2016
DOI: 10.1007/s11571-016-9408-y
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Classification of epileptic seizures using wavelet packet log energy and norm entropies with recurrent Elman neural network classifier

Abstract: Electroencephalogram shortly termed as EEG is considered as the fundamental segment for the assessment of the neural activities in the brain. In cognitive neuroscience domain, EEG-based assessment method is found to be superior due to its non-invasive ability to detect deep brain structure while exhibiting superior spatial resolutions. Especially for studying the neurodynamic behavior of epileptic seizures, EEG recordings reflect the neuronal activity of the brain and thus provide required clinical diagnostic … Show more

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Cited by 74 publications
(38 citation statements)
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“…Table 2 shows the Pearson correlation coefficients between EEG parameters and the recovery rates of CBF. Among them, time-domain magnitude and two entropy indices, log energy entropy [25] and Rényi entropy [26], showed a correlation coefficient of approximately 0.78. Figure 4 demonstrates the scatter plots for these three parameters.…”
Section: Eeg Changes With the Recovery Of Cbfmentioning
confidence: 99%
“…Table 2 shows the Pearson correlation coefficients between EEG parameters and the recovery rates of CBF. Among them, time-domain magnitude and two entropy indices, log energy entropy [25] and Rényi entropy [26], showed a correlation coefficient of approximately 0.78. Figure 4 demonstrates the scatter plots for these three parameters.…”
Section: Eeg Changes With the Recovery Of Cbfmentioning
confidence: 99%
“…The model of Kumar et al [4] can discriminate normal data from ictal data with a 100% accuracy and also discriminate interictal data from ictal data with a very low error rate. Methods proposed by Raghu et al [42] yielded excellent performance for both classification tasks on Bonn database. Moreover, previous studies also proposed wavelet-based methods [43,44] and achieved a 100% or almost 100% classification accuracy.…”
Section: Comparison With Previous Studies Based On Bonn Databasementioning
confidence: 91%
“…Table 1 lists the 39 features considered in this work for each segment of the signal dataset. All these have been used succesfully as features in previous EEG seizure detection works [14,[30][31][32][33][34][35][36][37].…”
Section: Feature Extractionmentioning
confidence: 99%
“…Log energy entropy (LogEn) [30] Non-normalized energy based entropy Median frequency (MDF) [31] Division of the EEG power spectrum into two regions Mean frequency (MNF) [31] Mean normalized frequency of the power spectrum Katz fractal dimension (KFD) [31] Index characterizing the fractal pattern complexity Lower quartile 1 (Q1) [31] 25% of the EEG signal Upper quartile 3 (Q3) [31] 75% of the EEG signal Inter quartile range (IQR) [31] Difference between Q3 and Q1 Semi inter quartile deviation (SID) [31] Measure of spread Skewness (Sk) [32] Measure of the degree of symmetry Kurtosis (Kr) [32] Measure of tailedness of the probability distribution Root mean square (RMS) [33] Root mean square of the EEG signal Band power (PB) [33] Average power of the EEG signal (0 to f s /2) Zero crossing (ZC) [33] Number of times that the signal changes of sign Complexity (Comp) [33] Hjorth parameter Mobility (Mob) [33] Hjorth parameter Activity (Act) [33] Hjorth parameter Spurious free dynamic range (SFDR) [34] Length along a EEG signal Curve length (CL) [34] Length along a EEG signal Teager energy (TE) [34] Non linear energy Variance (Var) [34] Variance of the EEG signal Standard deviation (Std) [34] Standard deviation of the signal Mean (Mean) [34] Mean of the EEG signal 1st derivative variance (Var1) [34] Variance of the first derivative 1st derivative standard deviation (Std1) [34] Standard deviation of the first derivative 1st derivative mean (Mean1) [34] Mean of the first derivative 2nd derivative variance (Var2) [34] Variance of the second derivative 2nd derivative standard deviation (Std2) [34] Standard deviation of the second derivative 2nd derivative mean (Mean2) [34] Mean of the second derivative Derivative variance ratio (RatioVar) [36] Ratio of derivative respect absolute of derivative variances Power (P) [35] Power of the signal window 1st difference (1d)…”
Section: Eeg Feature Descriptionmentioning
confidence: 99%