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MixSleepNet: A Multi-Type Convolution Combined Sleep Stage Classification Model.
Ji, Xiaopeng; Li, Yan; Wen, Peng; Barua, Prabal; Acharya, U Rajendra.
Afiliação
  • Ji X; School of Mathematics, Physics and Computing, University of Southern Queensland, Toowoomba, QLD 4350, Australia. Electronic address: xiaopeng.ji@usq.edu.au.
  • Li Y; School of Mathematics, Physics and Computing, University of Southern Queensland, Toowoomba, QLD 4350, Australia. Electronic address: yan.li@usq.edu.au.
  • Wen P; School of Engineering, University of Southern Queensland, Toowoomba, QLD 4350, Australia. Electronic address: paul.wen@usq.edu.au.
  • Barua P; Cogninet Brain Team, Sydney, NSW 2010, Australia. Electronic address: prabal.barua@usq.edu.au.
  • Acharya UR; School of Mathematics, Physics and Computing, University of Southern Queensland, Toowoomba, QLD 4350, Australia. Electronic address: rajendra.acharya@usq.edu.au.
Comput Methods Programs Biomed ; 244: 107992, 2024 Feb.
Article em En | MEDLINE | ID: mdl-38218118
ABSTRACT
BACKGROUND AND

OBJECTIVE:

Sleep staging is an essential step for sleep disorder diagnosis, which is time-intensive and laborious for experts to perform this work manually. Automatic sleep stage classification methods not only alleviate experts from these demanding tasks but also enhance the accuracy and efficiency of the classification process.

METHODS:

A novel multi-channel biosignal-based model constructed by the combination of a 3D convolutional operation and a graph convolutional operation is proposed for the automated sleep stages using various physiological signals. Both the 3D convolution and graph convolution can aggregate information from neighboring brain areas, which helps to learn intrinsic connections from the biosignals. Electroencephalogram (EEG), electromyogram (EMG), electrooculogram (EOG) and electrocardiogram (ECG) signals are employed to extract time domain and frequency domain features. Subsequently, these signals are input to the 3D convolutional and graph convolutional branches, respectively. The 3D convolution branch can explore the correlations between multi-channel signals and multi-band waves in each channel in the time series, while the graph convolution branch can explore the connections between each channel and each frequency band. In this work, we have developed the proposed multi-channel convolution combined sleep stage classification model (MixSleepNet) using ISRUC datasets (Subgroup 3 and 50 random samples from Subgroup 1).

RESULTS:

Based on the first expert's label, our generated MixSleepNet yielded an accuracy, F1-score and Cohen kappa scores of 0.830, 0.821 and 0.782, respectively for ISRUC-S3. It obtained accuracy, F1-score and Cohen kappa scores of 0.812, 0.786, and 0.756, respectively for the ISRUC-S1 dataset. In accordance with the evaluations conducted by the second expert, the comprehensive accuracies, F1-scores, and Cohen kappa coefficients for the ISRUC-S3 and ISRUC-S1 datasets are determined to be 0.837, 0.820, 0.789, and 0.829, 0.791, 0.775, respectively.

CONCLUSION:

The results of the performance metrics by the proposed method are much better than those from all the compared models. Additional experiments were carried out on the ISRUC-S3 sub-dataset to evaluate the contributions of each module towards the classification performance.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Sono / Fases do Sono Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Sono / Fases do Sono Idioma: En Ano de publicação: 2024 Tipo de documento: Article