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The role of wrist-mounted inertial sensors in detecting gait freeze episodes in Parkinson's disease

机译:腕上安装的惯性传感器在检测帕金森氏症步态冻结发作中的作用

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摘要

Freezing of gait (FoG) is a motor impairment among patients with advanced Parkinson's disease, associated with falls and negative impact on patient's quality of life. Detecting such freezes allows real-time gait monitoring to reduce the risk of falls. We investigate the correlation between wrist movements and the freezing of the gait in Parkinson's disease, targeting FoG-detection from wrist-worn sensing data. While most of research focuses on placing inertial sensors on lower limb, i.e., foot, ankle, thigh, we focus on the wrist as an alternative placement. Commonly worn accessories at the wrist such as watches or wristbands are more likely to be accepted and easier to be worn by elderly users, especially subjects with motor problems. Experiments on data from 11 subjects with Parkinson's disease and FoG show there are specific features from wrist movements which are related to gait freeze, such the power on different frequency ranges and statistical information from acceleration and rotation data. Moreover, FoG can be detected by using wrist motion and machine learning models with a FoG hit rate of 0.9, and a specificity between 0.66 and 0.8. Compared with the state-of-the-art lower limb information used to detect FoG, the wrist increases the number of false detected events, while preserving the FoG hit-rate and detection latency. This suggests that wrist sensors can be a feasible alternative to the cumbersome placement on the legs. (C) 2016 Elsevier B.V. All rights reserved.
机译:步态冻结(FoG)是帕金森氏病晚期患者的一种运动障碍,与跌倒和对患者生活质量的负面影响有关。检测到这种冻结可以实时监视步态以降低跌倒的风险。我们研究了腕部运动与帕金森氏病步态冻结之间的相关性,其目标是从腕戴传感数据中检测FoG。虽然大多数研究都集中在将惯性传感器放置在下肢(即脚,踝,大腿)上,但我们将腕部作为替代放置。腕上通常佩戴的配件,例如手表或腕带,更容易被老年人使用,尤其是运动障碍的受试者。对来自11名帕金森氏病和FoG受试者的数据进行的实验表明,腕部运动具有与步态冻结相关的特定功能,例如不同频率范围的功率以及来自加速度和旋转数据的统计信息。此外,可以通过使用手腕运动和机器学习模型检测FoG,FoG命中率为0.9,特异性在0.66和0.8之间。与用于检测FoG的最新下肢信息相比,手腕增加了错误检测到的事件的数量,同时保留了FoG命中率和检测潜伏期。这表明腕部传感器可以替代腿上繁琐的放置。 (C)2016 Elsevier B.V.保留所有权利。

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