Classification of Stair Ascent and Descent in Stroke Patients

Kaspar Leuenberger, R. Gonzenbach, E. Wiedmer, A. Luft, R. Gassert
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引用次数: 22

Abstract

Wearable sensor units are a promising technology to assess ambulatory activities such as level walking, stair ascent and descent in the home environment, shedding light into the recovery process and independence of stroke survivors. However, algorithms for the identification of ambulatory activities were optimized for healthy subjects, and show limitations when considering the reduced walking speed and altered gait patterns found in patients. We present a method to identify ambulatory phases and distinguish stair ascent and descent from level walking in daily activity recordings of stroke survivors. A realistic dataset was captured with inertial and barometric pressure sensors worn at 5 anatomical locations. Statistical and wavelet based acceleration features fed into a Support Vector Machine were used to identify walking phases, while a k-Nearest-Neighbor classifier was used to discriminate between level walking, stair ascent and descent based on barometric pressure and acceleration features. Combining data from multiple sensor modules resulted in walking classification sensitivities and specificities of up to 96%. Looking at sensor modules individually, the module placed at the nonparetic ankle showed the best performance, increasing sensitivity of walking identification by almost 10% compared to the module at the paretic ankle. Level walking was identified with 97% sensitivity and 91% specificity, stair ascent with 94% sensitivity and 99% specificity and stair descent with 87% sensitivity and 99% specificity in the multi-sensor setup. Again, sensor modules placed at the ankles displayed the best performance when looking at modules individually.
脑卒中患者楼梯升降的分类
可穿戴传感器单元是一种很有前途的技术,可以评估家庭环境中的水平行走、楼梯上下等动态活动,为中风幸存者的恢复过程和独立性提供帮助。然而,识别门诊活动的算法针对健康受试者进行了优化,当考虑到患者行走速度降低和步态模式改变时,显示出局限性。我们提出了一种方法来识别走动阶段和区分楼梯上升和下降水平步行在日常活动记录的中风幸存者。通过在5个解剖位置佩戴的惯性和气压传感器捕获了一个真实的数据集。基于统计和小波的加速度特征被输入到支持向量机中来识别行走阶段,而基于气压和加速度特征的k-最近邻分类器被用于区分水平行走、楼梯上升和下降。结合来自多个传感器模块的数据,步行分类的灵敏度和特异性高达96%。单独观察传感器模块,放置在非麻痹性脚踝的模块表现出最好的性能,与放置在麻痹性脚踝的模块相比,步行识别的灵敏度提高了近10%。在多传感器设置中,水平行走的识别灵敏度为97%,特异性为91%,楼梯上升的识别灵敏度为94%,特异性为99%,楼梯下降的识别灵敏度为87%,特异性为99%。同样,当单独观察模块时,放置在脚踝处的传感器模块显示出最佳性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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