Detection of focal epileptiform events in the EEG by spatio-temporal dipole clustering

Abstract Objective Methods for the detection of epileptiform events can be broadly divided into two main categories: temporal detection methods that exploit the EEG’s temporal characteristics, and spatial detection methods that base detection on the results of an implicit or explicit source analysis...

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Veröffentlicht in:Clinical neurophysiology 2008-08, Vol.119 (8), p.1756-1770
Hauptverfasser: Van Hese, Peter, Vanrumste, Bart, Hallez, Hans, Carroll, Grant J, Vonck, Kristl, Jones, Richard D, Bones, Philip J, D’Asseler, Yves, Lemahieu, Ignace
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Sprache:eng
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Zusammenfassung:Abstract Objective Methods for the detection of epileptiform events can be broadly divided into two main categories: temporal detection methods that exploit the EEG’s temporal characteristics, and spatial detection methods that base detection on the results of an implicit or explicit source analysis. We describe how the framework of a spatial detection method was extended to improve its performance by including temporal information. This results in a method that provides (i) automated localization of an epileptogenic focus and (ii) detection of focal epileptiform events in an EEG recording. For the detection, only one threshold value needs to be set. Methods The method comprises five consecutive steps: (1) dipole source analysis in a moving window, (2) automatic selection of focal brain activity, (3) dipole clustering to arrive at the identification of the epileptiform cluster, (4) derivation of a spatio-temporal template of the epileptiform activity, and (5) template matching. Routine EEG recordings from eight paediatric patients with focal epilepsy were labelled independently by two experts. The method was evaluated in terms of (i) ability to identify the epileptic focus, (ii) validity of the derived template, and (iii) detection performance. The clustering performance was evaluated using a leave-one-out cross validation. Detection performance was evaluated using Precision-Recall curves and compared to the performance of two temporal (mimetic and wavelet based) and one spatial (dipole analysis based) detection methods. Results The method succeeded in identifying the epileptogenic focus in seven of the eight recordings. For these recordings, the mean distance between the epileptic focus estimated by the method and the region indicated by the labelling of the experts was 8 mm. Except for two EEG recordings where the dipole clustering step failed, the derived template corresponded to the epileptiform activity marked by the experts. Over the eight EEGs, the method showed a mean sensitivity and selectivity of 92 and 77%, respectively. Conclusions The method allows automated localization of the epileptogenic focus and shows good agreement with the region indicated by the labelling of the experts. If the dipole clustering step is successful, the method allows a detection of the focal epileptiform events, and gave a detection performance comparable or better to that of the other methods. Significance The identification and quantification of epileptiform events i
ISSN:1388-2457
1872-8952
DOI:10.1016/j.clinph.2008.04.009