Resumen:
Seizure detection plays a central role in most aspects of epilepsy care. Understanding the complex
epileptic signals system is a typical problem in electroencephalographic (EEG) signal processing. This problem requires
different analysis to reveal the underlying behavior of EEG signals. An example of this is the non-linear dynamic:
mathematical tools applied to biomedical problems with the purpose of extracting features or quantifying EEG data.
In this work, we studied epileptic seizure detection independently in each brain rhythms from a multilevel 1D wavelet
decomposition followed by the independent component analysis (ICA) representation of multivariate EEG signals.
Next, the largest Lyapunov exponents (LLE) and their scaling given by its ± standard deviation are estimated in
order to obtain the vectors to be used during the training and classification stage. With this information, a logistic
regression classification is proposed with the aim of discriminating between seizure and non-seizure. Preliminary
experiments with 99 epileptic events suggest that the proposed methodology is a powerful tool for detecting seizures
in epileptic signals in terms of classification accuracy, sensitivity and specificity