School of Computing, Gachon University, Seongnam 13120, Republic of Korea.
Department of Physical Therapy, Jeonju University, Jeonju 55069, Republic of Korea.
Sensors (Basel). 2023 Dec 29;24(1):210. doi: 10.3390/s24010210.
Measuring the daily use of an affected limb after hospital discharge is crucial for hemiparetic stroke rehabilitation. Classifying movements using non-intrusive wearable sensors provides context for arm use and is essential for the development of a home rehabilitation system. However, the movement classification of stroke patients poses unique challenges, including variability and sparsity. To address these challenges, we collected movement data from 15 hemiparetic stroke patients (Stroke group) and 29 non-disabled individuals (ND group). The participants performed two different tasks, the range of motion (14 movements) task and the activities of daily living (56 movements) task, wearing five inertial measurement units in a home setting. We trained a 1D convolutional neural network and evaluated its performance for different training groups: ND-only, Stroke-only, and ND and Stroke jointly. We further compared the model performance with data augmentation from axis rotation and investigated how the performance varied based on the asymmetry of movements. The joint training of ND + Stroke yielded an increased F1-score by a margin of 31.6% and 10.6% compared to ND-only training and Stroke-only training, respectively. Data augmentation further enhanced F1-scores across all conditions by an average of 11.3%. Finally, asymmetric movements decreased the F1-score by 25.9% compared to symmetric movements in the Stroke group, indicating the importance of asymmetry in movement classification.
测量出院后患肢的日常使用情况对偏瘫脑卒中康复至关重要。使用非侵入性可穿戴传感器对运动进行分类可为手臂使用提供背景信息,这对于开发家庭康复系统至关重要。然而,脑卒中患者的运动分类具有独特的挑战,包括变异性和稀疏性。为了解决这些挑战,我们从 15 名偏瘫脑卒中患者(Stroke 组)和 29 名非残疾个体(ND 组)中收集了运动数据。参与者在家中环境下佩戴五个惯性测量单元,执行两种不同的任务,即运动范围(14 个动作)任务和日常生活活动(56 个动作)任务。我们训练了一个一维卷积神经网络,并评估了其在不同训练组(仅 ND、仅 Stroke 和 ND 和 Stroke 联合)下的性能。我们进一步比较了模型性能与轴旋转数据增强,并研究了运动不对称性如何影响性能。与仅 ND 训练和仅 Stroke 训练相比,ND+Stroke 的联合训练使 F1 分数分别提高了 31.6%和 10.6%。数据增强进一步平均提高了所有条件下的 F1 分数 11.3%。最后,与对称运动相比,Stroke 组的不对称运动使 F1 分数降低了 25.9%,这表明运动分类中不对称性的重要性。