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A Noise-Assisted Data Analysis Method for Automatic EOG-Based Sleep Stage Classification Using Ensemble Learning

机译:基于EOG的自动EOG睡眠阶段分类的噪声辅助数据分析方法

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Reducing the number of recording modalities for sleep staging research can benefit both researchers and patients, under the condition that they provide as accurate results as conventional systems. This paper investigates the possibility of exploiting the multisource nature of the electrooculography (EOG) signals by presenting a method for automatic sleep staging using the complete ensemble empirical mode decomposition with adaptive noise algorithm, and a random forest classifier. It achieves a high overall accuracy of 82% and a Cohen's kappa of 0.74 indicating substantial agreement between automatic and manual scoring.
机译:减少睡眠分期研究的记录方式的数量可以使研究人员和患者有益,因为它们提供作为常规系统准确的结果。本文通过呈现使用具有自适应噪声算法的完整集合经验模式分解和随机林分类器来呈现自动睡眠分段的方法来利用电胶(EoG)信号的多源性质的可能性。它实现了82%的高总体准确性和0.74的COHEN的Kappa表示​​自动和手动评分之间的大量协议。

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