Automated Recognition of Sleep Arousal Using Multimodal and Personalized Deep Ensembles of Neural Networks

A. Patané, S. Ghiasi, E. Scilingo, M. Kwiatkowska
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引用次数: 12

Abstract

Background and Aim: Monitoring physiological signals during sleep can have substantial impact on detecting temporary intrusion of wakefulness, referred to as sleep arousals. To overcome the problems associated with the cubersome visual inspection of these events by experts, sleep arousal recognition algorithms have been proposed. Method: As part of the Physionet/Computing in Cardiology Challenge 2018, this study proposes a deep ensemble neural network architecture for automatic arousal recognition from multi-modal sensor signals. Separate branches of the neural network extract features from electro-encephalography, electrooculography, electromyogram, breathing patterns and oxygen saturation level; and a final fully-connected neural network combines features computed from the signal sources to estimate the probability of arousal in each region of interest. We investigate the use of shared-parameter Siamese architectures for effective feature calibration. Namely, at each forward and backward pass through the network we concatenate to the input a user-specific template signal that is processed by an identical copy of the network. Result: The proposed architecture obtains an AUPR score of 0.40 on the test set of the official phase of Physionet/CbiC Challenge 2018. A score of 0.45 is obtained by means of 10 -fold cross-validation on the training set.
使用多模态和个性化神经网络深度集成的睡眠唤醒自动识别
背景与目的:监测睡眠期间的生理信号对检测暂时的清醒入侵(即睡眠唤醒)具有重大影响。为了克服专家对这些事件进行繁琐的视觉检查所带来的问题,人们提出了睡眠唤醒识别算法。方法:作为2018年生理学/心脏病学计算挑战赛的一部分,本研究提出了一种深度集成神经网络架构,用于从多模态传感器信号中自动识别唤醒。神经网络的独立分支从脑电图、眼电图、肌电图、呼吸模式和氧饱和度水平中提取特征;最后一个全连接的神经网络结合从信号源计算的特征来估计每个感兴趣区域的唤醒概率。我们研究了使用共享参数Siamese架构进行有效的特征校准。也就是说,在每次向前和向后通过网络时,我们将用户特定的模板信号连接到输入端,该信号由网络的相同副本处理。结果:该架构在2018年Physionet/CbiC挑战赛官方阶段的测试集上获得了0.40的AUPR分数。通过对训练集进行10倍交叉验证,得到0.45分。
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