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An Automated Approach for Epilepsy Detection Based on Tunable Q-Wavelet and Firefly Feature Selection Algorithm

机译:基于可调Q-小波和Firefly特征选择算法的癫痫检测自动化方法

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Detection of epileptic seizures using an electroencephalogram (EEG) signals is a challenging task that requires a high level of skilled neurophysiologists. Therefore, computer-aided detection provides an asset to the neurophysiologist in interpreting the EEG. This paper introduces a novel approach to recognize and classify the epileptic seizure and seizure-free EEG signals automatically by an intelligent computer-aided method. Moreover, the prediction of the preictal phase of the epilepsy is proposed to assist the neurophysiologist in the clinic. The proposed method presents two perspectives for the EEG signal processing to detect and classify the seizures and seizure-free signals. The first perspectives consider the EEG signal as a nonlinear time series. A tunable Q-wavelet is applied to decompose the signal into smaller segments called subbands. Then a chaotic, statistical, and power spectrum features sets are extracted from each subband. The second perspectives process the EEG signal as an image; hence the gray-level co-occurrence matrix is determined from the image to obtain the textures of contrast, correlation, energy, and homogeneity. Due to a large number of features obtained, a feature selection algorithm based on firefly optimization was applied. The firefly optimization reduces the original set of features and generates a reduced compact set. A random forest classifier is trained for the classification and prediction of the seizures and seizure-free signals. Afterward, a dataset from the University of Bonn, Germany, is used for benchmarking and evaluation. The proposed approach provided a significant result compared with other recent work regarding accuracy, recall, specificity, F-measure, and Matthew’s correlation coefficient.
机译:使用脑电图(EEG)信号检测癫痫发作是一种具有挑战性的任务,需要高水平的熟练神经生理学家。因此,计算机辅助检测为神经生理学家提供解释脑电图的资产。本文介绍了一种新的方法来识别和分类癫痫癫痫癫痫发作和无智能的EEG信号,通过智能计算机辅助方法。此外,提出了对癫痫的预测相的预测,以帮助临床中的神经生理学家。所提出的方法呈现了eEG信号处理的两个视角,以检测和分类癫痫发作和无癫痫发出信号。第一透视图将EEG信号视为非线性时间序列。应用可调谐Q-小波以将信号分解为称为子带的较小段。然后从每个子带中提取混沌,统计和功率谱特征集。第二个透视图处理EEG信号作为图像;因此,从图像确定灰度级共发生矩阵,以获得对比度,相关性,能量和均匀性的纹理。由于获得了大量特征,应用了一种基于萤火虫优化的特征选择算法。 Firefly优化减少了原始的功能集,并产生了减少的紧凑型集。随机森林分类器培训用于分类和预测癫痫发作和无癫痫发出信号。之后,来自德国波恩大学的数据集,用于基准和评估。与准确性,召回,特异性,F测量和马修的相关系数相比,该方法提供了显着的结果。

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