Department of Neuromedicine and Movement Science, Faculty of Medicine and Health Sciences, Norwegian University of Science and Technology, 7034 Trondheim, Norway.
Department of Computer Science, Faculty of Information Technology and Electrical Engineering, Norwegian University of Science and Technology, 7034 Trondheim, Norway.
Sensors (Basel). 2023 Feb 21;23(5):2368. doi: 10.3390/s23052368.
Activity monitoring combined with machine learning (ML) methods can contribute to detailed knowledge about daily physical behavior in older adults. The current study (1) evaluated the performance of an existing activity type recognition ML model (HARTH), based on data from healthy young adults, for classifying daily physical behavior in fit-to-frail older adults, (2) compared the performance with a ML model (HAR70+) that included training data from older adults, and (3) evaluated the ML models on older adults with and without walking aids. Eighteen older adults aged 70-95 years who ranged widely in physical function, including usage of walking aids, were equipped with a chest-mounted camera and two accelerometers during a semi-structured free-living protocol. Labeled accelerometer data from video analysis was used as ground truth for the classification of walking, standing, sitting, and lying identified by the ML models. Overall accuracy was high for both the HARTH model (91%) and the HAR70+ model (94%). The performance was lower for those using walking aids in both models, however, the overall accuracy improved from 87% to 93% in the HAR70+ model. The validated HAR70+ model contributes to more accurate classification of daily physical behavior in older adults that is essential for future research.
活动监测结合机器学习 (ML) 方法可以帮助我们深入了解老年人的日常身体行为。本研究(1)评估了基于健康年轻成年人数据的现有活动类型识别 ML 模型 (HARTH) 在分类健康到虚弱的老年人日常身体行为方面的性能,(2)比较了包含老年人训练数据的 ML 模型 (HAR70+) 的性能,以及 (3) 在使用和不使用助行器的老年人身上评估 ML 模型。18 名年龄在 70-95 岁之间的老年人身体功能差异很大,包括使用助行器,在半结构化的自由生活协议期间,他们配备了一个胸部安装的摄像头和两个加速度计。从视频分析中标记的加速度计数据被用作 ML 模型识别的行走、站立、坐着和躺着的分类的地面实况。HARTH 模型(91%)和 HAR70+模型(94%)的整体准确性都很高。然而,在这两个模型中,使用助行器的人的性能较低,但 HAR70+模型的整体准确性从 87%提高到 93%。经过验证的 HAR70+模型有助于更准确地分类老年人的日常身体行为,这对未来的研究至关重要。