Objective: To develop and validate a method for long-term (24-h)objective quantification of absence seizures in the EEG of patients with childhood absence epilepsy (CAE) in their real home environment using a wearable device (waEEG), comparing automatic detection methods with auditory recognition after seizure sonification.
Methods: The waEEG recording was acquired with two scalp electrodes. Automatic analysis was performed using previously validated software (Persyst® 14) and then fully reviewed by an experienced clinical neurophysiologist. The EEG data were converted into an audio file in waveform format with a 60-fold time compression factor. The sonified EEG was listened to by three inexperienced observers and the number of seizures and the processing time required for each data set were recorded blind to other data. Quantification of seizures from the patient diary was also assessed.
Results: Eleven waEEG recordings from seven CAE patients with an average age of 8.18 ± 1.60 years were included. No differences in the number of seizures were found between the recordings using automated methods and expert audio assessment, with significant correlations between methods (ρ > .89, p < .001) and between observers (ρ > .96, p < .001). For the entire data set, the audio assessment yielded a sensitivity of .830 and a precision of .841, resulting in an F1 score of .835.
Significance: Auditory waEEG seizure detection by lay medical personnel provided similar accuracy to post-processed automatic detection by an experienced clinical neurophysiologist, but in a less time-consuming procedure and without the need for specialized resources. Sonification of long-term EEG recordings in CAE provides a user-friendly and cost-effective clinical workflow for quantifying seizures in clinical practice, minimizing human and technical constraints.
Representando o intervalo de 24h num circulo com origem no ponto médio do sono nocturno obtém-se a distribução circadiana à esquerda. O sono (arco externo) é obtido através de estadiamento automático a partir do registo EEG.
O TSDT Daniel Borges apresentou os últimos resultados da nossa investigação sobre wearables na Epilepsia de Ausências na reunião da Sociedade Portuguesa de Neurologia realizada em Aveiro.
Borges D, Fernandes J, Soares J, Casalta-Lopes J, Carvalho D, Beniczky S, Leal A. The sound of silence: Quantification of typical absence seizures by sonifying EEG signals from a custom-built wearable device. Epileptic Disorders 2024: (10.1002/epd2.20194 )
Poster apresentado no 32º ENE "A quantificação das crises melhora o seguimento clinico na Epilepsia de Ausências", Alberto Leal, Daniel Carvalho, 2020.