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Published in: Sleep and Breathing 3/2021

01-09-2021 | Polysomnography | Methods • Original Article

Ear-EEG for sleep assessment: a comparison with actigraphy and PSG

Authors: Yousef Rezaei Tabar, Kaare B. Mikkelsen, Mike Lind Rank, Martin Christian Hemmsen, Marit Otto, Preben Kidmose

Published in: Sleep and Breathing | Issue 3/2021

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Abstract

Purpose

To assess automatic sleep staging of three ear-EEG setups with different electrode configurations and compare performance with concurrent polysomnography and wrist-worn actigraphy recordings.

Methods

Automatic sleep staging was performed for single-ear, single-ear with ipsilateral mastoid, and cross-ear electrode configurations, and for actigraphy data. The polysomnography data were manually scored and used as the gold standard. The automatic sleep staging was tested on 80 full-night recordings from 20 healthy subjects. The scoring performance and sleep metrics were determined for all ear-EEG setups and the actigraphy device.

Results

The single-ear, the single-ear with ipsilateral mastoid setup, and the cross-ear setup performed five class sleep staging with kappa values 0.36, 0.63, and 0.72, respectively. For the single-ear with mastoid electrode and the cross-ear setup, the performance of the sleep metrics, in terms of mean absolute error, was better than the sleep metrics estimated from the actigraphy device in the current study, and also better than current state-of-the-art actigraphy studies.

Conclusion

A statistically significant improvement in both accuracy and kappa was observed from single-ear to single-ear with ipsilateral mastoid, and from single-ear with ipsilateral mastoid to cross-ear configurations for both two and five-sleep stage classification. In terms of sleep metrics, the results were more heterogeneous, but in general, actigraphy and single-ear with ipsilateral mastoid configuration were better than the single-ear configuration; and the cross-ear configuration was consistently better than both the actigraphy device and the single-ear configuration.
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Metadata
Title
Ear-EEG for sleep assessment: a comparison with actigraphy and PSG
Authors
Yousef Rezaei Tabar
Kaare B. Mikkelsen
Mike Lind Rank
Martin Christian Hemmsen
Marit Otto
Preben Kidmose
Publication date
01-09-2021
Publisher
Springer International Publishing
Keyword
Polysomnography
Published in
Sleep and Breathing / Issue 3/2021
Print ISSN: 1520-9512
Electronic ISSN: 1522-1709
DOI
https://doi.org/10.1007/s11325-020-02248-1

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