2019
DOI: 10.1109/access.2019.2915610
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Automatic Diagnosis of Epileptic Seizure in Electroencephalography Signals Using Nonlinear Dynamics Features

Abstract: Epilepsy is one of the most common neurological disorders generally characterized by sudden and recurrent unprovoked seizures, which is commonly diagnosed through visual inspection of electroencephalography (EEG) signals. However, since EEG signals are highly complex, nonlinear and nonstationary in nature, both visual inspection and the existing computed aid detection approaches fail to capture the intrinsic dynamics of seizure events, leading to unsatisfactory detection performance. Therefore, an accurate com… Show more

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Cited by 61 publications
(21 citation statements)
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“…techniques such as k-nearest neighbor and Support Vector Machine (SVM) have been extensively researched in literature [33], [34] in the past. Recently, deep neural network techniques have gained attention enabling seizure prediction from preictal EEG patterns with high sensitivity and low FAR [35].…”
Section: Discussionmentioning
confidence: 99%
“…techniques such as k-nearest neighbor and Support Vector Machine (SVM) have been extensively researched in literature [33], [34] in the past. Recently, deep neural network techniques have gained attention enabling seizure prediction from preictal EEG patterns with high sensitivity and low FAR [35].…”
Section: Discussionmentioning
confidence: 99%
“… Ramakrishnan and Murugavel (2019) proposed a new seizure detection model using layered directed acyclic graph SVM (LDAG-SVM), which improved classification accuracy and reduced detection time compared to existing methods. After performing DWT, Chen et al (2019) extracted the non-linear features of each sub-band and inputted them into six different classifiers for training. Finally, they increased the classification accuracy of Least Square-Support Vector Machines (LS-SVM) to 99.5%, which was better than five other classifiers.…”
Section: Classificationmentioning
confidence: 99%
“…[2] İnsan duygularının daha iyi tanınması, etkili iletişime yol açacaktır. Duygu tanıma, hastanelerde, akıllı evlerde ve akıllı şehirlerde IOT(nesnelerin interneti) ve akıllı ortamların tanıtılmasıyla son zamanlarda ilgi görmüştür [3] ve teknolojinin artması bu sistemlerin mobil sistemlerde [4][5][6] sağlık hizmetleri [7,8] eğitim [9,10] gibi farklı alanlarda kullanılmasını sağlamıştır.…”
Section: Anahtar Kelimeler: çOğunluk Oylaması çOk Seviyeli Dalgacık Dönüşümü Eeg Duygu Tanıma Yerel Ikili öRüntü 1 Girişunclassified
“…Chen vd. [4] beynin aktivite sensörleri sayesinde elde edilen kayıtların analizi sonucu epilepsi nöbetlerinin tespit edilmesi ile ilgili çalışma yaptı.…”
Section: Anahtar Kelimeler: çOğunluk Oylaması çOk Seviyeli Dalgacık Dönüşümü Eeg Duygu Tanıma Yerel Ikili öRüntü 1 Girişunclassified