Karlov Mark, Abedi Ali, Khan Shehroz S
Department of Electrical and Computer Engineering, University of Toronto, 10 King's College Road, Toronto, M5S 3G4, Ontario, Canada.
KITE Research Institute, Toronto Rehabilitation Institute, University Health Network, 550 University Avenue, Toronto, M5G 2A2, Ontario, Canada.
Med Biol Eng Comput. 2025 Jan;63(1):15-28. doi: 10.1007/s11517-024-03177-x. Epub 2024 Jul 31.
Exercise-based rehabilitation programs have proven to be effective in enhancing the quality of life and reducing mortality and rehospitalization rates. AI-driven virtual rehabilitation, which allows patients to independently complete exercises at home, utilizes AI algorithms to analyze exercise data, providing feedback to patients and updating clinicians on their progress. These programs commonly prescribe a variety of exercise types, leading to a distinct challenge in rehabilitation exercise assessment datasets: while abundant in overall training samples, these datasets often have a limited number of samples for each individual exercise type. This disparity hampers the ability of existing approaches to train generalizable models with such a small sample size per exercise type. Addressing this issue, this paper introduces a novel supervised contrastive learning framework with hard and soft negative samples that effectively utilizes the entire dataset to train a single model applicable to all exercise types. This model, with a Spatial-Temporal Graph Convolutional Network (ST-GCN) architecture, demonstrated enhanced generalizability across exercises and a decrease in overall complexity. Through extensive experiments on three publicly available rehabilitation exercise assessment datasets, UI-PRMD, IRDS, and KIMORE, our method has proven to surpass existing methods, setting a new benchmark in rehabilitation exercise quality assessment.
基于运动的康复计划已被证明在提高生活质量、降低死亡率和再住院率方面是有效的。人工智能驱动的虚拟康复允许患者在家中独立完成运动,它利用人工智能算法分析运动数据,向患者提供反馈,并向临床医生更新他们的进展情况。这些计划通常规定了各种运动类型,这给康复运动评估数据集带来了一个独特的挑战:虽然总体训练样本丰富,但这些数据集通常每种单独运动类型的样本数量有限。这种差异阻碍了现有方法在每种运动类型样本量如此之小的情况下训练通用模型的能力。为了解决这个问题,本文引入了一种带有硬负样本和软负样本的新型监督对比学习框架,该框架有效地利用整个数据集来训练一个适用于所有运动类型的单一模型。这个具有时空图卷积网络(ST-GCN)架构的模型在各种运动中表现出更强的通用性,并且整体复杂度有所降低。通过在三个公开可用的康复运动评估数据集UI-PRMD、IRDS和KIMORE上进行的大量实验,我们的方法已证明优于现有方法,在康复运动质量评估方面树立了新的标杆。