Literature DB >> 35637772

Sleep Stage Classification Based on Multi-Centers: Comparison Between Different Ages, Mental Health Conditions and Acquisition Devices.

Ziliang Xu1, Yuanqiang Zhu1, Hongliang Zhao1, Fan Guo1, Huaning Wang2, Minwen Zheng1.   

Abstract

Purpose: To investigate the general sleep stage classification performance of deep learning networks, three datasets, across different age groups, mental health conditions, and acquisition devices, comprising adults (SHHS) and children without mental health conditions (CCSHS), and subjects with mental health conditions (XJ), were included in this study.
Methods: A long short-term memory (LSTM) network was used to evaluate the effect of different ages, mental health conditions, and acquisition devices on the sleep stage classification performance and the general performance.
Results: Results showed that the age and different mental health conditions may affect the sleep stage classification performance of the network. The same acquisition device using different parameters may not have an obvious effect on the classification performance. When using a single dataset and two datasets for training, the network performed better only on the training dataset. When training was conducted with three datasets, the network performed well for all datasets with a Cohen's Kappa of 0.8192 and 0.8472 for the SHHS and CCSHS, respectively, but performed relatively worse (0.6491) for the XJ, which indicated the complexity effect of different mental health conditions on the sleep stage classification task. Moreover, the performance of the network trained using three datasets was similar for each dataset to that of the network trained using a single dataset and tested on the same dataset.
Conclusion: These results suggested that when more datasets across different age groups, mental health conditions, and acquisition devices (ie, more datasets with different feature distributions for each sleep stage) are used for training, the general performance of a deep learning network will be superior for sleep stage classification tasks with varied conditions.
© 2022 Xu et al.

Entities:  

Keywords:  deep learning network; electroencephalogram; sleep stage classification; time-frequency spectrum

Year:  2022        PMID: 35637772      PMCID: PMC9148176          DOI: 10.2147/NSS.S355702

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


  26 in total

1.  A two-step automatic sleep stage classification method with dubious range detection.

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Journal:  Sleep       Date:  1997-12       Impact factor: 5.849

Review 4.  A comparative review on sleep stage classification methods in patients and healthy individuals.

Authors:  Reza Boostani; Foroozan Karimzadeh; Mohammad Nami
Journal:  Comput Methods Programs Biomed       Date:  2016-12-10       Impact factor: 5.428

5.  Prevalence and risk factors for sleep-disordered breathing in 8- to 11-year-old children: association with race and prematurity.

Authors:  Carol L Rosen; Emma K Larkin; H Lester Kirchner; Judith L Emancipator; Sarah F Bivins; Susan A Surovec; Richard J Martin; Susan Redline
Journal:  J Pediatr       Date:  2003-04       Impact factor: 4.406

Review 6.  The relationship between sleep and cognition in Parkinson's disease: A meta-analysis.

Authors:  Maria E Pushpanathan; Andrea M Loftus; Meghan G Thomas; Natalie Gasson; Romola S Bucks
Journal:  Sleep Med Rev       Date:  2015-04-25       Impact factor: 11.609

7.  Acoustic enhancement of slow wave sleep on consecutive nights improves alertness and attention in chronically short sleepers.

Authors:  Charmaine Diep; Gary Garcia-Molina; Jeff Jasko; Jessica Manousakis; Lynn Ostrowski; David White; Clare Anderson
Journal:  Sleep Med       Date:  2021-01-30       Impact factor: 3.492

8.  An end-to-end framework for real-time automatic sleep stage classification.

Authors:  Amiya Patanaik; Ju Lynn Ong; Joshua J Gooley; Sonia Ancoli-Israel; Michael W L Chee
Journal:  Sleep       Date:  2018-05-01       Impact factor: 5.849

9.  Expert-level sleep scoring with deep neural networks.

Authors:  Siddharth Biswal; Haoqi Sun; Balaji Goparaju; M Brandon Westover; Jimeng Sun; Matt T Bianchi
Journal:  J Am Med Inform Assoc       Date:  2018-12-01       Impact factor: 4.497

10.  Neural network analysis of sleep stages enables efficient diagnosis of narcolepsy.

Authors:  Jens B Stephansen; Alexander N Olesen; Mads Olsen; Aditya Ambati; Eileen B Leary; Hyatt E Moore; Oscar Carrillo; Ling Lin; Fang Han; Han Yan; Yun L Sun; Yves Dauvilliers; Sabine Scholz; Lucie Barateau; Birgit Hogl; Ambra Stefani; Seung Chul Hong; Tae Won Kim; Fabio Pizza; Giuseppe Plazzi; Stefano Vandi; Elena Antelmi; Dimitri Perrin; Samuel T Kuna; Paula K Schweitzer; Clete Kushida; Paul E Peppard; Helge B D Sorensen; Poul Jennum; Emmanuel Mignot
Journal:  Nat Commun       Date:  2018-12-06       Impact factor: 14.919

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