Utilization of temporal autoencoder for semi-supervised intracranial EEG clustering and classification

Warning

This publication doesn't include Faculty of Arts. It includes Faculty of Medicine. Official publication website can be found on muni.cz.
Authors

NEJEDLÝ Petr KREMEN Vaclav LEPKOVA Kamila MIVALT Filip SLADKY Vladimir PRIDALOVA Tereza PLESINGER Filip JURAK Pavel PAIL Martin BRÁZDIL Milan KLIMES Petr WORRELL Gregory

Year of publication 2023
Type Article in Periodical
Magazine / Source Nature Scientific Reports
MU Faculty or unit

Faculty of Medicine

Citation
Web https://www.nature.com/articles/s41598-023-27978-6
Doi http://dx.doi.org/10.1038/s41598-023-27978-6
Keywords temporal autoencoder; EEG
Description Manual visual review, annotation and categorization of electroencephalography (EEG) is a time-consuming task that is often associated with human bias and requires trained electrophysiology experts with specific domain knowledge. This challenge is now compounded by development of measurement technologies and devices allowing large-scale heterogeneous, multi-channel recordings spanning multiple brain regions over days, weeks. Currently, supervised deep-learning techniques were shown to be an effective tool for analyzing big data sets, including EEG. However, the most significant caveat in training the supervised deep-learning models in a clinical research setting is the lack of adequate gold-standard annotations created by electrophysiology experts. Here, we propose a semi-supervised machine learning technique that utilizes deep-learning methods with a minimal amount of gold-standard labels. The method utilizes a temporal autoencoder for dimensionality reduction and a small number of the expert-provided gold-standard labels used for kernel density estimating (KDE) maps. We used data from electrophysiological intracranial EEG (iEEG) recordings acquired in two hospitals with different recording systems across 39 patients to validate the method. The method achieved iEEG classification (Pathologic vs. Normal vs. Artifacts) results with an area under the receiver operating characteristic (AUROC) scores of 0.862 +/- 0.037, 0.879 +/- 0.042, and area under the precision-recall curve (AUPRC) scores of 0.740 +/- 0.740, 0.714 +/- 0.042. This demonstrates that semi-supervised methods can provide acceptable results while requiring only 100 gold-standard data samples in each classification category. Subsequently, we deployed the technique to 12 novel patients in a pseudo-prospective framework for detecting Interictal epileptiform discharges (IEDs). We show that the proposed temporal autoencoder was able to generalize to novel patients while achieving AUROC of 0.877 +/- 0.067 and AUPRC of 0.705 +/- 0.154.
Related projects:

You are running an old browser version. We recommend updating your browser to its latest version.