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首页> 外文期刊>Australasian physical & engineering sciences in medicine >Multichannel EEG based inter-ictal seizures detection using Teager energy with backpropagation neural network classifier
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Multichannel EEG based inter-ictal seizures detection using Teager energy with backpropagation neural network classifier

机译:使用Teager能量和反向传播神经网络分类器的基于多通道EEG的发作间发作检测

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摘要

A long-term multichannel electroencephalogram recording plays a crucial role in recognizing the epileptic seizure activities from the brain lobes. This research study investigates the automated detection of epileptic seizures from multichannel electroencephalogram recordings using Teager energy feature. A supervised back-propagation neural network model was implemented to classify the inter-ictal seizures. The study was conducted on multichannel electroencephalogram data that was obtained from Institute of Neuroscience, Ramaiah Memorial Hospital, Bengaluru, India, after ethical clearance from the from the Institutional Ethics Board. Initially, notch filter was applied to remove the 50Hz power line noise from raw electroencephalogram followed by independent component analysis to remove eye blinks and muscular activities. A time domain feature called Teager energy was estimated which detects the rapid changes in the given electroencephalogram time series. A 1s windowing was introduced to ensure stationarity for estimation of Teager energy. The descriptive and box plot analysis ensures the suitability of the Teager energy for the seizure detection. The performance of the multilayer perceptron neural network classifier was evaluated using sensitivity, specificity, and false detection rate. Simulation results showed the highest sensitivity, specificity and false detection rate of 96.66%, 99.15%, and 0.30 per hour respectively. It can be concluded that procedure can be applied for real-time seizure detection.
机译:长期多通道脑电图记录在识别脑叶癫痫发作活动中起着至关重要的作用。这项研究调查了使用Teager能量功能从多通道脑电图记录中自动检测癫痫发作的方法。采用监督反向传播神经网络模型对发作间发作进行分类。该研究是基于多通道脑电图数据进行的,该数据是在获得印度机构伦理委员会的道德许可后从印度班加罗尔Ramaiah纪念医院神经科学研究所获得的。最初,使用陷波滤波器从原始脑电图中消除50Hz电源线噪声,然后进行独立分量分析以消除眨眼和肌肉活动。估计了称为Teager能量的时域特征,该特征可检测给定脑电图时间序列中的快速变化。引入了1s窗口,以确保平稳估计Teager能量。描述性和箱形图分析确保Teager能量适合癫痫发作检测。使用敏感性,特异性和错误检测率评估了多层感知器神经网络分类器的性能。仿真结果显示最高的灵敏度,特异性和错误检测率分别为每小时96.66%,99.15%和0.30。可以得出结论,该程序可用于实时癫痫发作检测。

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