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Estimating the Quality of Reaching Movements in Stroke Survivors

机译:估算中风幸存者中达到运动的质量

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Stroke is a leading cause of permanent impairments worldwide. Stroke survivors can improve their motor function through intensive and longitudinal rehabilitation therapies. However, rehabilitation therapy in outpatient settings often does not provide a sufficient amount of rehabilitation for meaningful patients’ recovery. Hence, patients need to perform therapeutic exercises in their home settings. However, despite the widely acknowledged importance of executing exercise movements in therapeutically desirable ways, stroke patients often practice exercise movements in a therapeutically undesirable manner, especially when therapists’ supervision is not available. While wearable sensors have been investigated to monitor patients’ exercise movements, it remains as a challenge to accurately and objectively estimate the quality of at-home exercise movements. This study proposes an analytic method to estimate the quality of individual reaching movements in stroke survivors using a wrist-worn wearable inertial sensor. We extracted time/frequency-domain features from stroke survivor’s horizontal movements in reaching and trained supervised machine learning models to classify if each reaching movement is executed in a therapeutically desirable way or not. The estimation results show that acceptable performance with the Area Under the Receiver Operating Characteristic Curve of 0.94. The extracted temporal and frequency features demonstrate that significant differences exist between the two classes and reflect the level of impairments in reaching movements. We envision these results enable monitoring the quality of at-home exercise movements and personalizing rehabilitation therapy.
机译:中风是全球永久性障碍的主要原因。中风幸存者可以通过密集和纵向康复疗法来改善其运动功能。然而,在门诊环境中的康复治疗通常不会为有意义的患者恢复提供足够的康复。因此,患者需要在其家庭环境中进行治疗练习。然而,尽管在治疗上可取的方式执行运动运动的广泛认识到,但卒中患者通常以治疗上不合需要的方式练习运动,特别是当治疗师的监督不可用时。虽然已经调查了可穿戴传感器来监测患者的运动运动,但它仍然是准确性地和客观地估计营养运动质量的挑战。本研究提出了一种分析方法来估计使用手腕穿戴惯性传感器的行程幸存者中的个体达到运动的质量。我们提取了中风幸存者的水平运动的时间/频域特征在达到和训练的监督机器学习模型中,以分类为每个达到移动以治疗上所希望的方式执行。估计结果表明,接收器下的区域的可接受性能在操作特性曲线下为0.94。提取的时间和频率特征表明,两级之间存在显着差异,并反映了达到运动的损伤水平。我们设想这些结果,使得能够监测家庭锻炼运动的质量和个性化康复治疗。

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