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Using a Minimum Set of Wearable Sensors to Assess Quality of Movement in Stroke Survivors

机译:使用最小一组可穿戴传感器来评估行程幸存者的运动质量

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The study herein summarized was focused on the development of a method to derive reliable estimates of the quality of movement of stroke survivors via the analysis of wearable sensor data. Data was collected from 34 subjects while they performed a battery of functional movements that are part of a standard clinical assessment. The quality of movement was assessed using the Functional Ability Scale, a validated clinical scale based on visual observation of movement patterns by a clinical expert. Two wearable sensors were positioned on the stroke-affected wrist and the sternum, respectively. Wearable sensor data was processed to derive data features that were in turn used as input to a regression-based Random Forest algorithm that was trained using a leave-one-subject-out method. The Random Forest algorithm generated estimates of the Functional Ability Scale scores. We found out that the estimates generated via analysis of the wearable sensor data were highly correlated (R2=0.97) with the scores generated by the clinical expert.
机译:这里所总结的研究集中于一种方法的发展,以通过可穿戴式传感器数据的分析中风生还者的运动质量的派生可靠的估计。数据从34名受试者而它们执行的是一个标准的临床评估的一部分升降功能的电池收集。运动的质量是使用功能能力量表,基于由临床专家的运动模式目视观察确认临床量表评估。两个穿戴式传感器分别位于所述行程影响手腕和胸骨。可穿戴式传感器数据进行处理,使其那名反过来用作输入以指使用留一被摄体出方法训练的基于回归的随机森林算法派生数据的功能。随机森林算法生成的功能能力量表评分的估计。我们发现,通过可穿戴式传感器数据高度相关的分析所产生的估计值(R2 = 0.97)与由临床专家生成的分数。

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