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Deep Learning for Sleep Stage Classification

机译:深度学习用于睡眠阶段分类

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Scoring of sleep stages plays an important role in the diagnosis of sleep-related diseases. Scoring by visual inspection is time-consuming and heavily depends on the experience of experts. Thus, there is an urgent need for an automatic sleep stage classification system. This paper proposes a novel compact convolutional neural network (C-CNN) using only single-channel EEG signal. Compared with traditional machine learning approaches based on hand-engineered features, our approach provides an end-to-end solution that requires almost no prior knowledge and preprocessing while achieving better performance. Experiments on the expanded Sleep-EDF database verified its effectiveness and efficiency. In addition, we notice the issue of class imbalance in sleep stages, and a class-imbalance metric, the balanced classification accuracy (BCA), is introduced. At the cost of a little drop in accuracy, which is still higher than existing classification methods, the introduction of class-imbalance weights can significantly increase the BCA metric and result in a higher recall for each sleep stage. This paper also proposes a recurrent neural network based on the attention mechanism and bidirectional long short-term memory (LSTM), which provides better performance than C-CNN but requires more training time.
机译:睡眠阶段评分在睡眠相关疾病的诊断中起着重要作用。通过视觉检查进行评分非常耗时,并且在很大程度上取决于专家的经验。因此,迫切需要一种自动睡眠阶段分类系统。本文提出了一种仅使用单通道EEG信号的新型紧凑卷积神经网络(C-CNN)。与基于手工设计功能的传统机器学习方法相比,我们的方法提供了一种端到端解决方案,该解决方案几乎不需要任何先验知识和预处理,即可实现更好的性能。在扩展的Sleep-EDF数据库上进行的实验证明了其有效性和效率。此外,我们注意到睡眠阶段的班级失衡问题,并引入了班级失衡指标,即平衡的分类准确度(BCA)。以准确度稍有下降为代价(仍高于现有分类方法),引入类别不平衡权重可以显着提高BCA度量标准,并导致每个睡眠阶段的召回率更高。本文还提出了一种基于注意力机制和双向长短期记忆(LSTM)的递归神经网络,其性能优于C-CNN,但需要更多的训练时间。

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