A High-Performance Method Based on Features Fusion of EEG Brain Signal and MRI-Imaging Data for Epilepsy Classification

IF 1 4区 工程技术 Q4 INSTRUMENTS & INSTRUMENTATION
Fatma Demirezen Yağmur, Ahmet Sertbaş
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引用次数: 0

Abstract

A 1-dimensional (1D) and 2-dimensional (2D) biomedical signal analysis based on the Discrete Cosine Transform (DCT) feature extraction method was performed to diagnose epilepsy disorders with high accuracy. For this purpose, Electroencephalogram (EEG) data were used for 1D signal analysis and Magnetic Resonance Imaging (MRI) data were used for 2D signal analysis. The feature vectors were obtained by applying 1D DCT together with statistical methods such as mean, variance, standard deviation, kurtosis, and skewness for EEG data and by applying 2D DCT together with the statistical method of mean for MRI data. The most useful features were selected by applying Principal Component Analysis (PCA), Linear Discriminant Analysis (LDA), Forward Selection and Backward Selection methods to the obtained feature vectors. Using EEG stand-alone features, MRI stand-alone features and EEG-MRI fused features, the classification of healthy and epileptic subjects was performed in the form of two clusters. The result of epilepsy classification in this work is 96% success of 1D EEG data by using the features selected by the PCA method, 94% success of 2D MRI data using the selected features by applying the Forward Method, 100% classification accuracy of 1D EEG and 2D MRI datasets by LDA method using the obtained fused features . The article shows that the fused features of EEG-MRI can be used very effectively for the diagnosis of epilepsy.
基于脑电图脑信号和核磁共振成像数据特征融合的高性能癫痫分类方法
基于离散余弦变换(DCT)特征提取方法进行了一维(1D)和二维(2D)生物医学信号分析,以高精度诊断癫痫疾病。为此,脑电图(EEG)数据用于一维信号分析,磁共振成像(MRI)数据用于二维信号分析。对于脑电图数据,通过应用一维 DCT 以及平均值、方差、标准差、峰度和偏度等统计方法获得特征向量;对于磁共振成像数据,通过应用二维 DCT 以及平均值统计方法获得特征向量。通过对获得的特征向量应用主成分分析(PCA)、线性判别分析(LDA)、前向选择和后向选择方法,筛选出最有用的特征。利用脑电图独立特征、磁共振成像独立特征和脑电图-磁共振成像融合特征,以两个聚类的形式对健康受试者和癫痫受试者进行了分类。这项工作的癫痫分类结果是:使用 PCA 方法选择的特征,1D EEG 数据的成功率为 96%;使用前向方法选择的特征,2D MRI 数据的成功率为 94%;使用获得的融合特征,通过 LDA 方法,1D EEG 和 2D MRI 数据集的分类准确率为 100%。文章表明,EEG-MRI 的融合特征可非常有效地用于癫痫诊断。
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来源期刊
Measurement Science Review
Measurement Science Review INSTRUMENTS & INSTRUMENTATION-
CiteScore
2.00
自引率
11.10%
发文量
37
审稿时长
4.8 months
期刊介绍: - theory of measurement - mathematical processing of measured data - measurement uncertainty minimisation - statistical methods in data evaluation and modelling - measurement as an interdisciplinary activity - measurement science in education - medical imaging methods, image processing - biosignal measurement, processing and analysis - model based biomeasurements - neural networks in biomeasurement - telemeasurement in biomedicine - measurement in nanomedicine - measurement of basic physical quantities - magnetic and electric fields measurements - measurement of geometrical and mechanical quantities - optical measuring methods - electromagnetic compatibility - measurement in material science
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