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A subband correlation-based method for the automatic detection of epilepsy and seizure in the dual tree complex wavelet transform domain

机译:基于子带相关的基于相关方法,用于自动检测双树复杂小波变换域中的癫痫和癫痫发作

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In this paper, a sub-band correlation-based method is proposed for the automatic detection of epilepsy and seizure. The analysis is carried out by decomposing the electroencephalogram (EEG) signals, collected from a publicly available EEG database, into the dual tree complex wavelet transform(DT-CWT) domain. An Artificial Neural Network(ANN) is employed as a classifier where the maximum cross-correlation among the DT-CWT sub-bands are utilized as the features. Studies are conducted using EEG signals for four clinically relevant classification cases which include healthy vs seizure, non-seizure vs seizure, ictal vs inter-ictal and finally, healthy vs inter-ictal vs ictal recordings. The ANN-based proposed method provides 100% accuracy with 100% sensitivity and 100% specificity for the first three cases and also a high accuracy for the fourth case. In addition, the proposed method is computationally fast in comparison to the several time-frequency and EMD-based algorithms available in the EEG literature.
机译:本文提出了一种基于子带相关的方法,用于自动检测癫痫和癫痫发作。通过将从公共可用的EEG数据库收集的脑电图(EEG)信号分解到双树复小波变换(DT-CWT)域来进行分析来执行分析。人工神经网络(ANN)用作分类器,其中DT-CWT子带之间的最大互相关用作特征。使用EEG信号进行四种临床相关分类案例进行,其中包括健康的VS癫痫发作,非癫痫发作,ICTAL与INTAL间,最终,健康与INTAL间VS ICTAL录音。基于ANN的提出方法提供了100%的精度,对前三个病例100%的灵敏度和100%特异性,并且对于第四种情况也是高精度。此外,与EEG文献中可用的多个时间频率和基于EMD的算法相比,所提出的方法是快速的。

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