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Epilepsy diagnosis using probability density functions of EEG signals

机译:使用EEG信号的概率密度函数进行癫痫诊断

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In this paper, the equal frequency discretization (EFD) based probability density approach was proposed to be used in the diagnosis of epilepsy from electroencephalogram (EEG) signals. For this aim, EEG signals were decomposed by using the discrete wavelet discretization (DWT) method into subbands, the coefficients in each subband were discretized to several intervals by EFD method, and the probability density of each subband of each EEG segment was computed according to the number of coefficients in discrete intervals. Then, two probability density functions were defined by means of the curve fitting over the probability densities of the sets of both healthy subjects and epilepsy patients. EEG signals were classified by applying the mean square error (MSE) criterion to these functions. The result of the classification was evaluated by using the ROC analysis, which indicated 82.50% success in the diagnosis of epilepsy. As a result, the EFD based probability density approach may be considered as an alternative way to diagnose epilepsy disease on EEG signals.
机译:本文提出了一种基于等频离散化(EFD)的概率密度方法,用于从脑电图(EEG)信号诊断癫痫。为此,使用离散小波离散化(DWT)方法将脑电信号分解为子带,通过EFD方法将每个子带的系数离散为几个间隔,并根据以下公式计算每个EEG段的每个子带的概率密度离散间隔中的系数数。然后,通过对健康受试者和癫痫患者的集合的概率密度进行曲线拟合来定义两个概率密度函数。通过将均方误差(MSE)准则应用于这些函数来对EEG信号进行分类。使用ROC分析评估分类结果,表明癫痫诊断成功率为82.50%。结果,基于EFD的概率密度方法可以被认为是诊断EEG信号上的癫痫病的替代方法。

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