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Multi-Branch Convolutional Neural Network for Automatic Sleep Stage Classification with Embedded Stage Refinement and Residual Attention Channel Fusion

机译:用于自动睡眠阶段分类的多分支卷积神经网络嵌入式阶段改进和残余注意力信道融合

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摘要

Automatic sleep stage classification of multi-channel sleep signals can help clinicians efficiently evaluate an individual’s sleep quality and assist in diagnosing a possible sleep disorder. To obtain accurate sleep classification results, the processing flow of results from signal preprocessing and machine-learning-based classification is typically employed. These classification results are refined based on sleep transition rules. Neural networks—i.e., machine learning algorithms—are powerful at solving classification problems. Some methods apply them to the first two processes above; however, the refinement process continues to be based on traditional methods. In this study, the sleep stage refinement process was incorporated into the neural network model to form real end-to-end processing. In addition, for multi-channel signals, the multi-branch convolutional neural network was combined with a proposed residual attention method. This approach further improved the model classification accuracy. The proposed method was evaluated on the Sleep-EDF Expanded Database (Sleep-EDFx) and University College Dublin Sleep Apnea Database (UCDDB). It achieved respective accuracy rates of 85.7% and 79.4%. The results also showed that sleep stage refinement based on a neural network is more effective than the traditional refinement method. Moreover, the proposed residual attention method was determined to have a more robust channel–information fusion ability than the respective average and concatenation methods.
机译:自动睡眠阶段分类多通道睡眠信号可以帮助临床医生有效地评估个人的睡眠质量,并协助诊断可能的睡眠障碍。为了获得准确的睡眠分类结果,通常采用来自信号预处理和基于机器学习的分类的结果的处理流程。这些分类结果基于睡眠过渡规则来精制。神经网络 - 即,机器学习算法 - 在解决分类问题时是强大的。一些方法将它们应用于上述前两个过程;然而,细化过程继续基于传统方法。在该研究中,睡眠阶段细化过程被纳入神经网络模型,形成真实的端到端处理。另外,对于多通道信号,多分支卷积神经网络与提出的残余注意方法相结合。这种方法进一步提高了模型分类准确性。在睡眠 - EDF扩展数据库(睡眠-EDFX)和大学学院都柏林睡眠APNEA数据库(UCDDB)上评估了所提出的方法。它达到了85.7%和79.4%的相应精度率。结果还表明,基于神经网络的睡眠阶段细化比传统的细化方法更有效。此外,确定所提出的残余注意方法比相应的平均和串联方法具有更强大的通道信息融合能力。

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