Revisiting the value of polysomnographic data in insomnia: more than meets the eye.

Details

Serval ID
serval:BIB_52B020157564
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
Revisiting the value of polysomnographic data in insomnia: more than meets the eye.
Journal
Sleep medicine
Author(s)
Andrillon T., Solelhac G., Bouchequet P., Romano F., Le Brun M.P., Brigham M., Chennaoui M., Léger D.
ISSN
1878-5506 (Electronic)
ISSN-L
1389-9457
Publication state
Published
Issued date
02/2020
Peer-reviewed
Oui
Volume
66
Pages
184-200
Language
english
Notes
Publication types: Journal Article ; Research Support, Non-U.S. Gov't
Publication Status: ppublish
Abstract
Polysomnography (PSG) is not recommended as a diagnostic tool in insomnia. However, this consensual approach might be tempered in the light of two ongoing transformations in sleep research: big data and artificial intelligence (AI).
We analyzed the PSG of 347 patients with chronic insomnia, including 59 with Sleep State Misperception (SSM) and 288 without (INS). 89 good sleepers (GS) were used as controls. PSGs were compared regarding: (1) macroscopic indexes derived from the hypnogram, (2) mesoscopic indexes extracted from the electroencephalographic (EEG) spectrum, (3) sleep microstructure (slow waves, spindles). We used supervised algorithms to differentiate patients from GS.
Macroscopic features illustrate the insomnia conundrum, with SSM patients displaying similar sleep metrics as GS, whereas INS patients show a deteriorated sleep. However, both SSM and INS patients showed marked differences in EEG spectral components (meso) compared to GS, with reduced power in the delta band and increased power in the theta/alpha, sigma and beta bands. INS and SSM patients showed decreased spectral slope in NREM. INS and SSM patients also differed from GS in sleep microstructure with fewer and slower slow waves and more and faster sleep spindles. Importantly, SSM and INS patients were almost indistinguishable at the meso and micro levels. Accordingly, unsupervised classifiers can reliably categorize insomnia patients and GS (Cohen's κ = 0.87) but fail to tease apart SSM and INS patients when restricting classifiers to micro and meso features (κ=0.004).
AI analyses of PSG recordings can help moving insomnia diagnosis beyond subjective complaints and shed light on the physiological substrate of insomnia.
Keywords
Adult, Algorithms, Artificial Intelligence, Electroencephalography, Female, Humans, Male, Middle Aged, Polysomnography, Retrospective Studies, Sleep Initiation and Maintenance Disorders/classification, Sleep Initiation and Maintenance Disorders/physiopathology, Sleep Stages/physiology, Artificial intelligence, Insomnia, Machine learning, NREM sleep, REM
Pubmed
Web of science
Create date
01/02/2023 10:58
Last modification date
02/02/2023 7:53
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