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Automated sleep scoring and sleep apnea detection in children

机译:自动睡眠评分和儿童睡眠呼吸暂停检测

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This paper investigates the automated detection of a patient's breathing rate and heart rate from their skin conductivity as well as sleep stage scoring and breathing event detection from their EEG. The software developed for these tasks is tested on data sets obtained from the sleep disorders unit at the Adelaide Women's and Children's Hospital. The sleep scoring and breathing event detection tasks used neural networks to achieve signal classification. The Fourier transform and the Higuchi fractal dimension were used to extract features for input to the neural network. The filtered skin conductivity appeared visually to bear a similarity to the breathing and heart rate signal, but a more detailed evaluation showed the relation was not consistent. Sleep stage classification was achieved with and accuracy of around 65% with some stages being accurately scored and others poorly scored. The two breathing events hypopnea and apnea were scored with varying degrees of accuracy with the highest scores being around 75% and 30%.
机译:本文研究了患者呼吸速率和心率从皮肤电导率的自动检测以及睡眠阶段评分和脑电图的呼吸事件检测。为这些任务开发的软件在阿德莱德女子和儿童医院的睡眠障碍单位获得的数据集上进行测试。睡眠评分和呼吸事件检测任务使用神经网络来实现信号分类。傅里叶变换和HIGUCHI分形维数用于提取输入到神经网络的特征。过滤的皮肤电导率在视觉上出现,以承受与呼吸和心率信号相似的相似性,但更详细的评估表明该关系并不一致。睡眠阶段分类是实现的,准确性约为65%,一些阶段被准确得分,其他阶段得分差。两次呼吸事件的缺血和呼吸暂停被评分,具有不同程度的准确度,最高分约为75%和30%。

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