Measure profile surrogates: A method to validate the performance of epileptic seizure prediction algorithms
Articolo
Data di Pubblicazione:
2004
Abstract:
In a growing number of publications it is claimed that epileptic seizures can be predicted by analyzing the
electroencephalogram (EEG) with different characterizing measures. However, many of these studies suffer
from a severe lack of statistical validation. Only rarely are results passed to a statistical test and verified against
some null hypothesis H0 in order to quantify their significance. In this paper we propose a method to statistically
validate the performance of measures used to predict epileptic seizures. From measure profiles rendered
by applying a moving-window technique to the electroencephalogram we first generate an ensemble of surrogates
by a constrained randomization using simulated annealing. Subsequently the seizure prediction algorithm
is applied to the original measure profile and to the surrogates. If detectable changes before seizure onset exist,
highest performance values should be obtained for the original measure profiles and the null hypothesis. "The
measure is not suited for seizure prediction" can be rejected. We demonstrate our method by applying two
measures of synchronization to a quasicontinuous EEG recording and by evaluating their predictive performance
using a straightforward seizure prediction statistics. We would like to stress that the proposed method is
rather universal and can be applied to many other prediction and detection problems.
Tipologia CRIS:
01.01 Articolo in rivista
Elenco autori:
Kreuz, Thomas
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