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首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Wavelet-based sparse functional linear model with applications to EEGs seizure detection and epilepsy diagnosis
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Wavelet-based sparse functional linear model with applications to EEGs seizure detection and epilepsy diagnosis

机译:基于小波的稀疏函数线性模型在脑电图癫痫发作检测和癫痫诊断中的应用

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摘要

In epilepsy diagnosis or epileptic seizure detection, much effort has been focused on finding effective combination of feature extraction and classification methods. In this paper, we develop a wavelet-based sparse functional linear model for representation of EEG signals. The aim of this modeling approach is to capture discriminative random components of EEG signals using wavelet variances. To achieve this goal, a forward search algorithm is proposed for determination of an appropriate wavelet decomposition level. Two EEG databases from University of Bonn and University of Freiburg are used for illustration of applicability of the proposed method to both epilepsy diagnosis and epileptic seizure detection problems. For this data considered, we show that wavelet-based sparse functional linear model with a simple classifier such as 1-NN classification method leads to higher classification results than those obtained using other complicated methods such as support vector machine. This approach produces a 100 % classification accuracy for various classification tasks using the EEG database from University of Bonn, and outperforms many other state-of-the-art techniques. The proposed classification scheme leads to 99 % overall classification accuracy for the EEG data from University of Freiburg. ? 2012 International Federation for Medical and Biological Engineering.
机译:在癫痫诊断或癫痫发作检测中,许多努力集中在寻找特征提取和分类方法的有效组合上。在本文中,我们开发了基于小波的稀疏函数线性模型来表示脑电信号。这种建模方法的目的是使用小波方差捕获脑电信号的可辨别随机分量。为了实现这个目标,提出了一种前向搜索算法,用于确定适当的小波分解水平。来自波恩大学和弗莱堡大学的两个EEG数据库用于说明该方法对癫痫诊断和癫痫发作检测问题的适用性。对于所考虑的数据,我们表明,使用简单分类器(例如1-NN分类方法)的基于小波的稀疏函数线性模型比使用其他复杂方法(例如支持向量机)获得的分类结果具有更高的分类结果。使用波恩大学的EEG数据库,此方法可对各种分类任务产生100%的分类精度,并且优于许多其他最新技术。所提出的分类方案可使弗莱堡大学的EEG数据整体分类准确率达到99%。 ? 2012国际医学和生物工程联合会。

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