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Automatic Detection of Compensation During Robotic Stroke Rehabilitation Therapy

机译:机器人中风康复治疗期间的补偿自动检测

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摘要

Robotic stroke rehabilitation therapy can greatly increase the efficiency of therapy delivery. However, when left unsupervised, users often compensate for limitations in affected muscles and joints by recruiting unaffected muscles and joints, leading to undesirable rehabilitation outcomes. This paper aims to develop a computer vision system that augments robotic stroke rehabilitation therapy by automatically detecting such compensatory motions. Nine stroke survivors and ten healthy adults participated in this study. All participants completed scripted motions using a table-top rehabilitation robot. The healthy participants also simulated three types of compensatory motions. The 3-D trajectories of upper body joint positions tracked over time were used for multiclass classification of postures. A support vector machine (SVM) classifier detected lean-forward compensation from healthy participants with excellent accuracy (AUC = 0.98, F1 = 0.82), followed by trunk-rotation compensation (AUC = 0.77, F1 = 0.57). Shoulder-elevation compensation was not well detected (AUC = 0.66, F1 = 0.07). A recurrent neural network (RNN) classifier, which encodes the temporal dependency of video frames, obtained similar results. In contrast, F1-scores in stroke survivors were low for all three compensations while using RNN: lean-forward compensation (AUC = 0.77, F1 = 0.17), trunk-rotation compensation (AUC = 0.81, F1 = 0.27), and shoulder-elevation compensation (AUC = 0.27, F1 = 0.07). The result was similar while using SVM. To improve detection accuracy for stroke survivors, future work should focus on predefining the range of motion, direct camera placement, delivering exercise intensity tantamount to that of real stroke therapies, adjusting seat height, and recording full therapy sessions.
机译:机器人中风康复治疗可以大大提高治疗效率。但是,如果不加监督,使用者通常会通过招募未受影响的肌肉和关节来补偿受影响的肌肉和关节的局限性,从而导致不良的康复结果。本文旨在开发一种计算机视觉系统,通过自动检测这种补偿运动来增强机器人中风康复治疗。九名卒中幸存者和十名健康成年人参加了这项研究。所有参与者都使用台式康复机器人完成了脚本动作。健康的参与者还模拟了三种补偿运动。随时间推移跟踪的上身关节位置的3-D轨迹用于姿势的多类分类。支持向量机(SVM)分类器以良好的精度(AUC = 0.98,F1 = 0.82)检测到健康参与者的前倾补偿,然后进行躯干旋转补偿(AUC = 0.77,F1 = 0.57)。没有很好地检测到肩高补偿(AUC = 0.66,F1 = 0.07)。编码视频帧的时间依赖性的递归神经网络(RNN)分类器获得了相似的结果。相比之下,使用RNN时,中风幸存者的F1分数对于所有三种补偿均较低:前倾补偿(AUC = 0.77,F1 = 0.17),躯干旋转补偿(AUC = 0.81,F1 = 0.27)和肩负高程补偿(AUC = 0.27,F1 = 0.07)。使用SVM时的结果相似。为了提高中风幸存者的检测准确性,未来的工作应集中在预先确定运动范围,直接放置相机,提供与真实中风治疗等同的运动强度,调节座椅高度并记录整个治疗过程。

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