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EEG spike detection with a Kohonen feature map
ISSN
0090-6964
Date Issued
2000
Author(s)
DOI
10.1114/1.1331312
Abstract
Artificial neural networks are widely used for pattern recognition tasks. For spike detection in electroencephalography (EEC;), feedforward networks trained by the back-propagation algorithm are preferred by most authors. Opposed to this. we examined the off-line spike detection abilities of a Kohonen feature map (KFM), which is different from feedforward networks in certain aspects. The EEG data for the training set were obtained from patients with intractable partial epilepsies of mesiotemporal (n=2) or extratemporal (n=2) origin. For each patient the training set for the KFM included the same patterns of background activity and artifacts as well as the typical individual spike patterns. Three different-sized networks were examined ( 15X15 cells, 25X25 cells, and 60X60 cells in the Kohonen layer). To investigate the quality of spike detection the results obtained with the KFM were compared with the findings of two board-certified electroencephalographers. Application of a threshold based on the partial invariance of spike recognition against translation of the EEG provided an average sensitivity and selectivity of 80.2% at crossover threshold (71%-86%) depending on the networksize and noise. Multichannel EEG processing in real time will be available soon. In conclusion, pattern-based automated spike detection with a KFM is a promising approach in clinical epileptology and stems to be at least as accurate as other more-established methods of spike detection. (C) 2000 Biomedical Engineering Society. [S0090-6964(00)01011-0].