Complexity of multi-channel electroencephalogram signal analysis in childhood absence epilepsy

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Abstract

Absence epilepsy is an important epileptic syndrome in children. Multiscale entropy (MSE), an entropy-based method to measure dynamic complexity at multiple temporal scales, is helpful to disclose the information of brain connectivity. This study investigated the complexity of electroencephalogram (EEG) signals using MSE in children with absence epilepsy. In this research, EEG signals from 19 channels of the entire brain in 21 children aged 5-12 years with absence epilepsy were analyzed. The EEG signals of pre-ictal (before seizure) and ictal states (during seizure) were analyzed by sample entropy (SamEn) and MSE methods. Variations of complexity index (CI), which was calculated from MSE, from the preictal to the ictal states were also analyzed. The entropy values in the pre-ictal state were significantly higher than those in the ictal state. The MSE revealed more differences in analysis compared to the SamEn. The occurrence of absence seizures decreased the CI in all channels. Changes in CI were also significantly greater in the frontal and central parts of the brain, indicating fronto-central cortical involvement of "cortico-thalamo-cortical network" in the occurrence of generalized spike and wave discharges during absence seizures. Moreover, higher sampling frequency was more sensitive in detecting functional changes in the ictal state. There was significantly higher correlation in ictal states in the same patient in different seizures but there were great differences in CI among different patients, indicating that CI changes were consistent in different absence seizures in the same patient but not from patient to patient. This implies that the brain stays in a homogeneous activation state during the absence seizures. In conclusion, MSE analysis is better than SamEn analysis to analyze complexity of EEG, and CI can be used to investigate the functional brain changes during absence seizures.

Figures

  • Fig 1. The illustration of the coarse graining procedure for scales 1 to τ.
  • Table 1. Demographic data of children with absence epilepsy (n = 21). The EEG was done before anti-epileptic drug was given.
  • Fig 2. Themultiscale entropy from a single seizure in a single patient.Multiscale entropy of preictal (blue line) and ictal (red line) states from a single seizure in a single patient, respectively, showing that multiscale entropy with higher sampling frequency (1000Hz, lower panel) can reveal greater difference between ictal and pre-ictal states than lower sampling frequency (200Hz, upper panel). The curve also seems smoother and can be calculated to a larger scale factor. Due to more data points in high sampling frequency, the points on high sampling frequency (lower panel) at scale 20 are corresponding to points on low sampling frequency (upper panel) at scale 4. Each panel represented MSE from one seizure in one patient. The sample entropy was the entropy at scale 1 (marking “*” in the figure).
  • Fig 3. Themean of multi-scale entropy of pre-ictal and ictal states in all patients with sampling frequency of 1000 Hz. Pre-ictal state was represented by the blue line with dots and ictal state was represented by the red line with triangles. The x-axis represented the scale factor and the y-axis represented the multi-scale entropy. The error bars were standard errors. *p<0.01; op<0.05.
  • Table 2. Sample entropy in different channels in pre-ictal and ictal states, showing there were no significant differences in most channels of pre-ictal and ictal state.
  • Table 3. The complexity index for age-matched controls and inter-ictal, pre-ictal and ictal states of absence seizures showing no difference in agematched controls, inter-ictal, and pre-ictal state. However, there was significant decrease of CI values in ictal state compared with pre-ictal state (P < 0.05).
  • Fig 4. Themean of complexity index (CI) in pre-ictal and ictal states in all patients with sampling frequency of 1000Hz. Comparing CI changes in the pre-ictal and ictal states in the occipital areas, the changes were significantly larger in F3, F4, Fz, C3, C4, and Cz. The error bars were standard errors. *p<0.01.
  • Fig 5. The variations of complexity index (CI) in different time period for five patients. Variations of CI at channels Fz and Cz in different time periods for five patients showed consistent CI changes in different seizures during the ictal states for the same patient. In contrast, the CI changes in different patients were not consistent. The different colors represented different seizure episodes in the same patients.

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CITATION STYLE

APA

Weng, W. C., Jiang, G. J. A., Chang, C. F., Lu, W. Y., Lin, C. Y., Lee, W. T., & Shieh, J. S. (2015). Complexity of multi-channel electroencephalogram signal analysis in childhood absence epilepsy. PLoS ONE, 10(8). https://doi.org/10.1371/journal.pone.0134083

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