MOLECULAR SCIENCES AND APPLICATIONS
Print ISSN: 2944-9138, E-ISSN: 2732-9992 An Open Access International Journal of Molecular Sciences and Applications
Volume 4, 2024
A New Epileptic Seizure Prediction Framework Based on Electroencephalography Signals
Authors: ,
Abstract: This research seeks to evaluate how effectively seizures can be predicted and managed in
epilepsy using a specialized deep learning model based on Long Short-Term Memory (LSTM) neural
networks. The model leverages non-invasive scalp electroencephalography (EEG) recordings for
predicting seizures. To develop and assess the proposed LSTM neural network model, a
comprehensive dataset was gathered. The model emphasizes achieving high sensitivity and reducing
false alarms to improve its real-time applicability. The evaluation involved various metrics to measure
accuracy, sensitivity, and rates of false positives and false negatives. The effectiveness of the
proposed LSTM neural network model was outstanding, with accuracy rates ranging from 99.07% to
99.95%. Notably, the sensitivity score of 1 confirmed precise prediction for all seizure cases. The
model demonstrated minimal false positive and false negative rates, highlighting its reliability in
predicting seizures. This study emphasizes the promising potential of the proposed LSTM neural
network model in providing advanced warning for seizures. The high accuracy and sensitivity rates
suggest its usefulness in enabling timely preventive measures for patients, ultimately reducing the
occurrence of seizures. This innovative approach holds significance in enhancing the overall
management and quality of life for individuals dealing with epilepsy.
Search Articles
Pages: 57-64
DOI: 10.37394/232023.2024.4.7