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Objective: Non-invasive biomarkers have recently shown promise for seizure forecasting in people with epilepsy. In this work, we developed a seizure-day forecasting algorithm based on nocturnal sleep features acquired using a smart shirt.
Methods: Seventy-eight individuals with epilepsy admitted to the Centre hospitalier de l'Université de Montréal epilepsy monitoring unit wore the Hexoskin biometric smart shirt during their stay. The shirt continuously measures electrocardiography, respiratory, and accelerometry activity. Ten sleep features, including sleep efficiency, sleep latency, sleep duration, time spent in non-rapid eye movement sleep (NREM) and rapid eye movement sleep (REM), wakefulness after sleep onset, average heart and breathing rates, high-frequency heart rate variability, and the number of position changes, were automatically computed using the Hexoskin sleep algorithm. Each night's features were then normalized using a reference night for each patient. A support vector machine classifier was trained for pseudo-prospective seizure-day forecasting, with forecasting horizons of 16- and 24-h to include both diurnal and nocturnal seizures (24-h) or diurnal seizures only (16-h). The algorithm's performance was assessed using a nested leave-one-patient-out cross-validation approach.
Results: Improvement over chance (IoC) performances were achieved for 48.7% and 40% of patients with the 16- and 24-h forecasting horizons, respectively. For patients with IoC performances, the proposed algorithm reached mean IoC, sensitivity and time in warning of 34.3%, 86.0%, and 51.7%, respectively for the 16-h horizon, and 34.2%, 64.4% and 30.2%, respectively, for the 24-h horizon.
Significance: Smart shirt-based nocturnal sleep analysis holds promise as a non-invasive approach for seizure-day forecasting in a subset of people with epilepsy. Further investigations, particularly in a residential setting with long-term recordings, could pave the way for the development of innovative and practical seizure forecasting devices.
Plain Language Summary: Seizure forecasting with wearable devices may improve the quality of life of people living with epilepsy who experience unpredictable, recurrent seizures. In this study, we have developed a seizure forecasting algorithm using sleep characteristics obtained from a smart shirt worn at night by a large number of hospitalized patients with epilepsy (78). A daily seizure forecast was generated following each night using machine learning methods. Our results show that around half of people with epilepsy may benefit from such an approach.
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http://dx.doi.org/10.1002/epi4.13008 | DOI Listing |
Neurology
October 2025
Department of Neurology, Johns Hopkins University School of Medicine, Baltimore, MD.
Objectives: Status epilepticus (SE) is a life-threatening neurologic emergency. Although health disparities in epilepsy are well-documented, disparities in SE mortality are not fully understood. This study analyzes mortality trends and demographics in the United States from 1999 through 2020.
View Article and Find Full Text PDFNeurol Clin Pract
October 2025
Department of Neurology, Division of Neurocritical Care and Emergency Neurology, Program in Trauma, University of Maryland, Baltimore, MD.
Background And Objectives: Guidelines for super-refractory status epilepticus (SRSE) evaluation, management, and prognostication are lacking. Characterization of practice patterns could identify trends and potential areas for future inquiry. We surveyed clinicians who manage SRSE to better understand practice approaches to SRSE evaluation, management, and prognostication.
View Article and Find Full Text PDFSemin Dial
September 2025
Department of Nephrology, Atal Bihari Vajpayee Institute of Medical Sciences and Dr. Ram Manohar Lohia Hospital, New Delhi, India.
Background: In hyponatremic patients, concurrent dialysate flow during hemodialysis may be an ideal option to mitigate complications such as osmotic demyelination syndrome (ODS).
Methods: Present randomized controlled trial enrolled dialysis-requiring chronic kidney disease (CKD) and acute kidney injury (AKI) patients with serum sodium levels < 125 mEq/L during January 2020 over 16 months. Hemodynamically unstable patients, as well as those with a history of seizures and neurological conditions, were excluded.
Neural Netw
September 2025
School of Automation, Northwestern Polytechnical University, Xi'an, 710072, Shaanxi, China. Electronic address:
Epilepsy with its complex seizure mechanisms and diverse clinical manifestations, presents numerous challenges for clinical diagnosis and treatment, while electroencephalography (EEG) plays a crucial and irreplaceable role in its diagnosis. Although general-purpose foundation models have demonstrated some capability in knowledge processing, they still face challenges in capturing specific disease features and dealing with data scarcity in highly specialized domains such as epilepsy. To address these issues, we propose a domain-specific foundation model for epilepsy-EpilepsyFM, designed to learn generalized representations of epilepsy to support various downstream tasks.
View Article and Find Full Text PDFSeizure
August 2025
Department of Physiology and Pharmacology, Federal University of Pernambuco, Recife, PE, Brazil.
Background: To systematically evaluate the efficacy, safety, and tolerability of adjunctive lacosamide (LCM) in children and adolescents with drug-resistant epilepsy (DRE).
Methods: A systematic review and single-arm meta-analysis was conducted in accordance with PRISMA 2020 guidelines. MEDLINE, Embase, and Cochrane Library were searched up to April 2025.