论文标题

具有深度学习的微填布发作的自动检测

Automatic detection of microsleep episodes with deep learning

论文作者

Malafeev, Alexander, Hertig-Godeschalk, Anneke, Schreier, David R., Skorucak, Jelena, Mathis, Johannes, Achermann, Peter

论文摘要

短短15秒钟的短暂片段定义为微骨发作(MSE),通常被主观地认为是嗜睡。它们的主要特征是脑电图(EEG)的频率放缓,类似于N1阶段的睡眠,根据标准标准。清醒测试(MWT)的维护经常在临床环境中用于评估警惕性。在大多数睡眠觉醒中心中,MWT的评分仅限于对睡眠的经典定义(30-S时代),并且在没有定义MSE的确定得分标准的情况下,MSE大多不考虑MSE,而是因为辛苦的工作。我们旨在通过机器学习自动检测MSE,即基于原始脑电图和EOG数据作为输入的深度学习。我们分析了76例患者的MWT数据。专家在视觉上得分清醒,根据最近制定的评分标准MSE,微腿情节候选人(MSEC)和嗜睡情节(ED)。我们基于卷积神经网络(CNN)实施了分割算法,并结合了具有长期术语内存(LSTM)网络的CNN的组合。 LSTM网络是一种复发性神经网络,它具有用于过去事件的内存,并考虑到它们。 53例患者的数据用于分类器的培训,12例进行验证,11例进行测试。我们的算法表现出靠近人类专家的良好表现。检测对于清醒和MSE非常好,对于MSEC和ED来说,该检测类似于这些边界细分市场的低功能可靠性。我们提供了原则证明,可以可靠地基于原始脑电图和EOG数据可靠地检测具有深层神经元网络的MSE,其性能接近人类专家。算法代码(https://github.com/alexander-malafeev/microsleep-detection)和数据(https://zenodo.org/record/3251716)。

Brief fragments of sleep shorter than 15 s are defined as microsleep episodes (MSEs), often subjectively perceived as sleepiness. Their main characteristic is a slowing in frequency in the electroencephalogram (EEG), similar to stage N1 sleep according to standard criteria. The maintenance of wakefulness test (MWT) is often used in a clinical setting to assess vigilance. Scoring of the MWT in most sleep-wake centers is limited to classical definition of sleep (30-s epochs), and MSEs are mostly not considered in the absence of established scoring criteria defining MSEs but also because of the laborious work. We aimed for automatic detection of MSEs with machine learning, i.e. with deep learning based on raw EEG and EOG data as input. We analyzed MWT data of 76 patients. Experts visually scored wakefulness, and according to recently developed scoring criteria MSEs, microsleep episode candidates (MSEc), and episodes of drowsiness (ED). We implemented segmentation algorithms based on convolutional neural networks (CNNs) and a combination of a CNN with a long-short term memory (LSTM) network. A LSTM network is a type of a recurrent neural network which has a memory for past events and takes them into account. Data of 53 patients were used for training of the classifiers, 12 for validation and 11 for testing. Our algorithms showed a good performance close to human experts. The detection was very good for wakefulness and MSEs and poor for MSEc and ED, similar to the low inter-expert reliability for these borderline segments. We provide a proof of principle that it is feasible to reliably detect MSEs with deep neuronal networks based on raw EEG and EOG data with a performance close to that of human experts. Code of algorithms ( https://github.com/alexander-malafeev/microsleep-detection ) and data ( https://zenodo.org/record/3251716 ) are available.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源