AI Article Synopsis

  • This study develops an automatic sleep staging algorithm using a time attention mechanism and bi-directional GRU to efficiently classify sleep stages for improved diagnosis of sleep disorders.
  • The algorithm was tested on two datasets, achieving high accuracy and performance metrics, outperforming the latest competing methods.
  • A new balancing strategy was introduced to address the issue of low recognition rates for the N1 sleep stage, significantly enhancing its detection accuracy.

Article Abstract

The most important part of sleep quality assessment is the automatic classification of sleep stages. Sleep staging is helpful in the diagnosis of sleep-related diseases. This study proposes an automatic sleep staging algorithm based on the time attention mechanism. Time-frequency and non-linear features are extracted from the physiological signals of six channels and then normalized. The time attention mechanism combined with the two-way bi-directional gated recurrent unit (GRU) was used to reduce computing resources and time costs, and the conditional random field (CRF) was used to obtain information between tags. After five-fold cross-validation on the Sleep-EDF dataset, the values of accuracy, WF1, and Kappa were 0.9218, 0.9177, and 0.8751, respectively. After five-fold cross-validation on the our own dataset, the values of accuracy, WF1, and Kappa were 0.9006, 0.8991, and 0.8664, respectively, which is better than the result of the latest algorithm. In the study of sleep staging, the recognition rate of the N1 stage was low, and the imbalance has always been a problem. Therefore, this study introduces a type of balancing strategy. By adopting the proposed strategy, SEN-N1 and ACC of 0.7 and 0.86, respectively, can be achieved. The experimental results show that compared to the latest method, the proposed model can achieve significantly better performance and significantly improve the recognition rate of the N1 period. The performance comparison of different channels shows that even when the EEG channel was not used, considerable accuracy can be obtained.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8416031PMC
http://dx.doi.org/10.3389/fnhum.2021.692054DOI Listing

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