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dc.contributor.authorTveitstøl, Thomas
dc.contributor.authorTveter, Mats
dc.contributor.authorPérez Teseyra, Ana Silvina
dc.contributor.authorHatlestad-Hall, Christoffer
dc.contributor.authorYazidi, Anis
dc.contributor.authorHammer, Hugo Lewi
dc.contributor.authorHaraldsen, Ira Hebold
dc.date.accessioned2024-03-04T06:50:42Z
dc.date.available2024-03-04T06:50:42Z
dc.date.created2024-02-23T12:16:40Z
dc.date.issued2023
dc.identifier.citationFrontiers in Neuroinformatics. 2023, 17 .en_US
dc.identifier.issn1662-5196
dc.identifier.urihttps://hdl.handle.net/11250/3120751
dc.description.abstractIntroduction: A challenge when applying an artificial intelligence (AI) deep learning (DL) approach to novel electroencephalography (EEG) data, is the DL architecture’s lack of adaptability to changing numbers of EEG channels. That is, the number of channels cannot vary neither in the training data, nor upon deployment. Such highly specific hardware constraints put major limitations on the clinical usability and scalability of the DL models. Methods: In this work, we propose a technique for handling such varied numbers of EEG channels by splitting the EEG montages into distinct regions and merge the channels within the same region to a region representation. The solution is termed Region Based Pooling (RBP). The procedure of splitting the montage into regions is performed repeatedly with different region configurations, to minimize potential loss of information. As RBP maps a varied number of EEG channels to a fixed number of region representations, both current and future DL architectures may apply RBP with ease. To demonstrate and evaluate the adequacy of RBP to handle a varied number of EEG channels, sex classification based solely on EEG was used as a test example. The DL models were trained on 129 channels, and tested on 32, 65, and 129-channels versions of the data using the same channel positions scheme. The baselines for comparison were zero-filling the missing channels and applying spherical spline interpolation. The performances were estimated using 5-fold cross validation. Results: For the 32-channel system version, the mean AUC values across the folds were: RBP (93.34%), spherical spline interpolation (93.36%), and zero-filling (76.82%). Similarly, on the 65-channel system version, the performances were: RBP (93.66%), spherical spline interpolation (93.50%), and zero-filling (85.58%). Finally, the 129-channel system version produced the following results: RBP (94.68%), spherical spline interpolation (93.86%), and zero-filling (91.92%). Conclusion: In conclusion, RBP obtained similar results to spherical spline interpolation, and superior results to zero-filling. We encourage further research and development of DL models in the cross-dataset setting, including the use of methods such as RBP and spherical spline interpolation to handle a varied number of EEG channels.en_US
dc.language.isoengen_US
dc.rightsNavngivelse 4.0 Internasjonal*
dc.rights.urihttp://creativecommons.org/licenses/by/4.0/deed.no*
dc.titleIntroducing Region Based Pooling for handling a varied number of EEG channels for deep learning modelsen_US
dc.typePeer revieweden_US
dc.typeJournal articleen_US
dc.description.versionpublishedVersionen_US
cristin.ispublishedtrue
cristin.fulltextoriginal
cristin.qualitycode1
dc.identifier.doi10.3389/fninf.2023.1272791
dc.identifier.cristin2249206
dc.source.journalFrontiers in Neuroinformaticsen_US
dc.source.volume17en_US
dc.source.pagenumber0en_US


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