Abstract

PurposeThe development of online seizure detection techniques as well as prediction methods are very critical. Patient quality of life could improve significantly if the beginning of a seizure could be predicted or detected early.MethodsThis paper proposes a method to automatically detect epileptic seizures based on adaptive filters and signal averaging. The process was applied to 425 h of epileptic EEG records from CHB-MIT EEG database. The developed algorithm does not require any training since it is simple and involves low processing time. Therefore, it can be implemented in real time as well as offline.ResultsThree thresholds were evaluated and calculated as 10, 20 and 30 times the median value of ST(n). The threshold of 20 showed the best relation between SEN and SPE. In this case, these indexes reached average values, across all the patients, of 90.3% and 73.7% respectively.ConclusionsThe proposed method has several strengths, for example: that no training is required due to the automatic adaptation to the threshold to each new EEG record. The algorithm could be implemented in real time. It is simple owing to its low processing time which makes it suitable for the analysis of long-term records and a large number of channels. The system could be implemented on electronic devices for warning purposes (of the seizure onset). It employs methods to process signals that were not used with epileptic seizure detection in EEG, such as in the case of adaptive predictive filters.

Highlights

  • The electroencephalogram (EEG) records all the electrical activity of the brain and EEG is used to evaluate the functioning of this complex organ

  • This process is reflected in the EEG records through the presence of spikes known as an epileptic seizure

  • This paper proposes an algorithm based on adaptive filters and signal averaging to automatically detect, in real time, EEG seizure segments

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Summary

Introduction

The electroencephalogram (EEG) records all the electrical activity of the brain and EEG is used to evaluate the functioning of this complex organ This record results in a set of waves with certain properties like frequency, amplitude and morphology. The epileptic activity begins when a focal energy discharge is generated in a small area of the brain [3]. This process is reflected in the EEG records through the presence of spikes known as an epileptic seizure. The EEG is the most non-invasive and easiest clinical tool to infer the onset of this process This activity generated in a small area of the brain usually appears synchronously in the nearest areas [3].

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