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EEG at onset and MRI predict long-term clinical outcome in Aicardi syndrome

Authors :
Silvia Masnada
Enrico Alfei
Manuela Formica
Roberto Previtali
Patrizia Accorsi
Filippo Arrigoni
Paolo Bonanni
Renato Borgatti
Francesca Darra
Carlo Fusco
Valentina De Giorgis
Lucio Giordano
Francesca La Briola
Simona Orcesi
Elisa Osanni
Cecilia Parazzini
Lorenzo Pinelli
Erika Rebessi
Romina Romaniello
Antonino Romeo
Carlotta Spagnoli
Christian Uebler
Costanza Varesio
Maurizio Viri
Claudio Zucca
Anna Pichiecchio
Pierangelo Veggiotti
Source :
Clinical Neurophysiology. 142:112-124
Publication Year :
2022
Publisher :
Elsevier BV, 2022.

Abstract

Descriptions of electroencephalographic (EEG) patterns in Aicardi syndrome (AIC) have to date referred to small cohorts of up to six cases and indicated severe derangement of electrical activity in all cases. The present study was conducted to describe the long-term EEG evolution in a larger AIC cohort, followed for up to 23 years, and identify possible early predictors of the clinical and EEG outcomes.In a retrospective study, two experienced clinical neurophysiologists systematically reviewed all EEG traces recorded in 12 AIC cases throughout their follow-up, from epilepsy onset to the present. Clinical outcome was assessed with standardized clinical outcome scales.Analysis of the data revealed two distinct AIC phenotypes. In addition to the "classical severe phenotype" already described in the literature, we identified a new "mild phenotype". The two phenotypes show completely different EEG features at onset of epilepsy and during its evolution, which correspond to different clinical outcomes.Data from our long-term EEG and clinical-neuroradiological study allowed us to describe two different phenotypes of AIC, with different imaging severity and, in particular, different EEG at onset, which tend to remain constant over time.Together, these findings might help to predict long-term clinical outcomes.

Details

ISSN :
13882457
Volume :
142
Database :
OpenAIRE
Journal :
Clinical Neurophysiology
Accession number :
edsair.doi.dedup.....f2f48f6d6a50bbe9be2efb61897ccdbf
Full Text :
https://doi.org/10.1016/j.clinph.2022.07.496