O066 Generalized linear model for characterisation of nocturnal arrhythmia
Abstract Background Generalised linear models (GLM) based on point processes have been previously shown helpful for characterising dynamics of sleep-disordered breathing (SDB) events using sleep stages, body position and history of SDB events, and characterising period limb movements. Episodes of no...
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Veröffentlicht in: | Sleep advances. 2024-12, Vol.5 (Supplement_1), p.A24-A24 |
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Sprache: | eng |
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Zusammenfassung: | Abstract
Background
Generalised linear models (GLM) based on point processes have been previously shown helpful for characterising dynamics of sleep-disordered breathing (SDB) events using sleep stages, body position and history of SDB events, and characterising period limb movements. Episodes of non-sustained arrhythmias may occur during sleep in patients with underlying cardiac conditions, and the point process theory may help model their occurrence over time.
Objective
This study aims to develop a (GLM) to analyse the temporal patterns of nocturnal arrhythmia (NA) and their relationship with sleep disturbances and architecture.
Methods
This study analysed 7341 polysomnography-derived ECG recordings from the MESA and SHHS datasets to detect non-sustained arrhythmias. NAs were defined as any instance where ECG R-R intervals dropped by 30% of the baseline and then returned to 90% of the baseline. we developed our GLM framework to characterise NA events as a function of SDB and sleep arousal events, sleep stages, as well as previously occurring NA episodes.
Results
The likelihood of NA occurrence during light NREM sleep was, on average, 10% higher than during REM sleep (p=0.022), and 16% and 40% higher than during deep sleep and wakefulness, respectively (p |
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ISSN: | 2632-5012 2632-5012 |
DOI: | 10.1093/sleepadvances/zpae070.066 |