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Classification of Normal Ictal and Inter-ictal EEG via Direct Quadrature and Random Forest Tree

机译:通过直接正交和随机林树对正常局部和局部脑电图进行分类

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摘要

This paper presents an accurate nonlinear classification method that can help physicians diagnose seizure in electroencephalographic (EEG) signal characterized by a disturbance in temporal and spectral content. This is accomplished by applying four steps. First, different EEG signals containing healthy, ictal and seizure-free (inter-ictal) activities are decomposed by empirical mode decomposition method. The instantaneous amplitudes and frequencies of resulted bands (intrinsic mode functions, IMF) are then tracked by the direct quadrature method (DQ). In contrast to other approaches, DQ cancels the effect of amplitude modulation on frequency calculation. The dissociation between instantaneous amplitude and frequency information is therefore fully achieved to avoid features confusion. Afterwards, the Shannon entropy values of both sets of instantaneous values (amplitudes and frequencies)—related to every IMF—are calculated. Finally, the obtained entropy values are classified by random forest tree. The proposed procedure yields 100% accuracy for (healthy)/(ictal) and 98.3–99.7% for (healthy)/(ictal)/(interictal) classification problems. The suggested method is hence robust, accurate, fast, user-friendly, data driven with open access interpretability.
机译:本文提出了一种准确的非线性分类方法,可以帮助医生诊断以时间和频谱内容受干扰为特征的脑电图(EEG)信号发作。这可以通过应用四个步骤来完成。首先,通过经验模式分解方法分解包含健康,无发作和无发作(发作间)活动的不同脑电信号。然后,通过直接正交方法(DQ)跟踪所得频带的瞬时幅度和频率(本征模式函数,IMF)。与其他方法相比,DQ消除了幅度调制对频率计算的影响。因此,可以完全实现瞬时幅度和频率信息之间的分离,从而避免了特征混淆。然后,计算与每个IMF相关的两组瞬时值(幅度和频率)的香农熵值。最后,通过随机森林树对获得的熵值进行分类。拟议的程序对(健康)/(发作)分类的准确性为100%,对(健康)/(发作)/(发作间的)分类问题的准确性为98.3–99.7%。因此,建议的方法是健壮,准确,快速,用户友好,具有开放访问可解释性的数据驱动的。

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