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Aiming to apply automatic arousal detection to support sleep laboratories, we evaluated an optimized, state-of-the-art approach using data from daily work in our university hospital sleep laboratory. Therefore, a machine learning algorithm was trained and evaluated on 3423 polysomnograms of people with various sleep disorders. The model architecture is a U-net that accepts 50 Hz signals as input. We compared this algorithm with models trained on publicly available datasets, and evaluated these models using our clinical dataset, particularly with regard to the effects of different sleep disorders. In an effort to evaluate clinical relevance, we designed a metric based on the error of the predicted arousal index. Our models achieve an area under the precision recall curve (AUPRC) of up to 0.83 and F1 scores of up to 0.81. The model trained on our data showed no age or gender bias and no significant negative effect regarding sleep disorders on model performance compared to healthy sleep. In contrast, models trained on public datasets showed a small to moderate negative effect (calculated using Cohen's d) of sleep disorders on model performance. Therefore, we conclude that state-of-the-art arousal detection on our clinical data is possible with our model architecture. Thus, our results support the general recommendation to use a clinical dataset for training if the model is to be applied to clinical data.
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http://dx.doi.org/10.1038/s41598-024-67022-9 | DOI Listing |
Rev Med Liege
September 2025
Service de Pneumologie, CHU de Liège, Belgique.
Obstructive sleep apnea-hypopnea syndrome (OSAHS) is an underrated and heavy public health problem. Polysomnography (PSG) remains GOLD-standard examination but we also use ambulatory screening tests including Brizzy, which measures mandibular movements. The aim is to report on our experience with the Brizzy and compare it with PSG data.
View Article and Find Full Text PDFJ Neural Transm (Vienna)
September 2025
Parkinson's Foundation Centre of Excellence, King's College Hospital, Denmark Hill, London, SE5 9RS, UK.
Parkinson's disease patients are at increased risk of road traffic and car accidents and those with excessive daytime sleepiness are specially susceptible. Abnormal scores on the Epworth Sleepiness Scale predicts risk for driving-related somnolence which may cause road traffic accidents in driving patients as many such patients declare dozing of while in a car. Our study estimates that over 40% of patients with daytime somnolence have risks of dozing off in a car.
View Article and Find Full Text PDFMetab Syndr Relat Disord
September 2025
Yale School of Medicine, New Haven, Connecticut, USA.
Poor sleep has been identified as a strong risk factor for metabolic syndrome. Shift workers, who often experience reduced and misaligned sleep due to nighttime work schedules, are particularly susceptible to both sleep disturbances and metabolic syndrome. However, the interplay among shift work, sleep disturbances, and metabolic syndrome remains insufficiently explored.
View Article and Find Full Text PDFJ Med Internet Res
September 2025
Department of Nursing, School of Health and Welfare, Jönköping University, Gjuterigatan 5, Jönköping, 553 18, Sweden, 46 036101000.
Background: An increased use of the internet and digital health care for patients with long-term conditions implies a need for assuring digital health literacy skills. Patients with restless legs syndrome (RLS) represent a group where digital sources of information are highly valued. This is due to a difficult diagnosis and complex treatment situation that contributes to patients seeking out digital resources themselves to handle the perceived shortcomings in their care.
View Article and Find Full Text PDFSleep Med
September 2025
Regional Epilepsy Center, Operative Unit of Childhood and Adolescent Neuropsychiatry, ASST Spedali Civili di Brescia, Brescia, Italy.
Background: Sleep disturbances are highly prevalent in children with neurodevelopmental disorders (NDD), yet few studies have combined objective and subjective measures. The objectives of this study were to evaluate sleep patterns and sleep hygiene in children with ADHD and ASD compared age-matched typically developing children, using both parent-reported questionnaires and actigraphy, to assess the concordance between these measures, and to determine the clinical applicability of actigraphy in this population.
Methods: Sixty children with NDD (30 ASD, 30 ADHD) and 40 typically developing controls, matched for age, underwent seven nights of actigraphic recording.