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Journal ArticleDOI

A New Method for Automatic Sleep Stage Classification

Junming Zhang, +1 more
- 14 Aug 2017 - 
- Vol. 11, Iss: 5, pp 1097-1110
TLDR
A new model named fast discriminative complex-valued convolutional neural network (FDCCNN) is proposed to extract features from raw EEG data and classify sleep stages, which can capture the sleep information hidden inside electroencephalography (EEG) signals and automatically extract Features from raw data.
Abstract
Traditionally, automatic sleep stage classification is quite a challenging task because of the difficulty in translating open-textured standards to mathematical models and the limitations of handcrafted features. In this paper, a new system for automatic sleep stage classification is presented. Compared with existing sleep stage methods, our method can capture the sleep information hidden inside electroencephalography (EEG) signals and automatically extract features from raw data. To translate open sleep stage standards into machine rules recognized by computers, a new model named fast discriminative complex-valued convolutional neural network (FDCCNN) is proposed to extract features from raw EEG data and classify sleep stages. The new model combines complex-valued backpropagation and the Fisher criterion. It can learn discriminative features and overcome the negative effect of imbalance dataset. More importantly, the orthogonal decision boundaries for the real and imaginary parts of a complex-valued convolutional neuron are proven. A speed-up algorithm is proposed to reduce computational workload and yield improvements of over an order of magnitude compared to the normal convolution algorithm. The classification performances of handcrafted features and different convolutional neural networks are compared with that of the FDCCNN. The total accuracy and kappa coefficient of the proposed method are 92% and 0.84, respectively. Experiment results demonstrated that the performance of our system is comparable to those of human experts.

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Citations
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Joint Classification and Prediction CNN Framework for Automatic Sleep Stage Classification

TL;DR: This paper proposes a joint classification-and-prediction framework based on convolutional neural networks (CNNs) for automatic sleep staging, and introduces a simple yet efficient CNN architecture to power the framework.
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Learning Spatial–Spectral–Temporal EEG Features With Recurrent 3D Convolutional Neural Networks for Cross-Task Mental Workload Assessment

TL;DR: Results indicate that R3DCNN is capable of identifying the mental workload levels for cross-task conditions, and the visualization of the convolutional layers demonstrates that the deep neural network can extract detailed features.
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Robust sleep stage classification with single-channel EEG signals using multimodal decomposition and HMM-based refinement

TL;DR: A novel multimodal signal decomposition and feature extraction strategy is presented to obtain effective features for sub-band signals and a rule-free refinement process based on hidden Markov model (HMM) is proposed to optimize the classification results automatically.
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Use of features from RR-time series and EEG signals for automated classification of sleep stages in deep neural network framework

TL;DR: A novel method for the classification of sleep stages based on RR-time series and electroencephalogram (EEG) signal is presented and the proposed method has achieved an average accuracy of 85.51%, 94.03% and 95.71% for the Classification of ‘sleep vs wake’, ‘light sleep vs deep sleep’ and ‘rapid eye movement (REM) vs non-rapidEye movement (NREM)’ sleep stages.
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