Digital health and telemonitoring have resulted in a wealth of information to be collected to monitor, manage, and improve human health. The multi-source mixed-frequency health data overwhelm the modeling capacity of existing statistical and machine learning models, due to many challenging properties. Although predictive analytics for big health data plays an important role in telemonitoring, there is a lack of rigorous prediction model that can automatically predicts patients' health conditions, e.g., Disease Severity Indicators (DSIs), from multi-source mixed-frequency data. Sleep disorder is a prevalent cardiac syndrome that is characterized by abnormal respiratory patterns during sleep. Although wearable devices are available to administrate sleep studies at home, the manual scoring process to generate the DSI remains a bottleneck in automated monitoring and diagnosis of sleep disorder. To address the multi-fold challenges for precise prediction of the DSI from high-dimensional multi-source mixed-frequency data in sleep disorder, we propose a sparse linear mixed model that combines the modified Cholesky decomposition with group lasso penalties to enable joint group selection of fixed effects and random effects. A novel Expectation Maximization (EM) algorithm integrated with an efficient Majorization Maximization (MM) algorithm is developed for model estimation of the proposed sparse linear mixed model with group variable selection. The proposed method was applied to the SHHS data for telemonitoring and diagnosis of sleep disorder and found that a few significant feature groups that are consistent with prior medical studies on sleep disorder. The proposed method also outperformed a few benchmark methods with the highest prediction accuracy.
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http://dx.doi.org/10.1080/24725579.2023.2202877 | DOI Listing |
Neuron
January 2025
Division of Glial Disease and Therapeutics, Center for Translational Neuromedicine, University of Copenhagen, Copenhagen, Denmark; Center for Translational Neuromedicine, University of Rochester Medical Center, Rochester, NY, USA. Electronic address:
Continuous sleep restores the brain and body, whereas fragmented sleep harms cognition and health. Microarousals (MAs), brief (3- to 15-s-long) wake intrusions into sleep, are clinical markers for various sleep disorders. Recent rodent studies show that MAs during healthy non-rapid eye movement (NREM) sleep are driven by infraslow fluctuations of noradrenaline (NA) in coordination with electrophysiological rhythms, vasomotor activity, cerebral blood volume, and glymphatic flow.
View Article and Find Full Text PDFRev Invest Clin
January 2025
National Institute of Respiratory Disease "Ismael Cosío Villegas", Mexico City, Mexico.
Background: COVID-19 is a disease that had a great impact in the world, generating lifestyle changes; among these are changes in sleep quality, with the elderly being one of the most affected age groups. Objective: To identify sleep alterations in Mexican people older than 60 years post COVID-19 pandemic. Methods: We performed a descriptive study on subjects older than 60 years from the aging cohort of the National Institute of Respiratory Diseases.
View Article and Find Full Text PDFMedicine (Baltimore)
November 2024
Liaocheng People's Hospital, Liaocheng, Shandong, China.
Rationale: Gong's brain acupuncture (GBA) is a acupuncture technique that restores the balance of the central nervous system by stimulating specific acupoints on the skull to transmit stimulation to the nerves. Insomnia during pregnancy is an increasingly concerning issue, and GBA provides new solutions.
Patients Concerns: The patient, a 26-year old woman at 26 + 1 weeks of pregnancy, presented with unexplained insomnia for 3 weeks.
Int J Nurs Stud
January 2025
Research Laboratory Psychology of Patients, Families & Health Professionals, Department of Nursing, School of Health Sciences, University of Ioannina, Ioannina 45500, Greece. Electronic address:
Background: The ongoing global student mental health crisis indicates the urgent need for updated research specifically targeting nursing students. Considering their anticipated transition into healthcare professions, their mental well-being is critical, not only for their academic performance but also for the quality of care they will deliver in their professional roles.
Objective: To estimate the prevalence of mental health issues among nursing students by synthesizing data from systematic reviews and meta-analyses.
Background: Narcolepsy is a chronic disorder that requires lifelong management; however, few studies have evaluated disease burden of narcolepsy. We estimated the healthcare burden of narcolepsy in Japan using data from the Japan Medical Data Center health insurance claims database.
Methods: This was a retrospective analysis of clinical burden, healthcare resource utilization, and costs among incident narcolepsy cases and matched controls identified between January 1, 2014 and December 31, 2019.
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