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A deep learning approach to detect sleep stages

机译:一种检测睡眠阶段的深度学习方法

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This paper presents the implementation of deep learning methods for sleep stage detection by using three signals that can be measured in a non-invasive way: heartbeat signal, respiratory signal, and movement signal. Since signals are measurements taken during the time, the problem is seen as time-series data classification. Deep learning methods are chosen to solve the problem are convolutional neural network and long-short term memory network. Input data is structured as a time-series sequence of mentioned signals that represent 30 seconds epoch, which is a standard interval for sleep analysis. The records used belong to the overall 23 subjects, which are divided into two subsets. Records from 18 subjects were used for training the data and from 5 subjects for testing the data. For detecting four sleep stages: REM (Rapid Eye Movement), Wake, Light sleep (Stage 1 and Stage 2), and Deep sleep (Stage 3 and Stage 4), the accuracy of the model is 55%, and F1 score is 44%. For five stages: REM, Stage 1, Stage 2, Deep sleep (Stage 3 and 4), and Wake, the model gives an accuracy of 40% and F1 score of 37%.
机译:本文介绍了使用可以以非侵入性方式测量的三个信号的睡眠阶段检测深度学习方法的实现:心跳信号,呼吸信号和移动信号。由于在时间拍摄的信号,因此问题被视为时间序列数据分类。选择深入学习方法来解决问题是卷积神经网络和长短期内存网络。输入数据构造为所提到的信号的时间序列,表示30秒钟的epoch,这是睡眠分析的标准间隔。使用的记录属于整个23个科目,分为两个子集。从18个受试者的记录用于培训数据和5个科目以测试数据。用于检测四个睡眠阶段:REM(快速眼球运动),唤醒,光睡眠(第1阶段和第2阶段),深睡眠(第3阶段和第4阶段),模型的准确性为55%,F1得分为44 %。五个阶段​​:REM,第1阶段,第2阶段,深睡眠(第3阶段3和4),唤醒,该模型可精确度为40%和F1得分为37%。

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