Literature DB >> 34040668

An automatic EEG-based sleep staging system with introducing NAoSP and NAoGP as new metrics for sleep staging systems.

Mesut Melek1, Negin Manshouri2, Temel Kayikcioglu2.   

Abstract

Different biological signals are recorded in sleep labs during sleep for the diagnosis and treatment of human sleep problems. Classification of sleep stages with electroencephalography (EEG) is preferred to other biological signals due to its advantages such as providing clinical information, cost-effectiveness, comfort, and ease of use. The evaluation of EEG signals taken during sleep by clinicians is a tiring, time-consuming, and error-prone method. Therefore, it is clinically mandatory to determine sleep stages by using software-supported systems. Like all classification problems, the accuracy rate is used to compare the performance of studies in this domain, but this metric can be accurate when the number of observations is equal in classes. However, since there is not an equal number of observations in sleep stages, this metric is insufficient in the evaluation of such systems. For this purpose, in recent years, Cohen's kappa coefficient and even the sensitivity of NREM1 have been used for comparing the performance of these systems. Still, none of them examine the system from all dimensions. Therefore, in this study, two new metrics based on the polygon area metric, called the normalized area of sensitivity polygon and normalized area of the general polygon, are proposed for the performance evaluation of sleep staging systems. In addition, a new sleep staging system is introduced using the applications offered by the MATLAB program. The existing systems discussed in the literature were examined with the proposed metrics, and the best systems were compared with the proposed sleep staging system. According to the results, the proposed system excels in comparison with the most advanced machine learning methods. The single-channel method introduced based on the proposed metrics can be used for robust and reliable sleep stage classification from all dimensions required for real-time applications. © Springer Nature B.V. 2020.

Entities:  

Keywords:  EEG; General polygon; PAM; Sensitivity polygon; Sleep stage classification

Year:  2020        PMID: 34040668      PMCID: PMC8131449          DOI: 10.1007/s11571-020-09641-2

Source DB:  PubMed          Journal:  Cogn Neurodyn        ISSN: 1871-4080            Impact factor:   3.473


  15 in total

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Journal:  Circulation       Date:  2000-06-13       Impact factor: 29.690

2.  Analysis of a sleep-dependent neuronal feedback loop: the slow-wave microcontinuity of the EEG.

Authors:  B Kemp; A H Zwinderman; B Tuk; H A Kamphuisen; J J Oberyé
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3.  Analysis and classification of sleep stages based on difference visibility graphs from a single-channel EEG signal.

Authors:  Guohun Zhu; Yan Li; Peng Paul Wen
Journal:  IEEE J Biomed Health Inform       Date:  2014-11       Impact factor: 5.772

4.  Deep convolutional neural network for classification of sleep stages from single-channel EEG signals.

Authors:  Z Mousavi; T Yousefi Rezaii; S Sheykhivand; A Farzamnia; S N Razavi
Journal:  J Neurosci Methods       Date:  2019-06-12       Impact factor: 2.390

5.  Automated identification of sleep states from EEG signals by means of ensemble empirical mode decomposition and random under sampling boosting.

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Journal:  Comput Methods Programs Biomed       Date:  2016-12-27       Impact factor: 5.428

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Review 7.  Sleep scoring using artificial neural networks.

Authors:  Marina Ronzhina; Oto Janoušek; Jana Kolářová; Marie Nováková; Petr Honzík; Ivo Provazník
Journal:  Sleep Med Rev       Date:  2011-10-24       Impact factor: 11.609

8.  Automated phase classification in cyclic alternating patterns in sleep stages using Wigner-Ville Distribution based features.

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Journal:  Comput Biol Med       Date:  2020-03-04       Impact factor: 4.589

9.  Computer based sleep recording and analysis.

Authors:  Thomas Penzel; Regina Conradt
Journal:  Sleep Med Rev       Date:  2000-04       Impact factor: 11.609

Review 10.  Why REM sleep? Clues beyond the laboratory in a more challenging world.

Authors:  Jim Horne
Journal:  Biol Psychol       Date:  2012-11-19       Impact factor: 3.251

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2.  Automatic and Accurate Sleep Stage Classification via a Convolutional Deep Neural Network and Nanomembrane Electrodes.

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  2 in total

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