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Assessment of Purposeful Movements for Post-Stroke Patients in Activites of Daily Living with Wearable Sensor Device

机译:用可穿戴传感器装置的日常生活活动中卒中后患者的有目的运动评估

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Hemiparesis is one of the most frequent poststroke conditions, which causes muscle weakness and/or inability to move one side of the body. Physical rehabilitation is the main treatment for hemiparesis recovery, and physiotherapists agree that using the impaired arm in the activities of daily living (ADLs)is crucial for a complete recovery. Currently, rehabilitation is assessed through diaries and self-questionnaires, which are subjective and do not tell the real condition of the patients throughout the day. Assistive devices can objectively evaluate the functional improvement of the impaired arm monitoring its activity. This work aimed to identify the purposeful arm movements during patient's ADLs. We consider arm's swing while walking as a non-purposeful movement. Firstly, the event-based approach was applied to separate movement and non-movement segments. Secondly, movement segments were used to detect the change-point (events)and their locations in time series signal. Two machine learning classifiers, Support Vector Machine (SVM)and Artificial Neural Network (ANN), were trained using 10-fold cross validation for the classification of purposeful and non-purposeful movements. Data from 10 healthy and 12 post-strokes volunteers from Institute Guttmann (Barcelona)were collected using the SensHand device. The volunteers, wearing one SensHand on each wrist, performed the following activities: resting, eating, pouring water, drinking, brushing, folding towel, grasp towel, grasp brush, grasp glass, continuous and walking. Developing a model based on the healthy subjects, the overall classification accuracy obtained from SVM classifier and ANN was 81.21 % and 97.06% respectively. Similarly, with poststroke subjects obtained accuracy with the SVM and ANN was 84.18% and 99.74% respectively. Considering the whole dataset, SVM and ANN obtained maximum accuracy equal to 86.21 % and 99.91 % respectively. In conclusion, our work showed promising results for the classification of purposeful and non-purposeful movements.
机译:偏瘫是最常见的失败条件之一,导致肌肉弱点和/或无法移动身体的一侧。物理康复是血逐恢复的主要治疗,物理治疗师认为,在日常生活(ADL)活动中使用受损的手臂对于完全恢复至关重要。目前,通过日记和自我问卷来评估康复,这是主观的,并且在一天内没有讲述患者的真实情况。辅助设备可以客观地评估监测其活动的受损手臂的功能改进。这项工作旨在识别患者ADL期间的有目的的手臂运动。我们考虑手臂挥杆,同时散步为一个无意的运动。首先,将基于事件的方法应用于单独的运动和非移动段。其次,移动段用于检测时间序列信号中的变化点(事件)及其位置。两种机器学习分类器,支持向量机(SVM)和人工神经网络(ANN)使用10倍的交叉验证进行验证,用于分类有目的和无目的的运动。使用Senshand设备收集来自10个健康和12次志愿者的10个健康和12个志愿者。志愿者,在每个手腕上穿着一个感觉,进行了以下活动:休息,吃,倒水,饮用,刷牙,折叠毛巾,掌握毛巾,掌握刷子,掌握玻璃,连续和行走。根据健康受试者开发一种模型,从SVM分类器和ANN获得的整体分类准确性分别为81.21%和97.06%。类似地,随着初失血对象获得了SVM和ANN的准确度,分别为84.18%和99.74%。考虑到整个数据集,SVM和ANN获得的最大精度分别等于86.21%和99.91%。总之,我们的工作表明有可能的宗旨和无故障运动的分类。

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