Literature DB >> 34876865

Automatic Sleep Stage Classification of Children with Sleep-Disordered Breathing Using the Modularized Network.

Huijun Wang1,2,3, Guodong Lin4, Yanru Li1,2,3, Xiaoqing Zhang1,2,3, Wen Xu1,2,3, Xingjun Wang4, Demin Han1,2,3.   

Abstract

PURPOSE: To develop an automatic sleep stage analysis model for children and evaluate the effect of the model on the diagnosis of sleep-disordered breathing (SDB). PATIENTS AND METHODS: Three hundred and forty-four SDB patients aged between 2 to 18 years who completed polysomnography (PSG) to assess the severity of the disease were enrolled in this study. We developed deep neural networks to stage sleep from electroencephalography (EEG), electrooculography (EOG) and electromyogram (EMG). The model performance was estimated by accuracy, precision, recall, F1-score, and Cohen's Kappa coefficient (ĸ). And we compared the difference in calculation of sleep parameters among the technicians, the model ensemble, and the single-channel EEG model.
RESULTS: The numbers of raw data divided into training, validation, and testing were 240, 36, and 68, respectively. The best performance appeared in the model ensemble of which the accuracy was 83.36% (ĸ=0.7817) in 5-stages, and the accuracy was 96.76% (ĸ=0.8236) in 2-stages. The single-channel EEG model showed the classification satisfyingly as well. There was no significant difference in TST, SE, SOL, time in W, time in N1+N2, time in N3, and OAHI between technician and the model (P>0.05). On the datasets from sleep-EDF-13 and sleep-EDF-18, the average classification accuracies achieved were 92.76% and 91.94% in 5-stages by using the proposed method, respectively.
CONCLUSION: This research established the model for pediatric automatic sleep stage classification with satisfying reliability and generalizability. In addition, it could be applied for calculating quantitative sleep parameters and evaluating the severity of SDB.
© 2021 Wang et al.

Entities:  

Keywords:  SDB; children; deep learning; sleep stage; sleep-disordered breathing

Year:  2021        PMID: 34876865      PMCID: PMC8643215          DOI: 10.2147/NSS.S336344

Source DB:  PubMed          Journal:  Nat Sci Sleep        ISSN: 1179-1608


  29 in total

1.  Automatic Sleep Stage Classification Using Temporal Convolutional Neural Network and New Data Augmentation Technique from Raw Single-Channel EEG.

Authors:  Ebrahim Khalili; Babak Mohammadzadeh Asl
Journal:  Comput Methods Programs Biomed       Date:  2021-03-27       Impact factor: 5.428

2.  [Chinese guideline for the diagnosis and treatment of childhood obstructive sleep apnea (2020)].

Authors: 
Journal:  Zhonghua Er Bi Yan Hou Tou Jing Wai Ke Za Zhi       Date:  2020-08-07

3.  Sleep staging from electrocardiography and respiration with deep learning.

Authors:  Haoqi Sun; Wolfgang Ganglberger; Ezhil Panneerselvam; Michael J Leone; Syed A Quadri; Balaji Goparaju; Ryan A Tesh; Oluwaseun Akeju; Robert J Thomas; M Brandon Westover
Journal:  Sleep       Date:  2020-07-13       Impact factor: 5.849

4.  Sleep stage classification for child patients using DeConvolutional Neural Network.

Authors:  Xinyu Huang; Kimiaki Shirahama; Frédéric Li; Marcin Grzegorzek
Journal:  Artif Intell Med       Date:  2020-11-02       Impact factor: 5.326

5.  Rules for scoring respiratory events in sleep: update of the 2007 AASM Manual for the Scoring of Sleep and Associated Events. Deliberations of the Sleep Apnea Definitions Task Force of the American Academy of Sleep Medicine.

Authors:  Richard B Berry; Rohit Budhiraja; Daniel J Gottlieb; David Gozal; Conrad Iber; Vishesh K Kapur; Carole L Marcus; Reena Mehra; Sairam Parthasarathy; Stuart F Quan; Susan Redline; Kingman P Strohl; Sally L Davidson Ward; Michelle M Tangredi
Journal:  J Clin Sleep Med       Date:  2012-10-15       Impact factor: 4.062

6.  A decision support system for automatic sleep staging from EEG signals using tunable Q-factor wavelet transform and spectral features.

Authors:  Ahnaf Rashik Hassan; Mohammed Imamul Hassan Bhuiyan
Journal:  J Neurosci Methods       Date:  2016-07-22       Impact factor: 2.390

7.  Dreem Open Datasets: Multi-Scored Sleep Datasets to Compare Human and Automated Sleep Staging.

Authors:  Antoine Guillot; Fabien Sauvet; Emmanuel H During; Valentin Thorey
Journal:  IEEE Trans Neural Syst Rehabil Eng       Date:  2020-07-22       Impact factor: 3.802

8.  Automatic Sleep Stage Scoring Using Time-Frequency Analysis and Stacked Sparse Autoencoders.

Authors:  Orestis Tsinalis; Paul M Matthews; Yike Guo
Journal:  Ann Biomed Eng       Date:  2015-10-13       Impact factor: 3.934

9.  SleepEEGNet: Automated sleep stage scoring with sequence to sequence deep learning approach.

Authors:  Sajad Mousavi; Fatemeh Afghah; U Rajendra Acharya
Journal:  PLoS One       Date:  2019-05-07       Impact factor: 3.240

10.  A Deep Learning Model for Automated Sleep Stages Classification Using PSG Signals.

Authors:  Ozal Yildirim; Ulas Baran Baloglu; U Rajendra Acharya
Journal:  Int J Environ Res Public Health       Date:  2019-02-19       Impact factor: 3.390

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