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Towards Real-Time Detection of Freezing of Gait Using Wavelet Transform on Wireless Accelerometer Data

机译:利用无线加速度计数据的小波变换实现步态冻结的实时检测

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摘要

Injuries associated with fall incidences continue to pose a significant burden to persons with Parkinson’s disease (PD) both in terms of human suffering and economic loss. Freezing of gait (FOG), which is one of the symptoms of PD, is a common cause of falls in this population. Although a significant amount of work has been performed to characterize/detect FOG using both qualitative and quantitative methods, there remains paucity of data regarding real-time detection of FOG, such as the requirements for minimum sensor nodes, sensor placement locations, and appropriate sampling period and update time. Here, the continuous wavelet transform (CWT) is employed to define an index for correctly identifying FOG. Since the CWT method uses both time and frequency components of a waveform in comparison to other methods utilizing only the frequency component, we hypothesized that using this method could lead to a significant improvement in the accuracy of FOG detection. We tested the proposed index on the data of 10 PD patients who experience FOG. Two hundred and thirty seven (237) FOG events were identified by the physiotherapists. The results show that the index could discriminate FOG in the anterior–posterior axis better than other two axes, and is robust to the update time variability. These results suggest that real time detection of FOG may be realized by using CWT of a single shank sensor with window size of 2 s and update time of 1 s (82.1% and 77.1% for the sensitivity and specificity, respectively). Although implicated, future studies should examine the utility of this method in real-time detection of FOG.
机译:从人类遭受的痛苦和经济损失的角度来看,与跌倒发生率相关的伤害继续给帕金森氏病(PD)带来巨大负担。步态冻结(FOG)是PD的症状之一,是该人群跌倒的常见原因。尽管已经使用定性和定量方法进行了大量工作来表征/检测FOG,但仍缺乏有关FOG实时检测的数据,例如对最小传感器节点,传感器放置位置和适当采样的要求期限和更新时间。在此,采用连续小波变换(CWT)定义用于正确识别FOG的索引。与仅使用频率分量的其他方法相比,由于CWT方法同时使用了波形的时间和频率分量,因此我们假设使用此方法可以显着提高FOG检测的准确性。我们对10名经历FOG的PD患者的数据测试了拟议的指数。物理治疗师确定了237次(237)FOG事件。结果表明,该指数可以更好地区分前后轴上的FOG,并且对更新时间变化具有鲁棒性。这些结果表明,可以通过使用窗口大小为2 s,更新时间为1 s(灵敏度和特异性分别为82.1%和77.1%)的单柄传感器的CWT来实现FOG的实时检测。尽管有牵连,但未来的研究应检查该方法在FOG实时检测中的实用性。

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