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An Attention-Guided Spatiotemporal Graph Convolutional Network for Sleep Stage Classification
by
Menglei Li
, Zixue Cheng
, Hongbo Chen
in
Accuracy
/ Artificial neural networks
/ attention
/ Brain
/ Brain research
/ Classification
/ Deep learning
/ EEG
/ Electrodes
/ Electroencephalography
/ Eye movements
/ Feature extraction
/ Medical research
/ Neural networks
/ Q
/ Science
/ Sleep
/ Sleep apnea
/ Sleep disorders
/ sleep stage classification
/ sleep stage classification; spatiotemporal graph convolutional network; attention
/ spatiotemporal graph convolutional network
/ Subgroups
/ Temporal variations
2022
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An Attention-Guided Spatiotemporal Graph Convolutional Network for Sleep Stage Classification
by
Menglei Li
, Zixue Cheng
, Hongbo Chen
in
Accuracy
/ Artificial neural networks
/ attention
/ Brain
/ Brain research
/ Classification
/ Deep learning
/ EEG
/ Electrodes
/ Electroencephalography
/ Eye movements
/ Feature extraction
/ Medical research
/ Neural networks
/ Q
/ Science
/ Sleep
/ Sleep apnea
/ Sleep disorders
/ sleep stage classification
/ sleep stage classification; spatiotemporal graph convolutional network; attention
/ spatiotemporal graph convolutional network
/ Subgroups
/ Temporal variations
2022
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Do you wish to request the book?
An Attention-Guided Spatiotemporal Graph Convolutional Network for Sleep Stage Classification
by
Menglei Li
, Zixue Cheng
, Hongbo Chen
in
Accuracy
/ Artificial neural networks
/ attention
/ Brain
/ Brain research
/ Classification
/ Deep learning
/ EEG
/ Electrodes
/ Electroencephalography
/ Eye movements
/ Feature extraction
/ Medical research
/ Neural networks
/ Q
/ Science
/ Sleep
/ Sleep apnea
/ Sleep disorders
/ sleep stage classification
/ sleep stage classification; spatiotemporal graph convolutional network; attention
/ spatiotemporal graph convolutional network
/ Subgroups
/ Temporal variations
2022
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An Attention-Guided Spatiotemporal Graph Convolutional Network for Sleep Stage Classification
Journal Article
An Attention-Guided Spatiotemporal Graph Convolutional Network for Sleep Stage Classification
2022
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Overview
Sleep staging has been widely used as an approach in sleep diagnoses at sleep clinics. Graph neural network (GNN)-based methods have been extensively applied for automatic sleep stage classifications with significant results. However, the existing GNN-based methods rely on a static adjacency matrix to capture the features of the different electroencephalogram (EEG) channels, which cannot grasp the information of each electrode. Meanwhile, these methods ignore the importance of spatiotemporal relations in classifying sleep stages. In this work, we propose a combination of a dynamic and static spatiotemporal graph convolutional network (ST-GCN) with inter-temporal attention blocks to overcome two shortcomings. The proposed method consists of a GCN with a CNN that takes into account the intra-frame dependency of each electrode in the brain region to extract spatial and temporal features separately. In addition, the attention block was used to capture the long-range dependencies between the different electrodes in the brain region, which helps the model to classify the dynamics of each sleep stage more accurately. In our experiments, we used the sleep-EDF and the subgroup III of the ISRUC-SLEEP dataset to compare with the most current methods. The results show that our method performs better in accuracy from 4.6% to 5.3%, in Kappa from 0.06 to 0.07, and in macro-F score from 4.9% to 5.7%. The proposed method has the potential to be an effective tool for improving sleep disorders.
Publisher
MDPI AG,MDPI
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