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Adapting deep-learning audio models for abnormal EEG classification

Zhu, Yixuan; Western, David

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Authors

Yixuan Zhu

Profile image of David Western

David Western David.Western@uwe.ac.uk
Wallscourt Fellow in Health Technology



Abstract

EEG signal analysis and audio processing, though distinct in application, share inherent structural similarities in their data patterns. Recognizing this parallel, our study pioneers the application of two renowned audio processing models, PaSST and LEAF, to the realm of EEG signal classification. In our experiments, the adapted PaSST and LEAF models delivered exceptional performance on the Temple University Hospital Abnormal EEG Corpus (TUAB). Specifically, PaSST achieved an impressive accuracy of 95.7%, while LEAF registered 94.0%, both substantially outstripping previously established benchmarks. Such achievements underscore the potential of tapping into cross-domain models, particularly from the audio sector, for advancing EEG research. Notably, while these larger audio models brought about unparalleled results, maximizing their capabilities required addressing the limitations of available EEG data volume. Thus, we introduced innovative pre-training strategies derived from diverse datasets, further enhancing the performance efficacy. With these refinements, PaSST reached a landmark accuracy of 96.1% on the TUAB dataset, marking a significant stride forward in EEG signal processing. By leveraging the intrinsic resemblances between EEG and audio signals, we have successfully repurposed these audio models. We recommend further work devoted to the exploration of the transferability of machine learning audio techniques to healthcare time series tasks.

Presentation Conference Type Conference Paper (published)
Conference Name 2024 IEEE EMBS International Conference on Biomedical and Health Informatics (BHI)
Start Date Nov 10, 2024
End Date Nov 13, 2024
Acceptance Date Sep 30, 2024
Online Publication Date Mar 17, 2025
Publication Date Mar 17, 2025
Deposit Date Jun 13, 2025
Publicly Available Date Jun 17, 2025
Peer Reviewed Peer Reviewed
Book Title 2024 IEEE EMBS International Conference on Biomedical and Health Informatics (BHI)
ISBN 9798350351569
DOI https://doi.org/10.1109/bhi62660.2024.10913666
Public URL https://uwe-repository.worktribe.com/output/14152077

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