2024
DOI: 10.1101/2024.03.19.585728
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Identifying EEG Biomarkers of Depression with Novel Explainable Deep Learning Architectures

Charles A. Ellis,
Martina Lapera Sancho,
Robyn L. Miller
et al.

Abstract: Deep learning methods are increasingly being applied to raw electroencephalogram (EEG) data. However, if these models are to be used in clinical or research contexts, methods to explain them must be developed, and if these models are to be used in research contexts, methods for combining explanations across large numbers of models must be developed to counteract the inherent randomness of existing training approaches. Model visualization-based explainability methods for EEG involve structuring a model architec… Show more

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