基于三级小波模型的癫痫自动分类系统

IF 0.8 Q4 ROBOTICS
Satyender Jaglan, S. Dhull, Krishnavir Singh
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引用次数: 3

摘要

目的提出一种基于三阶小波模型的癫痫自动分类系统。设计/方法/方法本文提出了一个用于癫痫信号自动分类的三阶段系统。在第一阶段中,三阶小波模型使用正交M带小波变换。该模型将脑电信号分解为三个不同频率的频带。在第二阶段,对分解后的EEG信号进行分析,以找到新的统计特征。使用比较正常和癫痫信号的多参数图来证明特征的统计值。在最后阶段,将特征输入到不同的传统分类器,这些分类器对发作前、发作间(无癫痫发作间隔的癫痫)和发作期(癫痫发作)EEG片段进行分类。发现对于所提出的系统,使用不同的性能参数对BONN大学数据集的KNN、DT、XGBoost、SVM和RF五种不同分类器的性能进行了评估。据观察,RF分类器在上述分类器中表现最好,平均准确率为99.47%。起源/价值癫痫是一种反复发生两次或两次以上自发癫痫发作的神经疾病。脑电信号应用广泛,是检测癫痫的重要方法。EEG信号包含关于大脑电活动的信息。临床医生手动检查脑电图波形以检测癫痫异常,这是一个耗时且容易出错的过程。本文提出了一种基于信号处理(三次小波模型)和基于脑电信号的新特征分类相结合的癫痫自动分类系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tertiary wavelet model based automatic epilepsy classification system
PurposeThis work proposes a tertiary wavelet model based automatic epilepsy classification system using electroencephalogram (EEG) signals.Design/methodology/approachIn this paper, a three-stage system has been proposed for automated classification of epilepsy signals. In the first stage, a tertiary wavelet model uses the orthonormal M-band wavelet transform. This model decomposes EEG signals into three bands of different frequencies. In the second stage, the decomposed EEG signals are analyzed to find novel statistical features. The statistical values of the features are demonstrated using multi-parameters graph comparing normal and epileptic signals. In the last stage, the features are inputted to different conventional classifiers that classify pre-ictal, inter-ictal (epileptic with seizure-free interval) and ictal (seizure) EEG segments.FindingsFor the proposed system the performance of five different classifiers, namely, KNN, DT, XGBoost, SVM and RF is evaluated for the University of BONN data set using different performance parameters. It is observed that RF classifier gives the best performance among the above said classifiers, with an average accuracy of 99.47%.Originality/valueEpilepsy is a neurological condition in which two or more spontaneous seizures occur repeatedly. EEG signals are widely used and it is an important method for detecting epilepsy. EEG signals contain information about the brain's electrical activity. Clinicians manually examine the EEG waveforms to detect epileptic anomalies, which is a time-consuming and error-prone process. An automated epilepsy classification system is proposed in this paper based on combination of signal processing (tertiary wavelet model) and novel features-based classification using the EEG signals.
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CiteScore
3.50
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发文量
21
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