Abstract

Epileptic diseases take EEG as an important basis for clinical judgment, and fractal algorithms were often used to analyze electroencephalography (EEG) signals. However, the variation trends of fractal dimension (D) were opposite in the literature, i.e., both D decreasing and increasing were reported in previous studies during seizure status relative to the normal status, undermining the feasibility of fractal algorithms for EEG analysis to detect epileptic seizures. In this study, two algorithms with high accuracy in the D calculation, Higuchi and roughness scaling extraction (RSE), were used to study D variation of EEG signals with seizures. It was found that the denoising operation had an important influence on D variation trend. Moreover, the D variation obtained by RSE algorithm was larger than that by Higuchi algorithm, because the non-fractal nature of EEG signals during normal status could be detected and quantified by RSE algorithm. The above findings in this study could be promising to make more understandings of the nonlinear nature and scaling behaviors of EEG signals.

Highlights

  • Electroencephalography (EEG) signals have been widely used in various fields [1,2,3,4,5]in recent years because it is easy to measure and could be displayed in real time

  • All 109 groups of 800-s EEG signals were analyzed by using Higuchi and roughness scaling extraction (RSE) algorithms

  • Dc could quantify the complexity of EEG signals, and the noise had a significant influence on Dc variation trends of EEG signals

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Summary

Introduction

Electroencephalography (EEG) signals have been widely used in various fields [1,2,3,4,5]. It was found that some publications reported that D in the seizure status had a downward trend [21,24,25], while other literature reported an upward trend of D variation [20,22,23,26,27], and such a significant divergence and its cause had not been studied in the available literature Such a significant difference seriously undermined the feasibility and even the reliability of fractal algorithms in epileptic detection. In this study, based on EEG signals of the CHB-MIT Scalp EEG Database, both Higuchi and RSE algorithms with high accuracy in D calculation were used to calculate D values of epileptic EEG signals and study the D variation during seizure status compared with normal status. The effects of signal denoising and algorithm accuracy in the detection of epileptic seizures were discussed based on the statistical analysis on the caculated results

EEG Signals
Higuchi Algorithm
RSE Algorithm
Analysis Flow
Results and Discussion
Conclusions
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