Twelve individuals with medically refractory partial seizures had undergone EEG-video-audio (EVA) monitoring over 1-15 (mean 10.5) days. We selectively reexamined available 15-channel EEGs (video-cassettes) totaling 461 h and containing 253 EEG focal seizures. Computer analysis (CA) of these bipolar records were performed using a mimetic method of seizure detection at 6 successive computer settings. We determined the computer parameters at which this method correctly detected a reasonably large percentage of seizures (81.42%) while generating an acceptable rate of false positive results (5.38/h). These parameters were adopted as the default setting for identifying focal EEG seizure patterns in all subsequent long-term bipolar scalp and sphenoidal recordings. Factors hindering or facilitating automatic seizure identification are discussed. It is concluded that on-line computer detection of focal EEG seizure patterns by this method offers a satisfactory alternative to and represents a distinct improvement over the extremely time consuming and fatiguing off-line fast visual review (FVR). Combining CA with seizure signaling (SS) by the patients and other observers increased the correct detections to 85.38%. CA is best used in conjunction with SS.

Long-term EEG-video-audio monitoring: computer detection of focal EEG seizure patterns / Pauri, Flavia; Pierelli, Francesco; Chatrian, Ge; Erdly, Ww. - In: ELECTROENCEPHALOGRAPHY AND CLINICAL NEUROPHYSIOLOGY. - ISSN 0013-4694. - ELETTRONICO. - 82(1):(1992), pp. 1-9. [10.1016/0013-4694(92)90175-H]

Long-term EEG-video-audio monitoring: computer detection of focal EEG seizure patterns.

PAURI, FLAVIA;PIERELLI, Francesco;
1992

Abstract

Twelve individuals with medically refractory partial seizures had undergone EEG-video-audio (EVA) monitoring over 1-15 (mean 10.5) days. We selectively reexamined available 15-channel EEGs (video-cassettes) totaling 461 h and containing 253 EEG focal seizures. Computer analysis (CA) of these bipolar records were performed using a mimetic method of seizure detection at 6 successive computer settings. We determined the computer parameters at which this method correctly detected a reasonably large percentage of seizures (81.42%) while generating an acceptable rate of false positive results (5.38/h). These parameters were adopted as the default setting for identifying focal EEG seizure patterns in all subsequent long-term bipolar scalp and sphenoidal recordings. Factors hindering or facilitating automatic seizure identification are discussed. It is concluded that on-line computer detection of focal EEG seizure patterns by this method offers a satisfactory alternative to and represents a distinct improvement over the extremely time consuming and fatiguing off-line fast visual review (FVR). Combining CA with seizure signaling (SS) by the patients and other observers increased the correct detections to 85.38%. CA is best used in conjunction with SS.
1992
01 Pubblicazione su rivista::01a Articolo in rivista
Long-term EEG-video-audio monitoring: computer detection of focal EEG seizure patterns / Pauri, Flavia; Pierelli, Francesco; Chatrian, Ge; Erdly, Ww. - In: ELECTROENCEPHALOGRAPHY AND CLINICAL NEUROPHYSIOLOGY. - ISSN 0013-4694. - ELETTRONICO. - 82(1):(1992), pp. 1-9. [10.1016/0013-4694(92)90175-H]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/131391
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