← Volver a resultados
Ficha bibliográfica · Consulta y acceso
Artículo de revista

SleepTNet: Automatic Sleep Stage Classification With Transition Model Using Multi-Channel EEG

Waruna Saowapark et al · IEEE · 2026

Acceso abierto disponible
Lectura rápida. Revisá los datos básicos del recurso y luego accedé al contenido desde el botón principal. En esta ficha solo se muestra la información necesaria para identificar la obra, citarla y abrirla.
Publicación seriada

3PS-RAN: A Real-Time Framework for Securing the O-RAN RACH Against DDoS Attacks Toward NextG

Esta publicación seriada contiene 172 contenidos relacionados.

Acceso al recurso

Entrá al contenido desde la opción principal o elegí otra fuente disponible.

Acceso principal

Acceso abierto disponible

Recurso identificado como acceso abierto, sin confirmar automáticamente si es texto completo directo.
Abrir recurso

Resumen

Descripción general del contenido del recurso.

Sleep plays an important role in physical health, cognition, and emotional well-being. Since sleep disorders can affect all these aspects, accurately detecting sleep stages is key to proper diagnosis and monitoring. Automatic sleep stage classification is essential, as manual annotation is time-consuming and inconsistent. Most existing automatic sleep stage classification models continue to exhibit performance gaps in detecting transition stages. To address this issue, SleepTNet is proposed as a deep learning framework for automatic sleep stage classification using EEG signals. The model is composed of two modules: a representative feature extraction module and a sequential classification module. The model adopts enzyme-inspired concept and separating training strategies, with its core built around transition models designed to detect transition epochs. The proposed model contained approximately 7.7 million trainable parameters, balancing performance and model efficiency. The model was evaluated on the Massachusetts General Hospital (MGH) dataset using EEG signals and obtained an overall accuracy of 81.39%, macro-F1 score of 79.52%, and Cohen’s kappa of 0.75, outperformed several state-of-the-art results. Additionally, the model evaluated transition and non-transition epochs separately, achieved a transition epoch accuracy of 62.06% and non-transition accuracy of 87.01%. In non-transition epochs, per-class F1 scores ranged from 52.71% (N3) to 70.34% (W), while in transition epochs, scores ranged from 62.90% (N1) to 91.77% (REM). Notably, SleepTNet enhances transition epoch detection while maintaining comparable performance on non-transition epochs.

Cómo citar

Elegí el formato que necesitás y copiá la referencia al portapapeles.

APA 7

al, W. S. E. (2026). SleepTNet: Automatic Sleep Stage Classification With Transition Model Using Multi-Channel EEG. https://doi.org/10.1109/ACCESS.2026.3686667

MLA

al, Waruna Saowapark et. "SleepTNet: Automatic Sleep Stage Classification With Transition Model Using Multi-Channel EEG." 2026. https://doi.org/10.1109/ACCESS.2026.3686667.

Chicago

al, Waruna Saowapark et. 2026. "SleepTNet: Automatic Sleep Stage Classification With Transition Model Using Multi-Channel EEG.". https://doi.org/10.1109/ACCESS.2026.3686667.

Harvard

al, W. S. E. 2026, SleepTNet: Automatic Sleep Stage Classification With Transition Model Using Multi-Channel EEG, IEEE, available at: https://doi.org/10.1109/ACCESS.2026.3686667 [Accessed 29 Jun. 2026].

Compartir e imprimir

Guardá la ficha, copiá su enlace permanente o imprimila como PDF.

Exportar referencia

Si usás un gestor bibliográfico, podés exportar el registro en los formatos más comunes.

Detalles del recurso

Información bibliográfica útil para confirmar que se trata del material correcto.

Título
SleepTNet: Automatic Sleep Stage Classification With Transition Model Using Multi-Channel EEG
Autor / colaboradores
Waruna Saowapark et al
Editorial
IEEE
Año de publicación
2026
ISSN
2169-3536
ISSN
2169-3536
Idioma
eng

Materias

Explorá otros recursos relacionados a partir de estas materias.

Copiado