A Patient-Independent Neonatal Seizure Prediction Model Using Reduced Montage EEG and ECG
Sithmini Ranasingha, Agasthi Haputhanthri, Hansa Marasinghe, Nima Wickramasinghe, Kithmin Wickremasinghe, Jithangi Wanigasinghe, Chamira U. S. Edussooriya, Joshua P. Kulasingham

TL;DR
This paper presents a patient-independent convolutional neural network model that predicts neonatal seizures up to 30 minutes early using reduced EEG and ECG data, achieving high accuracy and interpretability for clinical use.
Contribution
It introduces a novel CNN-based model utilizing EEG and ECG features with explainability and transfer learning, improving early seizure prediction in neonates.
Findings
Achieved 97.52% accuracy in seizure prediction
Enhanced model performance with ECG and attention mechanisms
Demonstrated strong generalization across subjects
Abstract
Neonates are highly susceptible to seizures, often leading to short or long-term neurological impairments. However, clinical manifestations of neonatal seizures are subtle and often lead to misdiagnoses. This increases the risk of prolonged, untreated seizure activity and subsequent brain injury. Continuous video electroencephalogram (cEEG) monitoring is the gold standard for seizure detection. However, this is an expensive evaluation that requires expertise and time. In this study, we propose a convolutional neural network-based model for early prediction of neonatal seizures by distinguishing between interictal and preictal states of the EEG. Our model is patient-independent, enabling generalization across multiple subjects, and utilizes mel-frequency cepstral coefficient matrices extracted from multichannel EEG and electrocardiogram (ECG) signals as input features. Trained and…
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Taxonomy
TopicsNeonatal and fetal brain pathology · EEG and Brain-Computer Interfaces · ECG Monitoring and Analysis
