An Empirical Investigation of Reconstruction-Based Models for Seizure Prediction from ECG Signals
Journal:
arXiv
Published Date:
Apr 11, 2025
Abstract
Epileptic seizures are sudden neurological disorders characterized by
abnormal, excessive neuronal activity in the brain, which is often associated
with changes in cardiovascular activity. These disruptions can pose significant
physical and psychological challenges for patients. Therefore, accurate seizure
prediction can help mitigate these risks by enabling timely interventions,
ultimately improving patients' quality of life. Traditionally, EEG signals have
been the primary standard for seizure prediction due to their precision in
capturing brain activity. However, their high cost, susceptibility to noise,
and logistical constraints limit their practicality, restricting their use to
clinical settings. In order to overcome these limitations, this study focuses
on leveraging ECG signals as an alternative for seizure prediction. In this
paper, we present a novel method for predicting seizures based on detecting
anomalies in ECG signals during their reconstruction. By extracting
time-frequency features and leveraging various advanced deep learning
architectures, the proposed method identifies deviations in heart rate dynamics
associated with seizure onset. The proposed approach was evaluated using the
Siena database and could achieve specificity of 99.16\%, accuracy of 76.05\%,
and false positive rate (FPR) of 0.01/h, with an average prediction time of 45
minutes before seizure onset. These results highlight the potential of
ECG-based seizure prediction as a patient-friendly alternative to traditional
EEG-based methods.