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Sleep stage classification using convolutional neural networks and bidirectional long short-term memory

机译:使用卷积神经网络和双向长期短期记忆进行睡眠阶段分类

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Classification of sleep stage is very useful to detect the occurrence of sleep apnea. This classification requires mechanisms that automatically and efficiently process polysomnography data. However, the process requires a system to be able to extract the relevant features which are then used to classify the sleep stage. The best solution is sequence classification because it not only concerns the contents of each segment or the sequence of data. One of the best order-based identifiers today is Long Short-Term Memory (LSTM). The LSTM can only update for forwarding directions. To process the data in two directions, it implemented Bidirectional Longs Short Term Memory (Bi-STM). Also, the implementation also applies Convolutional Neural Networks (CNN) as a feature learning before using Bi-LSTM. The result shows that F-measure Bi-LSTM is better than LSTM but use CNN as a learning attribute for Bi-LSTM cause an F-measure decrease.
机译:睡眠阶段的分类对于检测睡眠呼吸暂停的发生非常有用。这种分类需要自动有效地处理多导睡眠图数据的机制。但是,该过程要求系统能够提取相关特征,然后将其用于对睡眠阶段进行分类。最好的解决方案是序列分类,因为它不仅涉及每个片段的内容或数据序列。当今最好的基于订单的标识符之一是长短期内存(LSTM)。 LSTM只能针对转发方向进行更新。为了在两个方向上处理数据,它实现了双向Longs短期存储器(Bi-STM)。此外,该实现还使用卷积神经网络(CNN)作为使用Bi-LSTM之前的功能学习。结果表明,F量度Bi-LSTM优于LSTM,但使用CNN作为Bi-LSTM的学习属性会导致F量度降低。

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