Interpreting Deep Learning Models for Epileptic Seizure Detection on EEG signals
Valentin Gabeff, Tomas Teijeiro, Marina Zapater, Leila Cammoun,, Sylvain Rheims, Philippe Ryvlin, David Atienza

TL;DR
This paper develops interpretable deep learning models for online epileptic seizure detection using EEG signals, focusing on model interpretability, feature relevance, and clinical applicability, achieving high accuracy and seizure detection rates.
Contribution
The study introduces an interpretable DL framework for seizure detection that incorporates domain knowledge, analyzes feature relevance, and demonstrates generalization across patients.
Findings
Kernel size influences interpretability and sensitivity.
Amplitude is the main feature for seizure prediction.
Achieved 0.873 F1-score and 90% seizure detection rate.
Abstract
While Deep Learning (DL) is often considered the state-of-the art for Artificial Intelligence-based medical decision support, it remains sparsely implemented in clinical practice and poorly trusted by clinicians due to insufficient interpretability of neural network models. We have tackled this issue by developing interpretable DL models in the context of online detection of epileptic seizure, based on EEG signal. This has conditioned the preparation of the input signals, the network architecture, and the post-processing of the output in line with the domain knowledge. Specifically, we focused the discussion on three main aspects: 1) how to aggregate the classification results on signal segments provided by the DL model into a larger time scale, at the seizure-level; 2) what are the relevant frequency patterns learned in the first convolutional layer of different models, and their…
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Taxonomy
MethodsInterpretability
