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Classification of Interictal Epileptiform Discharges using Partial Directed Coherence

机译:使用部分定向连贯性嵌入癫痫型排放的分类

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This paper introduces the classification of patterns extracted from different types of interictal epileptiform discharges (IEDs) that includes interictal spike (IS), spike and slow wave complex (SSC), and repetitive spikes and slow wave complex (RSS)), using the partial directed coherence (PDC) analysis. The PDC analysis estimates the intensity and direction of propagation from neural activities generated in the cerebral cortex, and analyzes the coefficients obtained from employing multivariate autoregressive model (MVAR). Features extracted by using PDC are transformed into binary matrices by using surrogate data testing with a 0.05 significance level. The significant propagations are represented as 1 in the binary matrix and 0 otherwise. Binary matrices are converted into binary vectors. These vectors are then selected as the inputs of a multilayer Perceptron (MLP) neural network. The first classifier is trained to distinguish between 2 types of IEDs and tenfold cross validation is implemented to evaluate the system. The performance of the classifier was evaluated, where it achieved the highest F1 score of 100.00% when performed on IS vs RSS and 96.67% on IS vs CSS. The average F1 score of the first classifier obtained was 91.11%. The second classifier was trained to perform all types of IEDs classifications. The classifier yielded an overall accuracy of 86.67% with the highest achieved F1 score of 90.00%. Both classifiers were able to detect and classify different types of IEDs when using the features extracted from PDC with a very high performance.
机译:本文介绍了从不同类型的发作癫痫样放电(IED)的,其包括发作间尖峰(IS),棘慢波络合物(SSC),和重复的尖峰和慢复合波(RSS))的提取的图案的分类,使用部分引导相干(PDC)分析。在PDC分析估计的强度,并从在大脑皮质的神经产生活动传播方向,并分析从采用多变量自回归模型(MVAR)中获得的系数。通过使用PDC提取的特征是通过使用替代数据与0.05显着性水平测试转化成二进制矩阵。的显著传递方向被表示为1的二进制矩阵,否则为0。二值矩阵被转换为二元载体。这些载体然后选择为多层感知器(MLP)神经网络的输入端。第一分类器进行训练2种类型的IED和十倍交叉验证被实现为评估系统之间进行区分。分类器的性能进行了评估,其中在执行时为VS RSS和96.67 %为VS CSS它达到100.00 %的最高F1值。所获得的第一分类的平均F1得分为91.11 %。第二分类被训练来执行所有类型的智能电子设备分类。该分类产生了86.67 %的整体精度最高达到F1得分90.00 %。这两种分类器能够探测到并使用从PDC提取的具有非常高的产品的性能特征进行分类时,不同类型的IED。

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