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首页> 外文期刊>Journal of medical systems >Artificial neural network and wavelet based automated detection of sleep spindles, REM sleep and wake states.
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Artificial neural network and wavelet based automated detection of sleep spindles, REM sleep and wake states.

机译:基于人工神经网络和小波的自动检测睡眠纺锤体,REM睡眠和唤醒状态。

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摘要

Backpropagation artificial neural network (ANN) has been designed to classify sleep-wake stages. Four hours continuous three channel polygraphic signals such as EEG (electroencephalogram), EOG (electrooculogram) and EMG (electromyogram) from conscious subjects were digitally recorded and stored in computer. EOG and EMG signals were used for manual identification of sleep states before training and testing of ANN. The percentages power of the 2 s epochs of the digitized EEG signals from each of three sleep-wake patterns, sleep spindles (SS), rapid eye movement (REM) sleep and awake (AWA) sates, were calculated and analyzed to select the manually confirmed sleep-wake states for each epoch. Further, second order Daubechies mother wavelet has been used to get the wavelet coefficients for the selected EEG epochs. The wavelet coefficients for the EEG epochs (64 data) were selected as inputs for the training the network and to classify SS, REM sleep and AWA stages. The ANN architecture used (64-14-3) in present study shows overall very good agreement with manual sleep stage scoring with an average of 95.35% for all the 1,140 samples tested from SS, REM and AWA stages. This architecture of ANN was also found effectively differentiating the EEG power spectra from different sleep-wake states (96.84% in SS, 93.68% in REM sleep, 95.52% in AWA state). The high performance observed with the system based on wavelet coefficients along with the ANN, highlights the need of this computational tool into the field of sleep research.
机译:反向传播人工神经网络(ANN)已被设计为对睡眠-觉醒阶段进行分类。数字记录来自意识主体的四个小时连续的三通道多态性信号,例如脑电图(脑电图),眼电图(眼电图)和肌电图(肌电图),并将其存储在计算机中。在训练和测试ANN之前,将EOG和EMG信号用于手动识别睡眠状态。计算并分析了来自三个睡眠-觉醒模式,睡眠纺锤(SS),快速眼动(REM)睡眠和觉醒(AWA)状态中的每一个的2历元数字EEG信号的百分比功率确认每个时期的睡眠-觉醒状态。此外,二阶Daubechies母小波已用于获取所选EEG历元的小波系数。选择用于EEG历元的小波系数(64个数据)作为训练网络的输入,并对SS,REM睡眠和AWA阶段进行分类。在本研究中使用的ANN架构(64-14-3)显示,与从SS,REM和AWA阶段测试的所有1,140个样本的手动睡眠阶段评分总体上非常好,平均得分为95.35%。还发现了这种ANN架构可有效区分脑电图谱与不同的睡眠-觉醒状态(SS为96.84%,REM睡眠为93.68%,AWA状态为95.52%)。基于小波系数的系统以及人工神经网络所观察到的高性能,突显了该计算工具在睡眠研究领域的需求。

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