Using Explainable AI for EEG-based Reduced Montage Neonatal Seizure Detection Conference

Udayantha, DS, Weerasinghe, K, Wickramasinghe, N et al. (2024). Using Explainable AI for EEG-based Reduced Montage Neonatal Seizure Detection . 463-468. 10.1109/SMC54092.2024.10831030

cited authors

  • Udayantha, DS; Weerasinghe, K; Wickramasinghe, N; Abeyratne, A; Wickremasinghe, K; Wanigasinghe, J; De Silva, A; Edussooriya, CUS

abstract

  • The neonatal period is the most vulnerable time for the development of seizures. Seizures in the immature brain lead to detrimental consequences, therefore require early diagnosis. The gold -standard for neonatal seizure detection currently relies on continuous video-EEG monitoring; which involves recording multi-channel electroencephalogram (EEG) alongside real-time video monitoring within a neonatal intensive care unit (NICU). However, video-EEG monitoring technology requires clinical expertise and is often limited to technologically advanced and resourceful settings. Cost-effective new techniques could help the medical fraternity make an accurate diagnosis and advocate treatment without delay. In this work, a novel explainable deep learning model to automate the neonatal seizure detection process with a reduced EEG montage is proposed, which employs convolutional nets, graph attention layers, and fully connected layers. Beyond its ability to detect seizures in real time with a reduced montage, this model offers the unique advantage of real-time interpretability. By evaluating the performance on the Zenodo dataset with 10-fold cross-validation, the presented model achieves an absolute improvement of 8.31% and 42.86% in area under curve (AUC) and recall, respectively.

publication date

  • January 1, 2024

Digital Object Identifier (DOI)

start page

  • 463

end page

  • 468