An electroencephalography-based sleep index and supervised machine learning as a suitable tool for automated sleep classification in children

Journal Article (2024)
Authors

Eris van Twist (Erasmus MC)

Floor W. Hiemstra (Leiden University Medical Center)

Arnout B.G. Cramer (Erasmus MC)

Sascha C.A.T. Verbruggen (Erasmus MC)

D.M.J. Tax (TU Delft - Pattern Recognition and Bioinformatics)

Koen F.M. Joosten (Erasmus MC)

Maartje Louter (Erasmus MC)

Dirk C.G. Straver (Erasmus MC)

Matthijs de Hoog (Erasmus MC)

G.B. Cavadini (External organisation)

Research Group
Pattern Recognition and Bioinformatics
To reference this document use:
https://doi.org/10.5664/jcsm.10880
More Info
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Publication Year
2024
Language
English
Research Group
Pattern Recognition and Bioinformatics
Bibliographical Note
Green Open Access added to TU Delft Institutional Repository ‘You share, we take care!’ – Taverne project https://www.openaccess.nl/en/you-share-we-take-care Otherwise as indicated in the copyright section: the publisher is the copyright holder of this work and the author uses the Dutch legislation to make this work public. @en
Issue number
3
Volume number
20
Pages (from-to)
389-397
DOI:
https://doi.org/10.5664/jcsm.10880
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Abstract

STUDY OBJECTIVES: Although sleep is frequently disrupted in the pediatric intensive care unit, it is currently not possible to perform real-time sleep monitoring at the bedside. In this study, spectral band powers of electroencephalography data are used to derive a simple index for sleep classification. METHODS: Retrospective study at Erasmus MC Sophia Children's Hospital, using hospital-based polysomnography recordings obtained in non-critically ill children between 2017 and 2021. Six age categories were defined: 6-12 months, 1-3 years, 3-5 years, 5-9 years, 9-13 years, and 13-18 years. Candidate index measures were derived by calculating spectral band powers in different frequent frequency bands of smoothed electroencephalography. With the best performing index, sleep classification models were developed for two, three, and four states via decision tree and five-fold nested cross-validation. Model performance was assessed across age categories and electroencephalography channels. RESULTS: In total 90 patients with polysomnography were included, with a mean (standard deviation) recording length of 10.3 (1.1) hours. The best performance was obtained with the gamma to delta spectral power ratio of the F4-A1 and F3-A1 channels with smoothing. Balanced accuracy was 0.88, 0.74, and 0.57 for two-, three-, and four-state classification. Across age categories, balanced accuracy ranged between 0.83 and 0.92 and 0.72 and 0.77 for two- and three-state classification, respectively. CONCLUSIONS: We propose an interpretable and generalizable sleep index derived from single-channel electroencephalography for automated sleep monitoring at the bedside in non-critically ill children ages 6 months to 18 years, with good performance for two- and three-state classification. CITATION: van Twist E, Hiemstra FW, Cramer ABG, et al. An electroencephalography-based sleep index and supervised machine learning as a suitable tool for automated sleep classification in children. J Clin Sleep Med. 2024;20(3):389-397.

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