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Classification of sleep states in mice using generic compression algorithms

机译:使用通用压缩算法对小鼠睡眠状态的分类

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Sleep is associated with a variety of chronic diseases as well as most psychiatric, addiction and mood disorders. To analyze sleep patterns in rodents, researchers analyze polysomnogram data containing electroencephalographs (EEG) and electromyographs (EMG). However, the analysis is performed manually by a expert human scorer, which is a slow, time consuming, and expensive process that is also subject to known human error and inter-scorer inconsistency [1]. To address this, researchers have developed a variety of techniques to automatically classify rodent sleep states using features extracted from EEG and EMG signals [2]. In many approaches, researchers extract a variety of heuristic features from explicitly chosen spectral bands of the EEG and EMG signals [3]. However, human designed, heuristic features often do not capture complete salient sleep-state information, which leads to inferior classification performance.
机译:睡眠与各种慢性病以及大多数精神病,成瘾和情绪障碍有关。 为了分析啮齿动物的睡眠模式,研究人员分析了含有脑电图(EEG)和电磁素(EMG)的多瘤图数据。 然而,分析由专业人类得分手手动进行,这是一种缓慢,耗时和昂贵的过程,也是通过已知的人类误差和帧间间不一致的影响[1]。 为此,研究人员使用从脑电图和EG信号提取的功能自动分类啮齿动物睡眠状态的各种技术[2]。 在许多方法中,研究人员从EEG和EMG信号的明确选择的光谱频带提取各种启发式特征[3]。 然而,人类设计的启发式特征通常不会捕获完全突出的睡眠状态信息,这导致较差的分类性能。

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