Litcius/Paper detail

Less Parameterization Inception-Based End to End CNN Model for EEG Seizure Detection

Kuo‐Kai Shyu, Szu‐Chi Huang, Lung‐Hao Lee, Po‐Lei Lee

2023IEEE Access32 citationsDOIOpen Access PDF

Abstract

Many deep-learning-based seizure detection algorithms have achieved good classification, which usually outperformed traditional machine-learning-based algorithms. However, the hand-engineered features increase the computational complexity and potentially have an ineffectiveness problem for the category. Therefore, this paper proposes a novel end-to-end deep-learning model comprising an inception module and a residual module to analyze the multi-scales of original EEG signals and realize seizure detection without feature extraction. Experiments were conducted and evaluated on the Bonn dataset and the CHB-MIT dataset. In the subject-dependent experiments, our model achieved an average F1-score of 69.34% on the CHB-MIT dataset. In subject-independent experiments, our method achieved an average accuracy of 99.04% on the Bonn dataset and an average F1-score of 37.31% on the CHB-MIT dataset. A series of analyses confirmed that our proposed model has better classification performance and lower computational complexity than existing end-to-end seizure detection models.

Topics & Concepts

Computer scienceArtificial intelligenceResidualElectroencephalographyFeature extractionPattern recognition (psychology)Computational complexity theoryDeep learningEnd-to-end principleEpileptic seizureMachine learningFeature (linguistics)AlgorithmPsychologyPhilosophyLinguisticsPsychiatryEEG and Brain-Computer InterfacesGaze Tracking and Assistive TechnologyECG Monitoring and Analysis