Abstract
Physical activity (PA) reduces the risk of negative mental and physical health outcomes in older adults. Traditionally, PA intensity is classified using METs, with 1 MET equal to 3.5 mL O2·min−1·kg−1. However, this may underestimate moderate and vigorous intensity due to age‐related changes in resting metabolic rate (RMR) and VO2max. VO2reserve accounts for these changes. While receiver operating characteristics (ROC) analysis is commonly used to develop PA, intensity cut‐points, machine learning (ML) offers a potential alternative. This study aimed to develop ROC cut‐points and ML models to classify PA intensity in older adults. Sixty‐seven older adults performed activities of daily living (ADL) and two six‐minute walking tests (6‐MWT) while wearing six accelerometers on their hips, wrists, thigh, and lower back. Oxygen uptake was measured. ROC and ML models were developed for ENMO and Actigraph counts (AGVMC) using VO2reserve as the criterion in two‐third of the sample and validated in the remaining third. ROC‐developed cut‐points showed good‐excellent AUC (0.84–0.93) for the hips, lower back, and thigh, but wrist cut‐points failed to distinguish between moderate and vigorous intensity. The accuracy of ML models was high and consistent across all six anatomical sites (0.83–0.89). Validation of the ML models showed better results compared to ROC cut‐points, with the thigh showing the highest accuracy. This study provides ML models that optimize the classification of PA intensity in very old adults for six anatomical placements hips (left/right), wrist (dominant/non‐dominant), thigh and lower back increasing comparability between studies using different wear‐position. Clinical Trial Registration: clinicaltrials.gov identifier: NCT04821713
Original language | English |
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Article number | e70009 |
Pages (from-to) | 1-15 |
Number of pages | 15 |
Journal | Scandinavian Journal of Medicine & Science in Sports |
Volume | 35 |
Issue number | 1 |
DOIs | |
Publication status | Accepted/In press - 20 Dec 2024 |
Bibliographical note
© 2025 The Author(s). Scandinavian Journal of Medicine & Science in Sports published by John Wiley & Sons Ltd.Data Access Statement
The random forest models developed in this study for classifying PAintensity—both moderate and vigorous and overall MVPA—in very oldadults are available in the online repository for each anatomical place-ment: https://github.com/mskjodt/PA-classification-models. Thesemodels provide a valuable tool for researchers aiming to assess moder-ate and vigorous intensity in the older population.Keywords
- machine learning
- classification
- VO2Reserve
- validation
- wearable devices
- Humans
- Thigh
- Male
- Exercise/physiology
- Machine Learning
- Activities of Daily Living
- Wrist
- Oxygen Consumption/physiology
- Hip/physiology
- Aged, 80 and over
- Female
- ROC Curve
- Aged
- Accelerometry/instrumentation
- Walk Test