Department of Computer Science, School of Computing, Clemson University, Clemson, SC 29634, USA.
Department of Health Sciences and Research, College of Health Professions, Medical University of South Carolina, Charleston, SC 29425, USA.
Sensors (Basel). 2023 Jul 3;23(13):6110. doi: 10.3390/s23136110.
Upper extremity hemiplegia is a serious problem affecting the lives of many people post-stroke. Motor recovery requires high repetitions and quality of task-specific practice. Sufficient practice cannot be completed during therapy sessions, requiring patients to perform additional task practices at home on their own. Adherence to and quality of these home task practices are often limited, which is likely a factor reducing rehabilitation effectiveness post-stroke. However, home adherence is typically measured by self-reports that are known to be inconsistent with objective measurement. The objective of this study was to develop algorithms to enable the objective identification of task type and quality. Twenty neurotypical participants wore an IMU sensor on the wrist and performed four representative tasks in prescribed fashions that mimicked correct, compensatory, and incomplete movement qualities typically seen in stroke survivors. LSTM classifiers were trained to identify the task being performed and its movement quality. Our models achieved an accuracy of 90.8% for task identification and 84.9%, 81.1%, 58.4%, and 73.2% for movement quality classification for the four tasks for unseen participants. The results warrant further investigation to determine the classification performance for stroke survivors and if quantity and quality feedback from objective monitoring facilitates effective task practice at home, thereby improving motor recovery.
上肢偏瘫是一种严重的问题,影响许多中风后的人的生活。运动康复需要高重复次数和高质量的任务特定练习。在治疗过程中无法完成足够的练习,需要患者自己在家中进行额外的任务练习。这些家庭任务练习的坚持和质量往往受到限制,这可能是降低中风后康复效果的一个因素。然而,家庭坚持通常通过自我报告来衡量,而自我报告与客观测量不一致是已知的。本研究的目的是开发算法,以实现对任务类型和质量的客观识别。二十名神经正常的参与者在手腕上佩戴了一个 IMU 传感器,并以模仿中风幸存者中常见的正确、代偿和不完整运动质量的规定方式执行了四个代表性任务。LSTM 分类器被训练来识别正在执行的任务及其运动质量。我们的模型对未见过的参与者的四个任务的任务识别准确率达到了 90.8%,对运动质量分类的准确率分别为 84.9%、81.1%、58.4%和 73.2%。这些结果值得进一步研究,以确定对中风幸存者的分类性能,以及客观监测的数量和质量反馈是否有助于在家中进行有效的任务练习,从而促进运动康复。