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- authors:
- -
- firstname: Galia
- lastname: Anguelova
- affiliation: 'SEIN - Stichting Epilepsie Instellingen Nederland'
- id: 'ORCID:0000-0001-7633-2018'
- -
- firstname: Patricia
- lastname: Baines
- affiliation: 'Delft University of Technology'
- id: 'ORCID:0000-0002-1841-2551'
- title: 'Post-processing deep neural network for performance improvement of interictal epileptiform discharges detection'
- description: 'In this study we aimed to further improve interictal epileptiform discharges (IED) detection performance of a deep neural network based algorithm with a second-level post-processing deep learning network. Seventeen interictal ambulatory EEGs were used, 15 with focal and 2 with generalized epilepsy in patients of age range 4-80 years (median 19y, 25th-75th percentile 14-32y). The EEG data was split into 2s non-overlapping epochs. Epochs with an IED probability of at least 0.99, according to a previously developed VGG-C based convolutional neural network, were preselected for the second-level 2D convolutional neural network (CNN). The selected epochs were used as input for the second-level post-processing CNN in Python; these are uploaded as a dataset in this repository. Data was divided into an 80/20 training/validation, resulting in 3049 epochs for training/validation and 580 epochs for testing.'
- keywords:
- - Neuroscience
- - 'deep learning'
- - EEG
- - 'interictal epileptiform discharges'
- license:
- name: 'Creative Commons Attribution 4.0 International Public License'
- url: 'http://creativecommons.org/licenses/by/4.0/'
- references:
- -
- id: 'doi:tba'
- reftype: IsSupplementTo
- citation: 'Anguelova GV, Baines PM. Technical note: Post-processing deep neural network for performance improvement of interictal epileptiform discharges detection. IEEE JTEHM. Submitted'
- resourcetype: Dataset
- templateversion: 1.2
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