Author
Listed:
- Zhihong Cui
- Xiangwei Zheng
- Xuexiao Shao
- Lizhen Cui
Abstract
Sleep stage classification plays an important role in the diagnosis of sleep-related diseases. However, traditional automatic sleep stage classification is quite challenging because of the complexity associated with the establishment of mathematical models and the extraction of handcrafted features. In addition, the rapid fluctuations between sleep stages often result in blurry feature extraction, which might lead to an inaccurate assessment of electroencephalography (EEG) sleep stages. Hence, we propose an automatic sleep stage classification method based on a convolutional neural network (CNN) combined with the fine-grained segment in multiscale entropy. First, we define every 30 seconds of the multichannel EEG signal as a segment. Then, we construct an input time series based on the fine-grained segments, which means that the posterior and current segments are reorganized as an input containing several segments and the size of the time series is decided based on the scale chosen depending on the fine-grained segments. Next, each segment in this series is individually put into the designed CNN and feature maps are obtained after two blocks of convolution and max-pooling as well as a full-connected operation. Finally, the results from the full-connected layer of each segment in the input time sequence are put into the softmax classifier together to get a single most likely sleep stage. On a public dataset called ISRUC-Sleep, the average accuracy of our proposed method is 92.2%. Moreover, it yields an accuracy of 90%, 86%, 93%, 97%, and 90% for stage W, stage N1, stage N2, stage N3, and stage REM, respectively. Comparative analysis of performance suggests that the proposed method is better, as opposed to that of several state-of-the-art ones. The sleep stage classification methods based on CNN and the fine-grained segments really improve a key step in the study of sleep disorders and expedite sleep research.
Suggested Citation
Zhihong Cui & Xiangwei Zheng & Xuexiao Shao & Lizhen Cui, 2018.
"Automatic Sleep Stage Classification Based on Convolutional Neural Network and Fine-Grained Segments,"
Complexity, Hindawi, vol. 2018, pages 1-13, October.
Handle:
RePEc:hin:complx:9248410
DOI: 10.1155/2018/9248410
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Citations
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Cited by:
- Choi, Seokkyu & Lee, Hyeonju & Park, Eunjeong & Choi, Sungchul, 2022.
"Deep learning for patent landscaping using transformer and graph embedding,"
Technological Forecasting and Social Change, Elsevier, vol. 175(C).
- Mengxin Liu & Wenyuan Tao & Xiao Zhang & Yi Chen & Jie Li & Chung-Ming Own, 2019.
"GO Loss: A Gaussian Distribution-Based Orthogonal Decomposition Loss for Classification,"
Complexity, Hindawi, vol. 2019, pages 1-10, December.
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