Cargando…
The CNN Hip Accelerometer Posture (CHAP) Method for Classifying Sitting Patterns from Hip Accelerometers: A Validation Study
INTRODUCTION: Sitting patterns predict several healthy aging outcomes. These patterns can potentially be measured using hip-worn accelerometers, but current methods are limited by an inability to detect postural transitions. To overcome these limitations, we developed the Convolutional Neural Networ...
Autores principales: | , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Lippincott Williams & Wilkins
2021
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8516667/ https://www.ncbi.nlm.nih.gov/pubmed/34033622 http://dx.doi.org/10.1249/MSS.0000000000002705 |
_version_ | 1784583855263449088 |
---|---|
author | GREENWOOD-HICKMAN, MIKAEL ANNE NAKANDALA, SUPUN JANKOWSKA, MARTA M. ROSENBERG, DORI E. TUZ-ZAHRA, FATIMA BELLETTIERE, JOHN CARLSON, JORDAN HIBBING, PAUL R. ZOU, JINGJING LACROIX, ANDREA Z. KUMAR, ARUN NATARAJAN, LOKI |
author_facet | GREENWOOD-HICKMAN, MIKAEL ANNE NAKANDALA, SUPUN JANKOWSKA, MARTA M. ROSENBERG, DORI E. TUZ-ZAHRA, FATIMA BELLETTIERE, JOHN CARLSON, JORDAN HIBBING, PAUL R. ZOU, JINGJING LACROIX, ANDREA Z. KUMAR, ARUN NATARAJAN, LOKI |
author_sort | GREENWOOD-HICKMAN, MIKAEL ANNE |
collection | PubMed |
description | INTRODUCTION: Sitting patterns predict several healthy aging outcomes. These patterns can potentially be measured using hip-worn accelerometers, but current methods are limited by an inability to detect postural transitions. To overcome these limitations, we developed the Convolutional Neural Network Hip Accelerometer Posture (CHAP) classification method. METHODS: CHAP was developed on 709 older adults who wore an ActiGraph GT3X+ accelerometer on the hip, with ground-truth sit/stand labels derived from concurrently worn thigh-worn activPAL inclinometers for up to 7 d. The CHAP method was compared with traditional cut-point methods of sitting pattern classification as well as a previous machine-learned algorithm (two-level behavior classification). RESULTS: For minute-level sitting versus nonsitting classification, CHAP performed better (93% agreement with activPAL) than did other methods (74%–83% agreement). CHAP also outperformed other methods in its sensitivity to detecting sit-to-stand transitions: cut-point (73%), TLBC (26%), and CHAP (83%). CHAP’s positive predictive value of capturing sit-to-stand transitions was also superior to other methods: cut-point (30%), TLBC (71%), and CHAP (83%). Day-level sitting pattern metrics, such as mean sitting bout duration, derived from CHAP did not differ significantly from activPAL, whereas other methods did: activPAL (15.4 min of mean sitting bout duration), CHAP (15.7 min), cut-point (9.4 min), and TLBC (49.4 min). CONCLUSION: CHAP was the most accurate method for classifying sit-to-stand transitions and sitting patterns from free-living hip-worn accelerometer data in older adults. This promotes enhanced analysis of older adult movement data, resulting in more accurate measures of sitting patterns and opening the door for large-scale cohort studies into the effects of sitting patterns on healthy aging outcomes. |
format | Online Article Text |
id | pubmed-8516667 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2021 |
publisher | Lippincott Williams & Wilkins |
record_format | MEDLINE/PubMed |
spelling | pubmed-85166672021-10-27 The CNN Hip Accelerometer Posture (CHAP) Method for Classifying Sitting Patterns from Hip Accelerometers: A Validation Study GREENWOOD-HICKMAN, MIKAEL ANNE NAKANDALA, SUPUN JANKOWSKA, MARTA M. ROSENBERG, DORI E. TUZ-ZAHRA, FATIMA BELLETTIERE, JOHN CARLSON, JORDAN HIBBING, PAUL R. ZOU, JINGJING LACROIX, ANDREA Z. KUMAR, ARUN NATARAJAN, LOKI Med Sci Sports Exerc SPECIAL COMMUNICATIONS: Methodological Advances INTRODUCTION: Sitting patterns predict several healthy aging outcomes. These patterns can potentially be measured using hip-worn accelerometers, but current methods are limited by an inability to detect postural transitions. To overcome these limitations, we developed the Convolutional Neural Network Hip Accelerometer Posture (CHAP) classification method. METHODS: CHAP was developed on 709 older adults who wore an ActiGraph GT3X+ accelerometer on the hip, with ground-truth sit/stand labels derived from concurrently worn thigh-worn activPAL inclinometers for up to 7 d. The CHAP method was compared with traditional cut-point methods of sitting pattern classification as well as a previous machine-learned algorithm (two-level behavior classification). RESULTS: For minute-level sitting versus nonsitting classification, CHAP performed better (93% agreement with activPAL) than did other methods (74%–83% agreement). CHAP also outperformed other methods in its sensitivity to detecting sit-to-stand