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Detection of Nocturnal Epileptic Seizures from Wireless Inertial Measurements and Muscular Activity

机译:从无线惯性测量和肌肉活动中检测夜间癫痫发作

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The goal of this paper is to provide a lightweight approach for the early detection of epileptic seizures using data from inertial measurement unit and muscular activity. The detection procedure runs in a portable data collection device and raises an alarm for family member or other persons in the vicinity for fast assistance and eventually for saving the life of the monitored patient. The instantaneous power of sliding window is derived for inertial measurements from 3D Accelerometer (ACM), 3D Gyroscope (Gyro) and for the muscular activity from the ElectroMyoGram (EMG). The residual between forecasted and measured power is used as input for the detection algorithm based on Shewhart control chart. When the error between forecasted and derived power exceeds statistical chart limits [lower, upper] for several consecutive slots, an alarm is raised. The proposed approach is intended to improve the performance of existing detection systems by increasing the detection accuracy and reducing the false alarms through correlation analysis of collected data from 3D ACM, 3D Gyro and EMG. Our experimental results on real data set collected in Necker hospital from epileptic patients show that our proposed approach is robust against nocturnal movements and achieves a high level of detection accuracy with low false alarm rate.
机译:本文的目的是提供一种轻量级的方法,用于使用惯性测量单位和肌肉活动的数据来早期检测癫痫发作。该检测过程在便携式数据收集设备中运行,并向附近的家庭成员或其他人发出警报,以提供快速帮助并最终挽救被监视患者的生命。滑动窗口的瞬时功率来自3D加速度计(ACM),3D陀螺仪(Gyro)的惯性测量以及来自ElectroMyoGram(EMG)的肌肉活动。预测功率和测量功率之间的残差用作基于Shewhart控制图的检测算法的输入。当连续几个插槽的预测功率与派生功率之间的误差超过统计图表限制[下限,上限]时,将发出警报。所提出的方法旨在通过对3D ACM,3D陀螺仪和EMG收集的数据进行相关分析来提高检测精度并减少误报,从而提高现有检测系统的性能。我们在Necker医院从癫痫患者那里收集的真实数据集上的实验结果表明,我们提出的方法对夜间运动具有鲁棒性,并且可以实现较高的检测准确度,并且误报率较低。

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