TY - JOUR
T1 - Multi-Risk-Level Sarcopenia-Prone Screening via Machine Learning Classification of Sit-to-Stand Motion Metrics from Wearable Sensors
AU - Wang, Keer
AU - Zhang, Hongyu
AU - Cheng, Clio Yuen Man
AU - Chen, Meng
AU - Lai, King Wai Chiu
AU - Or, Calvin Kalun
AU - Hu, Yong
AU - Vellaisamy, Arul Lenus Roy
AU - Lam, Cindy Lo Kuen
AU - Xi, Ning
AU - Lou, Vivian Weiqun
AU - Li, Wen Jung
N1 - Publisher Copyright:
© 2025 The Author(s). Advanced Intelligent Systems published by Wiley-VCH GmbH.
PY - 2025
Y1 - 2025
N2 - Sarcopenia, an age-related syndrome characterized by muscle mass and function loss, significantly impacts the quality of life in older adults. A machine learning approach using micro inertial measurement units (μIMUs) for noninvasive sarcopenia-prone screening through a single sit-to-stand (1STS) test is developed. The study involves 53 older participants (65–84 years), each wearing two IMUs, i.e., one on the thigh and one on the waist. The 1STS motion is divided into four phases and extract 510 features from the collected data. Phase 1 is crucial for distinguishing healthy from sarcopenia-prone participants, while Phase 2 is significant in differentiating risk levels. Key indicators include anterior–posterior and mediolateral movements, particularly along the y-axis and z-axis of the sensors. Five classification algorithms (support vector machine (SVM), K-nearest neighbors (KNN), decision tree, linear discriminant analysis, and multilayer perceptron (MLP)) with selected features are trained. The method achieves 98.32% accuracy using SVM and MLP in distinguishing healthy from sarcopenia-prone participants and 90.44% accuracy using KNN in classifying participants across four risk levels (0–3) based on physical performance severity. These results suggest that the proposed method provides a low-cost, nonspecialist technique for large-scale sarcopenia-prone risk screening and assessment of physical performance severities.
AB - Sarcopenia, an age-related syndrome characterized by muscle mass and function loss, significantly impacts the quality of life in older adults. A machine learning approach using micro inertial measurement units (μIMUs) for noninvasive sarcopenia-prone screening through a single sit-to-stand (1STS) test is developed. The study involves 53 older participants (65–84 years), each wearing two IMUs, i.e., one on the thigh and one on the waist. The 1STS motion is divided into four phases and extract 510 features from the collected data. Phase 1 is crucial for distinguishing healthy from sarcopenia-prone participants, while Phase 2 is significant in differentiating risk levels. Key indicators include anterior–posterior and mediolateral movements, particularly along the y-axis and z-axis of the sensors. Five classification algorithms (support vector machine (SVM), K-nearest neighbors (KNN), decision tree, linear discriminant analysis, and multilayer perceptron (MLP)) with selected features are trained. The method achieves 98.32% accuracy using SVM and MLP in distinguishing healthy from sarcopenia-prone participants and 90.44% accuracy using KNN in classifying participants across four risk levels (0–3) based on physical performance severity. These results suggest that the proposed method provides a low-cost, nonspecialist technique for large-scale sarcopenia-prone risk screening and assessment of physical performance severities.
KW - artificial intelligence-based diagnosis
KW - good health and wellbeing
KW - microsensors
KW - physical performance
KW - sarcopenia risk levels
KW - sarcopenia-prone detection
UR - http://www.scopus.com/inward/record.url?scp=85218011654&partnerID=8YFLogxK
U2 - 10.1002/aisy.202401120
DO - 10.1002/aisy.202401120
M3 - Article
AN - SCOPUS:85218011654
JO - Advanced Intelligent Systems
JF - Advanced Intelligent Systems
ER -