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Automatic sleep stage classification based on Dreem headband’s signals

机译:基于DREEM HEAD带信号的自动睡眠阶段分类

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In this paper, we propose a system to perform automatic sleep stage classification based on physiological signals acquired by Dreem Headband. These signals contain 4 EEG (FpZ-O1, FpZ-O2, FpZ-F7, F8-F7), 2 Pulse oximeter (Red & Infra-red), and 3 accelerometer channels (X, Y, Z). The dataset used in this study belongs to a challenge competition, namely as Challenge Data and is publicly available on their website. In this work, sleep stages have been scored according to the AASM standard. Features were extracted from the physiological signals after applying a preprocessing step. Each of the EEG and PPG's features is falling into one of the three categories time, frequency, or entropy. Moreover, ancillary features were also extracted from the accelerometer signal. Extracted features were classified by using support vector machine (SVM), K-nearest neighbor and Random forest classifiers. Due to the class imbalance problem, stratified 5-fold cross-validation was performed in order to tune systems parameters. Results show that among the three models as mentioned above, Random Forest has the best performance for the 5-class classification with accuracy: 79.98± 0.70 and kappa 0.7234±0.0095. The proposed model shows promising results, thus the model can be implemented in Dreem headband to differentiate sleep stages efficiently and be used in clinical applications.
机译:在本文中,我们提出了一种基于由Dreem Headband获取的生理信号进行自动睡眠阶段分类的系统。这些信号包含4个EEG(FPZ-O1,FPZ-O2,FPZ-F7,F8-F7),2个脉冲血氧仪(红色和红外线)和3个加速度计通道(X,Y,Z)。本研究中使用的数据集属于挑战竞争,即作为挑战数据,并在其网站上公开提供。在这项工作中,根据AASM标准进行睡眠阶段。在施加预处理步骤后,从生理信号中提取特征。每个EEG和PPG的功能都落入了三个类别,频率或熵之一。此外,还从加速度计信号中提取了辅助特征。通过使用支持向量机(SVM),K-最近邻居和随机林分类器来分类提取的特征。由于类别不平衡问题,进行分层的5倍交叉验证以调整系统参数。结果表明,在上述三种型号中,随机森林具有5级分类的最佳性能,精度:79.98±0.70和κ0.7234±0.0095。所提出的模型显示了有希望的结果,因此该模型可以在Dreem Headband中实现,以有效地区分睡眠阶段并用于临床应用。

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