一种基于形态滤波的脑电图峰值自动检测算法

Guanghua Xu, J. Wang, Qing Zhang, Junming Zhu
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引用次数: 14

摘要

癫痫脑电图数据包含瞬态成分和背景活动。其中一种瞬态是脉冲,它随机发生,持续时间短。脑电图峰检测对癫痫的临床诊断有重要意义。由于手动扫描尖峰费时,因此需要一种自动尖峰检测方法。本文介绍了一种基于形态学滤波的癫痫脑电峰自动检测方法。首先,利用开闭和闭开形态算子的平均加权组合,消除了振幅的统计偏转,提取癫痫脑电图的尖峰分量;然后,根据尖峰分量的特点,用两条抛物线构造结构单元,并提出了优化结构单元中心幅值和宽度的新准则。通过模拟癫痫脑电图数据对该方法进行了验证。结果表明,背景活性得到了充分的抑制,脉冲成分得到了很好的提取。最后,将该方法应用于正常和癫痫患者的脑电图数据。平均检测率为91.62%,对正常脑电信号无误检
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An Automatic EEG Spike Detection Algorithm Using Morphological Filter
Epileptic electroencephalogram data contains transient components and background activities. One of the transients is spike, which occurs randomly with short-duration. Spike detection in EEG is significant for clinical diagnosis of epilepsy. Since it is time consuming to scan spikes manually, an automatic spike detection method is necessary. In this paper, we introduce an automatic spike detection method in epileptic EEG based on morphological filter. Firstly, an average weighted combination of open-closing and close-opening morphological operator, which eliminates statistical deflection of amplitude, is utilized to extract spike component from epileptic EEG. Then, according to the characteristic of spike component, the structure elements are constructed with two parabolas, and a new criterion is put forward to optimize center amplitude and width of the structure elements. The proposed method is evaluated by simulated epileptic EEG data. Results show that background activity is fully restrained and spike component is well extracted. Finally, the method is applied to normal and epileptic EEG data which are actually recorded from nine testees. The average detection rate of spikes is 91.62% and no false detection for normal EEG signals
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