Conference Proceedings

Gaussian mixture model for the identification of psychogenic non-epileptic seizures using a wearable accelerometer sensor

S Kusmakar, R Muthuganapathy, B Yan, TJ O'Brien, M Palaniswami

Proceedings of the Annual International Conference of the IEEE Engineering in Medicine and Biology Society EMBS | IEEE | Published : 2016

Abstract

Any abnormal hypersynchronus activity of neurons can be characterized as an epileptic seizure (ES). A broad class of non-epileptic seizures is comprised of Psychogenic non-epileptic seizures (PNES). PNES are paroxysmal events, which mimics epileptic seizures and pose a diagnostic challenge with epileptic seizures due to their clinical similarities. The diagnosis of PNES is done using video-electroencephalography (VEM) monitoring. VEM being a resource intensive process calls for alternative methods for detection of PNES. There is now an emerging interest in the use of accelerometer based devices for the detection of seizures. In this work, we present an algorithm based on Gaussian mixture mod..

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University of Melbourne Researchers