step tracking software across different distances and speeds (validation). RESULTS:For iOS/iPhone 6, when compared to observed step count, the shake service (software driven approach) significantly outperformed the embedded native step tracking software across all distances at slow speed, and for short distance (6m) at normal speed. On the Android phone, the shake service outperformed the native step tracking software at slow speed at 6 meters and 20 meters, while its performance eclipsed the native step tracking software only at 20 meters at normal speed. DISCUSSION:Our software based approach outperformed native step tracking software across various speeds and distances and carries the advantage of having adjustable measurement parameters that can be further optimized for specific medical conditions. Such software applications will provide an effective way to capture standardized data across multiple commercial smartphone devices, facilitating the future capture of walking speed and other clinically important performance parameters that will influence clinical and home care in the era of value based care.http://europepmc.org/articles/PMC6219786?pdf=render
spellingShingle Christopher P Hurt
Donald H Lein
Christian R Smith
Jeffrey R Curtis
Andrew O Westfall
Jonathan Cortis
Clayton Rice
James H Willig
Assessing a novel way to measure step count while walking using a custom mobile phone application.
PLoS ONE
title Assessing a novel way to measure step count while walking using a custom mobile phone application.
title_full Assessing a novel way to measure step count while walking using a custom mobile phone application.
title_fullStr Assessing a novel way to measure step count while walking using a custom mobile phone application.
title_full_unstemmed Assessing a novel way to measure step count while walking using a custom mobile phone application.
title_short Assessing a novel way to measure step count while walking using a custom mobile phone application.
title_sort assessing a novel way to measure step count while walking using a custom mobile phone application
url http://europepmc.org/articles/PMC6219786?pdf=render
work_keys_str_mv AT christopherphurt assessinganovelwaytomeasurestepcountwhilewalkingusingacustommobilephoneapplication
AT donaldhlein assessinganovelwaytomeasurestepcountwhilewalkingusingacustommobilephoneapplication
AT christianrsmith assessinganovelwaytomeasurestepcountwhilewalkingusingacustommobilephoneapplication
AT jeffreyrcurtis assessinganovelwaytomeasurestepcountwhilewalkingusingacustommobilephoneapplication
AT andrewowestfall assessinganovelwaytomeasurestepcountwhilewalkingusingacustommobilephoneapplication
AT jonathancortis assessinganovelwaytomeasurestepcountwhilewalkingusingacustommobilephoneapplication
AT claytonrice assessinganovelwaytomeasurestepcountwhilewalkingusingacustommobilephoneapplication
AT jameshwillig assessinganovelwaytomeasurestepcountwhilewalkingusingacustommobilephoneapplication