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Newborn sleep stage identification using multiscale entropy

机译:利用多尺度熵识别新生儿睡眠阶段

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Neonatal sleep stage identification is of great importance as it helps diagnosis of certain possible disabilities in newborns. The sleep stage identification is normally done manually for an entire sleep recording which requires great human resources; therefore a reliable automated sleep stage identification system offers a helpful tool for specialists. This study demonstrated a new method for automated sleep stage scoring in neonates. The automated approach comprises two major steps: feature extraction and classification. This study presented a new approach for feature extraction based on multiscale entropy (MSE), a recently developed method for the analysis of time series and physiological signals. The features were extracted from a single EEG recording where 13 recordings from preterm infants and 14 from full term infants were used. The classification was done using the Weka software with three different classifiers: neural networks, random forests, and classification via regression. The performance of the proposed method was found to be comparable to the methods reported in the literature. The reported accuracy was found to be 0.813 for preterm subjects and 0.864 for fullterm subjects.
机译:新生儿睡眠阶段识别非常重要,因为它有助于诊断新生儿中某些可能的残疾。通常,对于需要大量人力资源的整个睡眠记录,手动确定睡眠阶段。因此,可靠的自动睡眠阶段识别系统为专家提供了有用的工具。这项研究证明了一种新生儿自动睡眠阶段评分的新方法。自动化方法包括两个主要步骤:特征提取和分类。这项研究提出了一种基于多尺度熵(MSE)的特征提取新方法,该方法是最近开发的用于分析时间序列和生理信号的方法。这些特征是从单个EEG记录中提取的,其中使用了13个早产儿的记录和14个足月儿的记录。使用具有三个不同分类器的Weka软件进行分类:神经网络,随机森林和通过回归进行分类。发现所提出的方法的性能与文献中报道的方法相当。发现早产受试者的报告准确性为0.813,足月受试者为0.864。

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