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Enhanced automatic sleep spindle detection: a sliding window-based wavelet analysis and comparison using a proposal assessment method

机译:增强的自动睡眠主轴检测:基于滑动窗口的小波分析和使用提案评估方法的比较

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Abstract Sleep spindles are thought to be related to some sleep diseases and play an important role in memory consolidation. They were traditionally identified by physiology experts based on rules and recently detected by automatic algorithms. However, many automatic approaches were validated on the different electroencephalogram (EEG) using various assessment methods, making it difficult to appraised a method objectively and fairly. In this paper, we proposed a sliding window-based probability estimation (SWPE) method for sleep spindle detection. We performed a continuous wavelet transform with Mexican hat wavelet function, following by a sliding window to find out the candidate spindle points corresponding to the large wavelet coefficients at the frequencies of spindles and estimated their probabilities. To enhance the results, we used the envelope of the rectified signal to reject some false sleep spindle candidates. This was an enhanced method and we called it SWPE-E in this paper. Finally, we compared our approaches with four approaches on the same public available EEG database, and the result showed the significative improvement of our proposed approaches.
机译:摘要睡眠主轴被认为与一些睡眠疾病有关,并在记忆巩固中发挥重要作用。它们传统上由基于规则的生理学专家识别,最近通过自动算法检测。然而,使用各种评估方法在不同的脑电图(EEG)上验证了许多自动方法,使得难以客观和公平地评估方法。在本文中,我们提出了一种用于睡眠主轴检测的基于滑动窗口的概率估计(SWPE)方法。我们通过墨西哥帽小波函数进行了连续的小波变换,通过滑动窗口,以找出对应于主轴频率的大小波系数的候选主轴点并估计它们的概率。为了增强结果,我们使用整流信号的信封拒绝一些假睡眠主轴候选者。这是一种增强的方法,在本文中我们称之为SWPE-E。最后,我们比较了我们在同一公共可用EEG数据库上有四种方法的方法,结果表明我们提出的方法的重要提高。

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