M. Dumpelmann et Ce. Elger, AUTOMATIC DETECTION OF EPILEPTIFORM SPIKES IN THE ELECTROCORTICOGRAM - A COMPARISON OF 2 ALGORITHMS, Seizure, 7(2), 1998, pp. 145-152
The detection and analysis of epileptiform spikes is of major importan
ce for the presurgical evaluation of epilepsy patients concerning the
localization of the epileptogenic zone. To examine the reliability of
automatic spike detection software for intracranial subdural strip and
intrahippocampal depth recordings, the results of two algorithms were
compared with those of two human reviewers. The first is a newly deve
loped two-stage algorithm whose first stage uses the enhanced predicti
on error of an updating linear predictor of the electrocorticogram (EC
oG) to select candidates for the following mimetic rule-based system.
The second system is the well-known rule-based algorithm developed by
Gotman. Both systems achieved only a surprisingly small number of comm
on detections (32 and 24%) accompanied by a high number of false detec
tions (65 and 78%). Though the results were better for the first syste
m, the clinical use of the automatic spike detection systems should be
limited to the following purposes. 1. To achieve data reduction befor
e visual inspection of the spike candidates. 2. To get an overview of
the spatial distribution of spike counts. 3. To obtain a data basis fo
r the analysis of quantitative spike parameters.