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Application of tunable-Q wavelet transform based nonlinear features in epileptic seizure detection

机译:可调谐Q小波变换基于非线性特征在癫痫癫痫发作检测中的应用

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Automated epileptic seizure detection is essential for advancing epilepsy diagnosis and assisting medical professionals. Automated seizure detection using Electroencephalogram signals has gained significant interest in recent past and appeared to be an expedient approach in both disease diagnosis and treatment. In this paper, a new methodology of automated epileptic seizure detection using Tunable Q-wavelet Transform (TQWT) based nonlinear feature extraction is presented. The Electroencephalogram dataset studied in present work includes trials from non-seizure, pre-seizure and seizure EEG activity. Proposed methodology is carried out in three methodological steps. In first step, Electroencephalogram activity is decomposed into optimum number of time-frequency sub-bands using TQWT. In second step, three nonlinear features viz. approximate entropy, Higuchi's fractal dimension and Katz's fractal dimension are estimated from decomposed sub-bands and four feature vectors are prepared. Classification of estimated feature vector is performed using two soft computing techniques viz. support vector machine and random forest tree classifier in the third step. Experimental results illustrate efficacy of estimated features in epilepsy detection task. Classification results demonstrate that proposed methodology of nonlinear feature estimation preserves efficiency and simplicity and is appropriate for epileptic seizure detection.
机译:自动癫痫癫痫发作检测对于推进癫痫诊断和协助医疗专业人员至关重要。利用脑电图信号自动癫痫发作检测在近期过去已经获得了重大兴趣,并且似乎是疾病诊断和治疗方面的权宜之计。本文介绍了使用可调谐Q-小波变换(TQWT)的非线性特征提取的自动癫痫癫痫癫痫检测的新方法。在现有工作中研究的脑电图数据集包括来自非癫痫发作,预癫痫发作和癫痫发作的试验。提出的方法论是三种方法步骤进行。在第一步中,脑电图活动使用TQWT分解成最佳的时频子带数。在第二步中,三个非线性具有viz。近似熵,Higuchi的分形尺寸和KATZ的分形尺寸估计来自分解的子带,并准备了四个特征向量。使用两个软计算技术viz进行估计的特征向量的分类。在第三步中支持向量机和随机林树分类器。实验结果表明癫痫检测任务中估计特征的疗效。分类结果表明,非线性特征估计的提出方法可以保留效率和简单性,适用于癫痫癫痫发作检测。

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