利用无线三维加速度计传感器检测夜间癫痫发作

Osman Salem, Yacine Rebhi, Abdelkrim Boumaza, A. Mehaoua
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引用次数: 3

摘要

本文的目的是提供一种轻量级的方法,用于使用无线3-D加速度传感器的数据来早期检测夜间癫痫发作。我们使用指数加权移动平均算法来预测加速度计测量值的当前值,当测量值与预测值之间的差值大于任何轴上的动态阈值时,向基站发送通知,基站保持接收通知的滑动窗口。当填充率大于设置的阈值时,基站会触发告警。提出的方法旨在改进现有的基于脑电图分析的移动健康检测系统的性能。为了降低其误报率,我们寻求通过多数投票将3d加速度计的检测结果与其他生理参数相关联。在癫痫患者真实数据集上的实验结果表明,该方法对时间波动具有较强的鲁棒性,检测精度较高,从而证明了该方法在提高现有基于脑电信号分析的检测方法的可靠性方面的有效性。
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Detection of nocturnal epileptic seizures using wireless 3-D accelerometer sensors
The aim of this paper is to provide a lightweight approach for early detection of nocturnal epileptic seizures using data from wireless 3-D accelerometer sensors. We use the exponentially weighted moving average algorithm to forecast the current value of the accelerometer measurement, and when the difference between measured and forecasted values is greater than the dynamic threshold on any axis, a notification is transmitted to the base station, which maintains a sliding window of received notifications. When the filling ratio is greater than a predefined threshold, an alarm is triggered by the base station. The proposed approach is intended to improve the performance of existing mobile health detection systems based on the analysis of electroencephalogram (EEG). To reduce their false alarm rate, we seek to correlate detection results from 3-D accelerometer with other physiological parameters through a majority voting. Our experimental results on real dataset collected from the epileptic patient show that our proposed approach is robust against temporal fluctuations and achieves a high level of detection accuracy, which in turn proves the effectiveness of this approach in enhancing the reliability of existing detection approaches based on EEG signal analysis.
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