transitions: cut-point (73%), TLBC (26%), and CHAP (83%). CHAP’s positive predictive value of capturing sit-to-stand transitions was also superior to other methods: cut-point (30%), TLBC (71%), and CHAP (83%). Day-level sitting pattern metrics, such as mean sitting bout duration, derived from CHAP did not differ significantly from activPAL, whereas other methods did: activPAL (15.4 min of mean sitting bout duration), CHAP (15.7 min), cut-point (9.4 min), and TLBC (49.4 min). CONCLUSION: CHAP was the most accurate method for classifying sit-to-stand transitions and sitting patterns from free-living hip-worn accelerometer data in older adults. This promotes enhanced analysis of older adult movement data, resulting in more accurate measures of sitting patterns and opening the door for large-scale cohort studies into the effects of sitting patterns on healthy aging outcomes. Lippincott Williams & Wilkins 2021-11 2021-05-25 /pmc/articles/PMC8516667/ /pubmed/34033622 http://dx.doi.org/10.1249/MSS.0000000000002705 Text en Copyright © 2021 The Author(s). Published by Wolters Kluwer Health, Inc. on behalf of the American College of Sports Medicine. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution-Non Commercial-No Derivatives License 4.0 (CCBY-NC-ND) (https://creativecommons.org/licenses/by-nc-nd/4.0/) , where it is permissible to download and share the work provided it is properly cited. The work cannot be changed in any way or used commercially without permission from the journal. |
spellingShingle | SPECIAL COMMUNICATIONS: Methodological Advances GREENWOOD-HICKMAN, MIKAEL ANNE NAKANDALA, SUPUN JANKOWSKA, MARTA M. ROSENBERG, DORI E. TUZ-ZAHRA, FATIMA BELLETTIERE, JOHN CARLSON, JORDAN HIBBING, PAUL R. ZOU, JINGJING LACROIX, ANDREA Z. KUMAR, ARUN NATARAJAN, LOKI The CNN Hip Accelerometer Posture (CHAP) Method for Classifying Sitting Patterns from Hip Accelerometers: A Validation Study |
title | The CNN Hip Accelerometer Posture (CHAP) Method for Classifying Sitting Patterns from Hip Accelerometers: A Validation Study |
title_full | The CNN Hip Accelerometer Posture (CHAP) Method for Classifying Sitting Patterns from Hip Accelerometers: A Validation Study |
title_fullStr | The CNN Hip Accelerometer Posture (CHAP) Method for Classifying Sitting Patterns from Hip Accelerometers: A Validation Study |
title_full_unstemmed | The CNN Hip Accelerometer Posture (CHAP) Method for Classifying Sitting Patterns from Hip Accelerometers: A Validation Study |
title_short | The CNN Hip Accelerometer Posture (CHAP) Method for Classifying Sitting Patterns from Hip Accelerometers: A Validation Study |
title_sort | cnn hip accelerometer posture (chap) method for classifying sitting patterns from hip accelerometers: a validation study |
topic | SPECIAL COMMUNICATIONS: Methodological Advances |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8516667/ https://www.ncbi.nlm.nih.gov/pubmed/34033622 http://dx.doi.org/10.1249/MSS.0000000000002705 |
work_keys_str_mv | AT greenwoodhickmanmikaelanne thecnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT nakandalasupun thecnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT jankowskamartam thecnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT rosenbergdorie thecnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT tuzzahrafatima thecnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT bellettierejohn thecnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT carlsonjordan thecnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT hibbingpaulr thecnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT zoujingjing thecnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT lacroixandreaz thecnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT kumararun thecnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT natarajanloki thecnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT greenwoodhickmanmikaelanne cnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT nakandalasupun cnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT jankowskamartam cnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT rosenbergdorie cnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT tuzzahrafatima cnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT bellettierejohn cnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT carlsonjordan cnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT hibbingpaulr cnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT zoujingjing cnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT lacroixandreaz cnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT kumararun cnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy AT natarajanloki cnnhipaccelerometerposturechapmethodforclassifyingsittingpatternsfromhipaccelerometersavalidationstudy |