Machine and Deep Learning for Detection of Moderate-to-Vigorous Physical Activity From Accelerometer Data: Systematic Scoping Review
Yahua Zi, Sjors RB van de Ven, Eco JC de Geus, Peijie Chen

TL;DR
This review explores how machine and deep learning improve accuracy in detecting physical activity from wearable sensors, but highlights challenges like generalizability and data sharing.
Contribution
The study systematically evaluates ML and DL approaches for MVPA detection, identifying performance trends and translational barriers.
Findings
Hybrid ML/DL models achieve high accuracy (97.7%-99.0%) in free-living MVPA detection.
Wrist-worn sensors perform well in labs but multisensor setups yield highest accuracy.
Only 42.5% of studies shared code/data, highlighting reproducibility issues.
Abstract
Accurate monitoring of moderate-to-vigorous physical activity (MVPA) is critical for advancing public health research and personalized interventions. Traditional accelerometry methods, reliant on regression-derived intensity cut points, exhibit significant misclassification errors and poor generalizability to the free-living environment. Recent advancements in machine learning (ML) and deep learning (DL) offer promising alternatives for automated MVPA detection. This scoping review synthesizes evidence on ML and DL techniques for MVPA estimation and prediction using accelerometer data, focusing on performance, algorithm bias, sensor configurations, and translational potential. Following PRISMA-ScR (Preferred Reporting Items for Systematic Reviews and Meta-Analyses Extension for Scoping Reviews) guidelines, we conducted a systematic search across PubMed, IEEE Xplore, and Web of Science…
Genes, proteins, chemicals, diseases, species, mutations and cell lines named across the full text — each resolved to its canonical identifier and authoritative record.
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Taxonomy
TopicsPhysical Activity and Health · Mobile Health and mHealth Applications · Obesity, Physical Activity, Diet
