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Diagnosis of Encephalopathy Based on Energies of EEG Subbands Using Discrete Wavelet Transform and Support Vector Machine

机译:基于离散小波变换和支持向量机的脑电子带能量诊断脑病

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摘要

EEG analysis in the field of neurology is customarily done using frequency domain methods like fast Fourier transform. A complex biomedical signal such as EEG is best analysed using a time-frequency algorithm. Wavelet decomposition based analysis is a relatively novel area in EEG analysis and for extracting its subbands. This work aims at exploring the use of discrete wavelet transform for extracting EEG subbands in encephalopathy. The subband energies were then calculated and given as feature sets to SVM classifier for identifying cases of encephalopathy from normal healthy subjects. Out of various combinations of subband energies, energy of delta subband yielded highest performance parameters for SVM classifier with an accuracy of 90.4% in identifying encephalopathy cases.
机译:神经病学领域的脑电图分析通常使用频域方法(例如快速傅立叶变换)进行。最好使用时频算法分析复杂的生物医学信号,例如EEG。基于小波分解的分析在EEG分析及其子带提取中是一个相对新颖的领域。这项工作旨在探索离散小波变换在脑病中提取脑电亚带的用途。然后计算子带能量,并将其作为特征集提供给SVM分类器,以识别正常健康受试者的脑病病例。在子带能量的各种组合中,δ子带能量为SVM分类器提供了最高的性能参数,在识别脑病病例中的准确性为90.4%。

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