A Nonlinear Model of Newborn EEG with Nonstationary Inputs
Abstract
Newborn EEG is a complex multiple channel
signal that displays nonstationary and nonlinear characteristics.
Recent studies have focussed on characterizing the
manifestation of seizure on the EEG for the purpose of
automated seizure detection. This paper describes a novel
model of newborn EEG that can be used to improve seizure
detection algorithms. The new model is based on a nonlinear
dynamic system; the Duffing oscillator. The Duffing oscillator
is driven by a nonstationary impulse train to simulate
newborn EEG seizure and white Gaussian noise to simulate
newborn EEG background. The use of a nonlinear dynamic
system reduces the number of parameters required in the
model and produces more realistic, life-like EEG compared
with existing models. This model was shown to account for
54% of the linear variation in the time domain, for seizure,
and 85% of the linear variation in the frequency domain, for
background. This constitutes an improvement in combined
performance of 6%, with a reduction from 48 to 4 model
parameters, compared to an optimized implementation of the
best performing existing model.
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- Technology Innovation and Engineering Education Unit [63 items ]