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  3. Novel digital markers of sleep dynamics: causal inference approach revealing age and gender phenotypes in obstructive sleep apnea.
 

Novel digital markers of sleep dynamics: causal inference approach revealing age and gender phenotypes in obstructive sleep apnea.

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BORIS DOI
10.48620/87553
Publisher DOI
10.1038/s41598-025-97172-3
PubMed ID
40200042
Description
Despite evidence that sleep-disorders alter sleep-stage dynamics, only a limited amount of these parameters are included and interpreted in clinical practice, mainly due to unintuitive methodologies or lacking normative values. Leveraging the matrix of sleep-stage transition proportions, we propose (i) a general framework to quantify sleep-dynamics, (ii) several novel markers of their alterations, and (iii) demonstrate our approach using obstructive sleep apnea (OSA), one of the most prevalent sleep-disorder and a significant risk factor. Using causal inference techniques, we address confounding in an observational clinical database and estimate markers personalized by age, gender, and OSA-severity. Importantly, our approach adjusts for five categories of sleep-wake-related comorbidities, a factor overlooked in existing research but present in 48.6% of OSA-subjects in our high-quality dataset. Key markers, such as NREM-REM-oscillations and sleep-stage-specific fragmentations, were increased across all OSA-severities and demographic groups. Additionally, we identified distinct gender-phenotypes, suggesting that females may be more vulnerable to awakenings and REM-sleep-disruptions. External validation of the transition markers on the SHHS database confirmed their robustness in detecting sleep-disordered-breathing (average AUROC = 66.4%). With advancements in automated sleep-scoring and wearable devices, our approach holds promise for developing low-cost screening tools for sleep-, neurodegenerative-, and psychiatric-disorders exhibiting altered sleep patterns.
Date of Publication
2025-04-08
Publication Type
Article
Subject(s)
600 - Technology::610 - Medicine & health
Keyword(s)
Causal inference
•
Digital markers
•
Dirichlet regression
•
Obstructive sleep apnea
•
Polysomnography
•
Sleep disorders
•
Sleep dynamics
Language(s)
en
Contributor(s)
Bechny, Michalorcid-logo
Institute of Computer Science
Kishi, Akifumi
Fiorillo, Luigi
van der Meer, Julia
Clinic of Neurology
Schmidt, Markus
Bassetti, Claudio
Clinic of Neurology
Tzovara, Athinaorcid-logo
Institute of Computer Science
Faraci, Francesca
Additional Credits
Institute of Computer Science
Clinic of Neurology
Series
Scientific Reports
Publisher
Nature Research
ISSN
2045-2322
Access(Rights)
open.access
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