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Revisiting epilepsy and the electroencephalogram patterns in Angelman syndrome
Authors:Marcio Leyser  Patricia Sola Penna  Alexandre Cardozo de Almeida  Marcio Moacyr Vasconcelos  Osvaldo J. M. Nascimento
Affiliation:1. The SARAH Network of Neurorehabilitation Hospitals, SARAH International Center for Neurorehabilitation and Neuroscience, Avenida Abelardo Bueno, no 1500, Rio de Janeiro, RJ, 22775-040, Brazil
2. Antonio Pedro University Hospital, Fluminense Federal University, Niterói, Brazil
Abstract:Angelman syndrome is a neurogenetic disorder that severely affects global neurodevelopment due to modifications in the structure or functioning of UBE3A gene. Its prevalence ranges from 1:10,000 to 1:40,000. There are four main genetic types of AS transmission. A maternal deletion in 15q11.2-q13 is the most common type. There are three well-established electroencephalogram (EEG) patterns used as an ancillary tool for AS diagnosis. The main objectives are to scrutinize the EEG patterns in Angelman syndrome, their correlation to different types of seizures and to review the role of the EEG as an ancillary screening tool in the diagnosis of clinically suspected patients. Forty-three patients’ charts and their previously recorded EEGs were reviewed. A set of 34 patients with deletion type, paternal uniparental disomy type and imprint defect type AS were enrolled. AS diagnosis was confirmed either by fluorescent in situ hybridization test or Methylation Specific–Multiplex Ligation Probe Amplification test. Sequencing of UBE3A was not available. Frequencies and Chi-square tests were used for statistic analysis. Pattern I type EEG was observed in 22 (64.7 %) individuals. Pattern II accounted for 6 (17.6 %); Pattern III was evident in 11 (32.4 %). The three distinguished EEG patterns, more frequently Pattern I, when observed in the appropriate clinical setting, may heighten the index of suspicion for selecting patients who will need a molecular biology test to confirm the diagnosis of AS.
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