Literature DB >> 29775912

An accurate sleep stages classification system using a new class of optimally time-frequency localized three-band wavelet filter bank.

Manish Sharma1, Deepanshu Goyal2, P V Achuth3, U Rajendra Acharya4.   

Abstract

Sleep related disorder causes diminished quality of lives in human beings. Sleep scoring or sleep staging is the process of classifying various sleep stages which helps to detect the quality of sleep. The identification of sleep-stages using electroencephalogram (EEG) signals is an arduous task. Just by looking at an EEG signal, one cannot determine the sleep stages precisely. Sleep specialists may make errors in identifying sleep stages by visual inspection. To mitigate the erroneous identification and to reduce the burden on doctors, a computer-aided EEG based system can be deployed in the hospitals, which can help identify the sleep stages, correctly. Several automated systems based on the analysis of polysomnographic (PSG) signals have been proposed. A few sleep stage scoring systems using EEG signals have also been proposed. But, still there is a need for a robust and accurate portable system developed using huge dataset. In this study, we have developed a new single-channel EEG based sleep-stages identification system using a novel set of wavelet-based features extracted from a large EEG dataset. We employed a novel three-band time-frequency localized (TBTFL) wavelet filter bank (FB). The EEG signals are decomposed using three-level wavelet decomposition, yielding seven sub-bands (SBs). This is followed by the computation of discriminating features namely, log-energy (LE), signal-fractal-dimensions (SFD), and signal-sample-entropy (SSE) from all seven SBs. The extracted features are ranked and fed to the support vector machine (SVM) and other supervised learning classifiers. In this study, we have considered five different classification problems (CPs), (two-class (CP-1), three-class (CP-2), four-class (CP-3), five-class (CP-4) and six-class (CP-5)). The proposed system yielded accuracies of 98.3%, 93.9%, 92.1%, 91.7%, and 91.5% for CP-1 to CP-5, respectively, using 10-fold cross validation (CV) technique.
Copyright © 2018 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Classification; Electroencephalogram signal; Sleep stages; Three-band wavelet filter bank; Time-frequency localization

Mesh:

Year:  2018        PMID: 29775912     DOI: 10.1016/j.compbiomed.2018.04.025

Source DB:  PubMed          Journal:  Comput Biol Med        ISSN: 0010-4825            Impact factor:   4.589


  13 in total

1.  Time-frequency localization using three-tap biorthogonal wavelet filter bank for electrocardiogram compressions.

Authors:  Ashish Kumar; Rama Komaragiri; Manjeet Kumar
Journal:  Biomed Eng Lett       Date:  2019-06-28

2.  Automated sleep stage scoring of the Sleep Heart Health Study using deep neural networks.

Authors:  Linda Zhang; Daniel Fabbri; Raghu Upender; David Kent
Journal:  Sleep       Date:  2019-10-21       Impact factor: 5.849

3.  A deep learning algorithm based on 1D CNN-LSTM for automatic sleep staging.

Authors:  Dechun Zhao; Renpin Jiang; Mingyang Feng; Jiaxin Yang; Yi Wang; Xiaorong Hou; Xing Wang
Journal:  Technol Health Care       Date:  2022       Impact factor: 1.205

4.  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

5.  EEG-Based Sleep Staging Analysis with Functional Connectivity.

Authors:  Hui Huang; Jianhai Zhang; Li Zhu; Jiajia Tang; Guang Lin; Wanzeng Kong; Xu Lei; Lei Zhu
Journal:  Sensors (Basel)       Date:  2021-03-11       Impact factor: 3.576

6.  Automated detection of schizophrenia using optimal wavelet-based l 1 norm features extracted from single-channel EEG.

Authors:  Manish Sharma; U Rajendra Acharya
Journal:  Cogn Neurodyn       Date:  2021-01-15       Impact factor: 3.473

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

Authors:  Mesut Melek; Negin Manshouri; Temel Kayikcioglu
Journal:  Cogn Neurodyn       Date:  2020-10-12       Impact factor: 3.473

8.  Convolution-and Attention-Based Neural Network for Automated Sleep Stage Classification.

Authors:  Tianqi Zhu; Wei Luo; Feng Yu
Journal:  Int J Environ Res Public Health       Date:  2020-06-10       Impact factor: 3.390

9.  EEG-Based Automatic Sleep Staging Using Ontology and Weighting Feature Analysis.

Authors:  Bingtao Zhang; Tao Lei; Hong Liu; Hanshu Cai
Journal:  Comput Math Methods Med       Date:  2018-09-04       Impact factor: 2.238

10.  Hypertension Diagnosis Index for Discrimination of High-Risk Hypertension ECG Signals Using Optimal Orthogonal Wavelet Filter Bank.

Authors:  Jaypal Singh Rajput; Manish Sharma; U Rajendra Acharya
Journal:  Int J Environ Res Public Health       Date:  2019-10-23       Impact factor: 3.390

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