Title :
Accelerometry-Based Home Monitoring for Detection of Nocturnal Hypermotor Seizures Based on Novelty Detection
Author :
Cuppens, K. ; Karsmakers, Peter ; Van de Vel, Anouk ; Bonroy, Bert ; Milosevic, Milica ; Luca, Stijn ; Croonenborghs, Tom ; Ceulemans, Berten ; Lagae, Liesbet ; Van Huffel, Sabine ; Vanrumste, Bart
Author_Institution :
Mobilab of Thomas More Kempen, Geel, Belgium
Abstract :
Nocturnal home monitoring of epileptic children is often not feasible due to the cumbersome manner of seizure monitoring with the standard method of video/EEG-monitoring. We propose a method for hypermotor seizure detection based on accelerometers attached to the extremities. From the acceleration signals, multiple temporal, frequency, and wavelet-based features are extracted. After determining the features with the highest discriminative power, we classify movement events in epileptic and nonepileptic movements. This classification is only based on a nonparametric estimate of the probability density function of normal movements. Such approach allows us to build patient-specific models to classify movement data without the need for seizure data that are rarely available. If, in the test phase, the probability of a data point (event) is lower than a threshold, this event is considered to be an epileptic seizure; otherwise, it is considered as a normal nocturnal movement event. The mean performance over seven patients gives a sensitivity of 95.24% and a positive predictive value of 60.04%. However, there is a noticeable interpatient difference.
Keywords :
accelerometers; electroencephalography; feature extraction; medical disorders; medical signal detection; medical signal processing; paediatrics; patient monitoring; probability; signal classification; video signal processing; acceleration signals; accelerometry-based home monitoring; epileptic children; epileptic movement; epileptic seizure; frequency feature extraction; multiple temporal feature extraction; nocturnal hypermotor seizure detection; nocturnal movement; nonepileptic movement; novelty detection; probability density function; video-EEG-monitoring; wavelet-based feature extraction; Accelerometers; Brain models; Data models; Feature extraction; Monitoring; Probability density function; Accelerometers; home monitoring; hypermotor seizures; novelty detection;
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
DOI :
10.1109/JBHI.2013.2285015