Automated classification of five seizure onset patterns from intracranial electroencephalogram signals

Clin Neurophysiol. 2020 Jun;131(6):1210-1218. doi: 10.1016/j.clinph.2020.02.011. Epub 2020 Mar 3.

Abstract

Objective: The electroencephalographic (EEG) signals contain information about seizures and their onset location. There are several seizure onset patterns reported in the literature, and these patterns have clinical significance. In this work, we propose a system to automatically classify five seizure onset patterns from intracerebral EEG signals.

Methods: The EEG was segmented by clinicians indicating the start and end time of each seizure onset pattern, the channels involved at onset and the seizure onset pattern. Twelve features that represent the time domain characteristics and signal complexity were extracted from 663 seizures channels of 24 patients. The features were used for classification of the patterns with support vector machine - Error-Correcting Output Codes (SVM-ECOC). Three patient groups with a similar number of seizure segments were created, and one group was used for testing and the rest for training. This test was repeated by rotating the testing and training data.

Results: The feature space formed by both time domain and multiscale sample entropy features perform well in classification of the data. An overall accuracy of 80.7% was obtained with these features and a linear kernel of SVM-ECOC.

Conclusions: The seizure onset patterns consist of varied time and complexity characteristics. It is possible to automatically classify various seizure onset patterns very similarly to visual classification.

Significance: The proposed system could aid the medical team in assessing intracerebral EEG by providing an objective classification of seizure onset patterns.

Keywords: Ictal onset; Ictal spread; Intracranial EEG; Machine learning; Multiscale entropy.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Brain / physiopathology*
  • Electroencephalography*
  • Humans
  • Machine Learning*
  • Seizures / physiopathology*
  • Signal Processing, Computer-Assisted

Grants and funding