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Automatic seizure detection based on star graph topological indices. | LitMetric

Automatic seizure detection based on star graph topological indices.

J Neurosci Methods

Department of Information and Communication Technologies, Computer Science Faculty, University of A Coruña, A Coruña, Spain.

Published: August 2012

AI Article Synopsis

  • Recognizing seizures is crucial for diagnosing epilepsy, as they occur sporadically and unpredictably, necessitating automatic detection methods using long-term EEG data.
  • The study introduces a novel approach to EEG signal analysis that utilizes star graph topological indices (SGTIs) to encode signal information, aiding in differentiating epileptic from non-epileptic records.
  • This new SGTI-based method yields comparable results to existing techniques like time-frequency analysis and neural networks, offering a simpler and faster alternative for seizure detection.

Article Abstract

The recognition of seizures is very important for the diagnosis of patients with epilepsy. The seizure is a process of rhythmic discharge in brain and occurs rarely and unpredictably. This behavior generates a need of an automatic detection of seizures by using the signals of long-term electroencephalographic (EEG) recordings. Due to the non-stationary character of EEG signals, the conventional methods of frequency analysis are not the best alternative to obtain good results in diagnostic purpose. The present work proposes a method of EEG signal analysis based on star graph topological indices (SGTIs) for the first time. The signal information, such as amplitude and time occurrence, is codified into invariant SGTIs which are the basis for the classification models that can discriminate the epileptic EEG records from the non-epileptic ones. The method with SGTIs and the simplest linear discriminant methods provide similar results to those previously published, which are based on the time-frequency analysis and artificial neural networks. Thus, this work proposes a simpler and faster alternative for automatic detection of seizures from the EEG recordings.

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Source
http://dx.doi.org/10.1016/j.jneumeth.2012.07.004DOI Listing

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