Deep Learning Analysis for Estimating Sleep Syndrome Detection Utilizing the Twin Convolutional Model FTC2

Tim Cvetko, Tinkara Robek
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引用次数: 1

Abstract

Sleep specialists often conduct manual sleep stage scoring by visually inspecting the patient's neurophysiological signals collected at sleep labs. This is a difficult, tedious and a time-consuming task. The limitations of manual sleep stage scor- ing have escalated the demand for developing Automatic Sleep Stage Classification (ASSC) systems. Sleep stage classification refers to identifying the various stages of sleep and is a critical step in an effort to assist physicians in the diag- nosis and treatment of related sleep disorders. In this paper, we propose a novel method and a practical approach to predicting early onsets of sleep syndromes utilizing the Twin Convolutional Model FTC2, including restless leg syndrome, insomnia, based on an algorithm which is comprised of two modules. A Fast Fourier Transform is applied to 30 seconds long epochs of EEG recordings to provide localized time-frequency information, and a deep convolutional LSTM neural network is trained for sleep stage classification. Automating sleep stages detection from EEG data offers a great potential to tackling sleep irregularities on a daily basis. Thereby, a novel approach for sleep stage classification is pro- posed which combines the best of signal processing and statistics. In this study, we used the PhysioNet Sleep European Data Format (EDF) Database. The code evaluation showed impressive results, reaching accuracy of 90.43, precision of 77.76, recall of 93,32, F1-score of 89.12 with the final mean false error loss 0.09. All the source code is availlable at https://github.com/timothy102/eeg.
利用双卷积模型FTC2估计睡眠综合征检测的深度学习分析
睡眠专家通常通过视觉检查患者在睡眠实验室收集的神经生理信号来手动进行睡眠阶段评分。这是一项困难、乏味、耗时的任务。人工睡眠阶段评分的局限性使得开发自动睡眠阶段分类(ASSC)系统的需求上升。睡眠阶段分类是指识别睡眠的不同阶段,是帮助医生诊断和治疗相关睡眠障碍的关键步骤。在本文中,我们提出了一种新的方法和实用的方法来预测早期发作的睡眠综合征,利用双卷积模型FTC2,包括不宁腿综合征,失眠,基于一个算法,由两个模块组成。采用快速傅立叶变换对30秒长的脑电记录进行局部时频信息处理,并训练深度卷积LSTM神经网络进行睡眠阶段分类。从脑电图数据中自动检测睡眠阶段为解决日常睡眠不规律提供了巨大的潜力。因此,提出了一种结合信号处理和统计学优点的睡眠阶段分类新方法。在这项研究中,我们使用了PhysioNet睡眠欧洲数据格式(EDF)数据库。代码评估结果令人印象深刻,准确率为90.43,精密度为77.76,召回率为93,32,f1得分为89.12,最终平均误报损失为0.09。所有的源代码都可以在https://github.com/timothy102/eeg上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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