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Regularization of Deep Neural Networks for EEG Seizure Detection to Mitigate Overfitting.
Saqib, Mohammed; Zhu, Yuanda; Wang, May Dongmei; Beaulieu-Jones, Brett.
Affiliation
  • Saqib M; Biomedical Engineering, Georgia Institute of Technology, Atlanta, GA.
  • Zhu Y; Electrical Engineering, Georgia Institute of Technology, Atlanta, GA.
  • Wang MD; Biomedical Engineering, Georgia Institute of Technology, Atlanta, GA.
  • Beaulieu-Jones B; Department of Biomedical Informatics, Harvard Medical School, Boston, MA.
Proc COMPSAC ; 2020: 664-673, 2020 Jul.
Article in En | MEDLINE | ID: mdl-33073266
ABSTRACT
Seizure detection is a major goal for simplifying the workflow of clinicians working on EEG records. Current algorithms can only detect seizures effectively for patients already presented to the classifier. These algorithms are hard to generalize outside the initial training set without proper regularization and fail to capture seizures from the larger population. We proposed a data processing pipeline for seizure detection on an intra-patient dataset from the world's largest public EEG seizure corpus. We created spatially and session invariant features by forcing our networks to rely less on exact combinations of channels and signal amplitudes, but instead to learn dependencies towards seizure detection. For comparison, the baseline results without any additional regularization on a deep learning model achieved an F1 score of 0.544. By using random rearrangements of channels on each minibatch to force the network to generalize to other combinations of channels, we increased the F1 score to 0.629. By using random rescale of the data within a small range, we further increased the F1 score to 0.651 for our best model. Additionally, we applied adversarial multi-task learning and achieved similar results. We observed that session and patient specific dependencies were causing overfitting of deep neural networks, and the most overfitting models learnt features specific only to the EEG data presented. Thus, we created networks with regularization that the deep learning did not learn patient and session-specific features. We are the first to use random rearrangement, random rescale, and adversarial multitask learning to regularize intra-patient seizure detection and have increased sensitivity to 0.86 comparing to baseline study.
Key words

Full text: 1 Database: MEDLINE Type of study: Diagnostic_studies / Prognostic_studies Language: En Year: 2020 Type: Article

Full text: 1 Database: MEDLINE Type of study: Diagnostic_studies / Prognostic_studies Language: En Year: 2020 Type: Article