Crisler Shelly, Morrissey Michael J, Anch A Michael, Barnett David W
VA Hospital, Portland OR, United States.
J Neurosci Methods. 2008 Mar 15;168(2):524-34. doi: 10.1016/j.jneumeth.2007.10.027. Epub 2007 Nov 17.
Analysis and classification of sleep stages is a fundamental part of basic sleep research. Rat sleep stages are scored based on electrocorticographic (ECoG) signals recorded from electrodes implanted epidurally and electromyographic (EMG) signals from the temporalis or nuchal muscle. An automated sleep scoring system was developed using a support vector machine (SVM) to discriminate among waking, nonrapid eye movement sleep, and paradoxical sleep. Two experts scored retrospective data obtained from six Sprague-Dawley rodents to provide the training sets and subsequent comparison data used to assess the effectiveness of the SVM. Numerous time-domain and frequency-domain features were extracted for each epoch and selectively reduced using statistical analyses. The SVM kernel function was chosen to be a Gaussian radial basis function and kernel parameters were varied to examine the effectiveness of optimization methods. Tests indicated that a common set of features could be chosen resulted in an overall agreement between the automated scores and the expert consensus of greater than 96%.
睡眠阶段的分析与分类是基础睡眠研究的重要组成部分。大鼠的睡眠阶段是根据硬膜外植入电极记录的脑电图(ECoG)信号以及颞肌或颈部肌肉的肌电图(EMG)信号来评分的。利用支持向量机(SVM)开发了一种自动睡眠评分系统,以区分清醒、非快速眼动睡眠和异相睡眠。两位专家对从六只Sprague-Dawley啮齿动物获得的回顾性数据进行评分,以提供训练集和随后用于评估SVM有效性的比较数据。为每个时段提取了大量时域和频域特征,并通过统计分析进行选择性降维。选择SVM核函数为高斯径向基函数,并改变核参数以检验优化方法的有效性。测试表明,可以选择一组通用特征,从而使自动评分与专家共识之间的总体一致性超过96%。