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Automated detection and removal of flat line segments and large amplitude fluctuations in neonatal electroencephalography

Authors :
Gabriella Tamburro
Katrien Jansen
Katrien Lemmens
Anneleen Dereymaeker
Gunnar Naulaers
Maarten De Vos
Silvia Comani
Source :
PeerJ, Vol 10, p e13734 (2022)
Publication Year :
2022
Publisher :
PeerJ Inc., 2022.

Abstract

Background Artefact removal in neonatal electroencephalography (EEG) by visual inspection generally depends on the expertise of the operator, is time consuming and is not a consistent pre-processing step to the pipeline for the automated EEG analysis. Therefore, there is the need for the automated detection and removal of artefacts in neonatal EEG, especially of distinct and predominant artefacts such as flat line segments (mainly caused by instrumental error where contact between electrodes and head box is lost) and large amplitude fluctuations (related to neonatal movements). Method A threshold-based algorithm for the automated detection and removal of flat line segments and large amplitude fluctuations in neonatal EEG of infants at term-equivalent age is developed. The algorithm applies thresholds to the absolute second difference, absolute amplitude, absolute first difference and the ratio between the frequency content above 50 Hz and the frequency content across all frequencies. Results The algorithm reaches a median accuracy of 0.91, a median hit rate of 0.91 and a median false discovery rate of 0.37. Also, a significant improvement (≈10%) in the performance of a four-stage sleep classifier is observed after artefact removal with the proposed algorithm as compared to before its application. Significance An automated artefact removal method contributes to the pipeline of automated EEG analysis. The proposed algorithm has shown to have good performance and to be effective in neonatal EEG applications.

Details

Language :
English
ISSN :
21678359
Volume :
10
Database :
Directory of Open Access Journals
Journal :
PeerJ
Publication Type :
Academic Journal
Accession number :
edsdoj.19a8c2d039d14400848162726f606653
Document Type :
article
Full Text :
https://doi.org/10.7717/peerj.13734