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A CNN model with statistical correction rules for automatic sleep stage scoring

机译:具有统计校正规则的CNN模型,用于自动睡眠阶段评分

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In this study, a convolutional neural network (CNN) model with statistical correction rules is developed for the automatic sleep stage scoring. Sleep is a dynamic process which consisted of several sleep stages from light sleep to deep sleep. The convolutional neural network is designed by 6 layers, using two convolution kernels of different sizes to extract the time domain and frequency domain features separately. The statistical correction rules are extracted regarding to the dynamic transition between different sleep stages. The developed method was tested on the large amount of sleep data for the inspection of consisted sleep stages during ones overnight sleep. The prediction results by CNN model were corrected by the statistical correction rules. Totally, the sleep recording of 20 subjects were evaluated. The obtained results showed that the combination of CNN and correction rules achieved rather good and reasonable performance for sleep stage scoring.
机译:在这项研究中,具有统计校正规则的卷积神经网络(CNN)模型被开发用于自动睡眠阶段评分。睡眠是一个动态过程,包括从轻度睡眠到深度睡眠的多个睡眠阶段。卷积神经网络由6层设计,使用两个大小不同的卷积内核分别提取时域和频域特征。提取关于不同睡眠阶段之间的动态过渡的统计校正规则。在大量睡眠数据上测试了开发的方法,以检查过夜睡眠期间的整体睡眠阶段。 CNN模型的预测结果通过统计校正规则进行校正。总共评估了20位受试者的睡眠记录。获得的结果表明,CNN和校正规则的组合在睡眠阶段评分中获得了相当好的和合理的表现。

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