CHAP-Adult: A Reliable and Valid Algorithm to Classify Sitting and Measure Sitting Patterns Using Data From Hip-Worn Accelerometers in Adults Aged 35.

activity classification computational methods machine learning neural networks sedentary behavior validation

Journal

Journal for the measurement of physical behaviour
ISSN: 2575-6613
Titre abrégé: J Meas Phys Behav
Pays: United States
ID NLM: 101729992

Informations de publication

Date de publication:
Dec 2022
Historique:
medline: 1 12 2022
pubmed: 1 12 2022
entrez: 23 1 2024
Statut: ppublish

Résumé

Hip-worn accelerometers are commonly used, but data processed using the 100 counts per minute cut point do not accurately measure sitting patterns. We developed and validated a model to accurately classify sitting and sitting patterns using hip-worn accelerometer data from a wide age range of older adults. Deep learning models were trained with 30-Hz triaxial hip-worn accelerometer data as inputs and activPAL sitting/nonsitting events as ground truth. Data from 981 adults aged 35-99 years from cohorts in two continents were used to train the model, which we call CHAP-Adult (Convolutional Neural Network Hip Accelerometer Posture-Adult). Validation was conducted among 419 randomly selected adults not included in model training. Mean errors (activPAL - CHAP-Adult) and 95% limits of agreement were: sedentary time -10.5 (-63.0, 42.0) min/day, breaks in sedentary time 1.9 (-9.2, 12.9) breaks/day, mean bout duration -0.6 (-4.0, 2.7) min, usual bout duration -1.4 (-8.3, 5.4) min, alpha .00 (-.04, .04), and time in ≥30-min bouts -15.1 (-84.3, 54.1) min/day. Respective mean (and absolute) percent errors were: -2.0% (4.0%), -4.7% (12.2%), 4.1% (11.6%), -4.4% (9.6%), 0.0% (1.4%), and 5.4% (9.6%). Pearson's correlations were: .96, .92, .86, .92, .78, and .96. Error was generally consistent across age, gender, and body mass index groups with the largest deviations observed for those with body mass index ≥30 kg/m Overall, these strong validation results indicate CHAP-Adult represents a significant advancement in the ambulatory measurement of sitting and sitting patterns using hip-worn accelerometers. Pending external validation, it could be widely applied to data from around the world to extend understanding of the epidemiology and health consequences of sitting.

Sections du résumé

Background UNASSIGNED
Hip-worn accelerometers are commonly used, but data processed using the 100 counts per minute cut point do not accurately measure sitting patterns. We developed and validated a model to accurately classify sitting and sitting patterns using hip-worn accelerometer data from a wide age range of older adults.
Methods UNASSIGNED
Deep learning models were trained with 30-Hz triaxial hip-worn accelerometer data as inputs and activPAL sitting/nonsitting events as ground truth. Data from 981 adults aged 35-99 years from cohorts in two continents were used to train the model, which we call CHAP-Adult (Convolutional Neural Network Hip Accelerometer Posture-Adult). Validation was conducted among 419 randomly selected adults not included in model training.
Results UNASSIGNED
Mean errors (activPAL - CHAP-Adult) and 95% limits of agreement were: sedentary time -10.5 (-63.0, 42.0) min/day, breaks in sedentary time 1.9 (-9.2, 12.9) breaks/day, mean bout duration -0.6 (-4.0, 2.7) min, usual bout duration -1.4 (-8.3, 5.4) min, alpha .00 (-.04, .04), and time in ≥30-min bouts -15.1 (-84.3, 54.1) min/day. Respective mean (and absolute) percent errors were: -2.0% (4.0%), -4.7% (12.2%), 4.1% (11.6%), -4.4% (9.6%), 0.0% (1.4%), and 5.4% (9.6%). Pearson's correlations were: .96, .92, .86, .92, .78, and .96. Error was generally consistent across age, gender, and body mass index groups with the largest deviations observed for those with body mass index ≥30 kg/m
Conclusions UNASSIGNED
Overall, these strong validation results indicate CHAP-Adult represents a significant advancement in the ambulatory measurement of sitting and sitting patterns using hip-worn accelerometers. Pending external validation, it could be widely applied to data from around the world to extend understanding of the epidemiology and health consequences of sitting.

Identifiants

pubmed: 38260182
doi: 10.1123/jmpb.2021-0062
pmc: PMC10803054
doi:

Types de publication

Journal Article

Langues

eng

Pagination

215-223

Auteurs

John Bellettiere (J)

Herbert Wertheim School of Public Health and Human Longevity Science, University of California San Diego, La Jolla, CA, USA.

Supun Nakandala (S)

Department of Computer Science and Engineering, University of California San Diego, La Jolla, CA, USA.

Fatima Tuz-Zahra (F)

Herbert Wertheim School of Public Health and Human Longevity Science, University of California San Diego, La Jolla, CA, USA.

Elisabeth A H Winkler (EAH)

School of Public Health, the University of Queensland, Brisbane, QLD, Australia.

Paul R Hibbing (PR)

Center for Children's Healthy Lifestyles & Nutrition, Children's Mercy Hospital, Kansas City, MO, USA.

Genevieve N Healy (GN)

School of Public Health, the University of Queensland, Brisbane, QLD, Australia.

David W Dunstan (DW)

Baker Heart and Diabetes Institute, Melbourne, VIC, Australia.
Mary MacKillop Institute for Health Research, Australian Catholic University, Melbourne, VIC, Australia.

Neville Owen (N)

Baker Heart and Diabetes Institute, Melbourne, VIC, Australia.
Centre for Urban Transitions, Swinburne University of Technology, Melbourne, VIC, Australia.

Mikael Anne Greenwood-Hickman (MA)

Kaiser Permanente Washington Health Research Institute, Seattle, WA, USA.

Dori E Rosenberg (DE)

Kaiser Permanente Washington Health Research Institute, Seattle, WA, USA.

Jingjing Zou (J)

Herbert Wertheim School of Public Health and Human Longevity Science, University of California San Diego, La Jolla, CA, USA.

Jordan A Carlson (JA)

Center for Children's Healthy Lifestyles & Nutrition, Children's Mercy Hospital, Kansas City, MO, USA.
Department of Pediatrics, University of Missouri-Kansas City, Kansas City, MO, USA.

Chongzhi Di (C)

Division of Public Health Sciences, Fred Hutchinson Cancer Research Center, Seattle, WA, USA.

Lindsay W Dillon (LW)

Herbert Wertheim School of Public Health and Human Longevity Science, University of California San Diego, La Jolla, CA, USA.

Marta M Jankowska (MM)

Qualcomm Institute/Calit2, University of California San Diego, La Jolla, CA, USA.

Andrea Z LaCroix (AZ)

Herbert Wertheim School of Public Health and Human Longevity Science, University of California San Diego, La Jolla, CA, USA.

Nicola D Ridgers (ND)

School of Exercise and Nutrition Sciences, Institute for Physical Activity and Nutrition, Deakin University, Geelong, VIC, Australia.

Rong Zablocki (R)

Herbert Wertheim School of Public Health and Human Longevity Science, University of California San Diego, La Jolla, CA, USA.

Arun Kumar (A)

Department of Computer Science and Engineering, University of California San Diego, La Jolla, CA, USA.

Loki Natarajan (L)

Herbert Wertheim School of Public Health and Human Longevity Science, University of California San Diego, La Jolla, CA, USA.

Classifications MeSH