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Development and validation of a seizure prediction model in critically ill children.

Authors :
Yang A
Arndt DH
Berg RA
Carpenter JL
Chapman KE
Dlugos DJ
Gallentine WB
Giza CC
Goldstein JL
Hahn CD
Lerner JT
Loddenkemper T
Matsumoto JH
Nash KB
Payne ET
Sánchez Fernández I
Shults J
Topjian AA
Williams K
Wusthoff CJ
Abend NS
Source :
Seizure [Seizure] 2015 Feb; Vol. 25, pp. 104-11. Date of Electronic Publication: 2014 Oct 05.
Publication Year :
2015

Abstract

Purpose: Electrographic seizures are common in encephalopathic critically ill children, but identification requires continuous EEG monitoring (CEEG). Development of a seizure prediction model would enable more efficient use of limited CEEG resources. We aimed to develop and validate a seizure prediction model for use among encephalopathic critically ill children.<br />Method: We developed a seizure prediction model using a retrospectively acquired multi-center database of children with acute encephalopathy without an epilepsy diagnosis, who underwent clinically indicated CEEG. We performed model validation using a separate prospectively acquired single center database. Predictor variables were chosen to be readily available to clinicians prior to the onset of CEEG and included: age, etiology category, clinical seizures prior to CEEG, initial EEG background category, and inter-ictal discharge category.<br />Results: The model has fair to good discrimination ability and overall performance. At the optimal cut-off point in the validation dataset, the model has a sensitivity of 59% and a specificity of 81%. Varied cut-off points could be chosen to optimize sensitivity or specificity depending on available CEEG resources.<br />Conclusion: Despite inherent variability between centers, a model developed using multi-center CEEG data and few readily available variables could guide the use of limited CEEG resources when applied at a single center. Depending on CEEG resources, centers could choose lower cut-off points to maximize identification of all patients with seizures (but with more patients monitored) or higher cut-off points to reduce resource utilization by reducing monitoring of lower risk patients (but with failure to identify some patients with seizures).<br /> (Copyright © 2014 British Epilepsy Association. Published by Elsevier Ltd. All rights reserved.)

Details

Language :
English
ISSN :
1532-2688
Volume :
25
Database :
MEDLINE
Journal :
Seizure
Publication Type :
Academic Journal
Accession number :
25458097
Full Text :
https://doi.org/10.1016/j.seizure.2014.09.013