Literature DB >> 26609376

Temporal epilepsy seizures monitoring and prediction using cross-correlation and chaos theory.

Tahar Haddad1, Naim Ben-Hamida2, Larbi Talbi1, Ahmed Lakhssassi1, Sadok Aouini2.   

Abstract

Temporal seizures due to hippocampal origins are very common among epileptic patients. Presented is a novel seizure prediction approach employing correlation and chaos theories. The early identification of seizure signature allows for various preventive measures to be undertaken. Electro-encephalography signals are spectrally broken down into the following sub-bands: delta; theta; alpha; beta; and gamma. The proposed approach consists of observing a high correlation level between any pair of electrodes for the lower frequencies and a decrease in the Lyapunov index (chaos or entropy) for the higher frequencies. Power spectral density and statistical analysis tools were used to determine threshold levels for the lower frequencies. After studying all five sub-bands, the analysis has revealed that the seizure signature can be extracted from the delta band and the high frequencies. High frequencies are defined as both the gamma band and the ripples occurring within the 60-120 Hz sub-band. To validate the proposed approach, six patients from both sexes and various age groups with temporal epilepsies originating from the hippocampal area were studied using the Freiburg database. An average seizure prediction of 30 min, an anticipation accuracy of 72%, and a false-positive rate of 0% were accomplished throughout 200 h of recording time.

Entities:  

Keywords:  Freiburg database; Lyapunov index; alpha subbands; beta subbands; biomedical electrodes; chaos; chaos theory; cross-correlation theory; delta subbands; electrodes; electroencephalography; electroencephalography signals; entropy; epileptic patients; false-positive rate; frequency 60 Hz to 120 Hz; gamma subbands; hippocampal area; medical disorders; medical signal processing; neurophysiology; patient monitoring; power spectral density; seizure signature; statistical analysis; temporal epilepsy seizure monitoring; temporal epilepsy seizure prediction; theta subbands; threshold levels; time 200 h

Year:  2014        PMID: 26609376      PMCID: PMC4611494          DOI: 10.1049/htl.2013.0010

Source DB:  PubMed          Journal:  Healthc Technol Lett        ISSN: 2053-3713


  7 in total

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  4 in total

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