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Collaborative Sleep Electroencephalogram Data Analysis Based on Improved Empirical Mode Decomposition and Clustering Algorithm

Author

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  • Xiangwei Zheng
  • Xiaochun Yin
  • Xuexiao Shao
  • Yalin Li
  • Xiaomei Yu

Abstract

Sleep-related diseases seriously affect the life quality of patients. Sleep stage classification (or sleep staging), which studies the human sleep process and classifies the sleep stages, is an important reference to the diagnosis and study of sleep disorders. Many scholars have conducted a series of sleep staging studies, but the correlation between different sleep stages and the accuracy of classification still needs to be improved. Therefore, this paper proposes an automatic sleep stage classification based on EEG. By constructing an improved empirical mode decomposition and K-means experimental model, the concept of “frequency-domain correlation coefficient” is defined. In the process of feature extraction, the feature vector with the best correlation in the time-frequency domain is selected. Extraction and classification of EEG features are realized based on the K-means clustering algorithm. Experimental results demonstrate that the classification accuracy is significantly improved, and our proposed algorithm has a positive impact on sleep staging compared with other algorithms.

Suggested Citation

  • Xiangwei Zheng & Xiaochun Yin & Xuexiao Shao & Yalin Li & Xiaomei Yu, 2020. "Collaborative Sleep Electroencephalogram Data Analysis Based on Improved Empirical Mode Decomposition and Clustering Algorithm," Complexity, Hindawi, vol. 2020, pages 1-14, June.
  • Handle: RePEc:hin:complx:1496973
    DOI: 10.1155/2020/1496973
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