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Nocturnal Epileptic Seizures Detection Using Inertial and Muscular Sensors

机译:使用惯性和肌肉传感器进行夜间癫痫发作检测

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This paper presents a lightweight approach for the early detection of nocturnal epileptic seizures through analysis of inertial data and muscle contractions. Our approach uses an overlapping sliding window to derive the variance of data acquired by the MPU 9,250 motion tracking device and single channel surface ElectroMyoGram (sEMG). The Exponentially Weighted Moving Average (EWMA) is used to forecast the current value of the data variance. When the Kullback-Leibler divergence between the forecasted and measured variances deviates from past values, a signal is transmitted to the base station to set the current counter in an alarm window. If the filling ratio of the alarm window 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 detection systems based on data analysis from Accelerometer. The MPU 9,250 is 9-axis motion tracking and used to detect motor seizures, and it contains a 3-axis Accelerometer, Gyroscope, and Magnetometer. The sEMG is used to detect silent seizures without jerky movements. Our experimental results on a real dataset from an epileptic patient show that our proposed approach is able to increase detection accuracy and reduce the low false alarm rate. Comparison with a Probability Density Function (PDF) further demonstrates the detection efficiency of our approach.
机译:本文提出了一种通过分析惯性数据和肌肉收缩来早期发现夜间癫痫发作的轻量级方法。我们的方法使用重叠的滑动窗口来得出MPU 9,250运动跟踪设备和单通道表面ElectroMyoGram(sEMG)所获取数据的方差。指数加权移动平均值(EWMA)用于预测数据差异的当前值。当预测方差和测量方差之间的Kullback-Leibler背离背离过去的值时,会将信号发送到基站,以将当前计数器设置在警报窗口中。如果告警窗口的填充率大于预定阈值,则基站触发告警。拟议的方法旨在基于Accelerometer的数据分析来改善现有检测系统的性能。 MPU 9,250是9轴运动跟踪器,用于检测电动机的跳动,它包含3轴加速度计,陀螺仪和磁力计。 sEMG用于检测无抽搐的无声癫痫发作。我们在来自癫痫患者的真实数据集上的实验结果表明,我们提出的方法能够提高检测准确度并降低低误报率。与概率密度函数(PDF)的比较进一步证明了我们方法的检测效率。

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