基于变分模分解的单通道眼电信号睡眠状态分类

Tahia Tasnim, Arpita Das, N. S. Pathan, Q. D. Hossain
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引用次数: 1

摘要

为了减轻分析人员对大数据进行视觉检查以进行睡眠评分的负担,自动睡眠监测系统是一个先决条件。计算机辅助睡眠评分也将加速广泛的睡眠研究数据分析。由于目前大多数睡眠分期项目都是基于多通道或多个生理信号,这对用户来说是不舒服的,因此单通道系统的自动睡眠分期值得信赖仍然是不成功的。为此,提出了一种基于单通道眼电信号的计算机睡眠评分方法。该方法利用变分模态分解(VMD)将EOG信号时代分解为3个模态,提取不同模态的统计测度、谱熵测度、RCMDE和自回归建模(AR)系数等多个特征。研究了不同的分类模型来评估结果,随机森林分类器(RF)采用10倍交叉验证证明了最准确的结果。我们的系统算法对文献中现有作品的有效性表明,建议的方法与以前存在的方法相似或表现出更高的性能。对于6- 2状态睡眠分类,本文算法的总体准确率分别为88.083%、89.21%、90.57%、93.05%和96.537%。此外,本文提出的算法对S1睡眠阶段的识别准确率为65.092%。
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Sleep States Classification Based on Single Channel Electrooculogram Signal Using Variational Mode Decomposition
To reduce the burden of the analysts for visual inspection of a big data size for sleep-scoring, an automatic sleep surveillance system is a prerequisite. Computer-aided sleep-scoring will also accelerate broad-ranging sleep study for the analysis of data. As most of the current sleep-staging projects are on the basis of multi-channel or several physiological signals which are not comfortable for the user, so automatic sleep-staging on one single channel system being trustworthy is still to be successful. For this work, a method based on single channel Electrooculogram (EOG) signal for computerized sleep scoring is proposed. In the suggested method, EOG signal epochs are decomposed into three modes using Variational Mode Decomposition (VMD) and multiple features like statistical measures, spectral entropy measures, RCMDE and Autoregressive modelling (AR) coefficients from different modes are extracted. Different classification models are examined for evaluating the results and Random-Forest-Classifier (RF) demonstrates most accurate result employing 10 fold cross-validtion. The efficacy of our system's algorithm against existing works in the literature shows that the suggested approach is similar to or show higher performance than previous existed methods. For the 6-states to 2-states sleep classification, the proposed algorithm provides 88.083%, 89.21 %, 90.57%, 93.05% and 96.537% overall accuracy respectively. In addition, the suggested algorithm for this work shows an accuracy of 65.092 % for the identification of sleep stage S1.
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