Institute for Physiology and Pathophysiology, University Heidelberg, Im Neuenheimer Feld 326, 69120 Heidelberg, Germany.
Brain Res. 2010 Mar 31;1322:59-71. doi: 10.1016/j.brainres.2010.01.069. Epub 2010 Feb 1.
There is growing interest in sleep research and increasing demand for screening of circadian rhythms in genetically modified animals. This requires reliable sleep stage scoring programs. Present solutions suffer, however, from the lack of flexible adaptation to experimental conditions and unreliable selection of stage-discriminating variables. EEG was recorded in freely moving C57BL/6 mice and different sets of frequency variables were used for analysis. Parameters included conventional power spectral density functions as well as period-amplitude analysis. Manual staging was compared with the performance of two different supervised classifiers, linear discriminant analysis (LDA) and Classification Tree. Gamma activity was particularly high during REM (rapid eye movements) sleep and waking. Four out of 73 variables were most effective for sleep-wake stage separation: amplitudes of upper gamma-, delta- and upper theta-frequency bands and neck muscle EMG. Using small sets of training data, LDA produced better results than Classification Tree or a conventional threshold formula. Changing epoch duration (4 to 10s) had only minor effects on performance with 8 to 10s yielding the best results. Gamma and upper theta activity during REM sleep is particularly useful for sleep-wake stage separation. Linear discriminant analysis performs best in supervised automatic staging procedures. Reliable semi-automatic sleep scoring with LDA substantially reduces analysis time.
人们对睡眠研究越来越感兴趣,对遗传修饰动物的昼夜节律筛查的需求也在不断增加。这需要可靠的睡眠分期评分程序。然而,目前的解决方案存在缺乏灵活适应实验条件和阶段判别变量不可靠的问题。在自由活动的 C57BL/6 小鼠中记录脑电图,并使用不同的频率变量集进行分析。参数包括常规的功率谱密度函数以及周期幅度分析。手动分期与两种不同的监督分类器(线性判别分析(LDA)和分类树)的性能进行了比较。γ 活动在 REM(快速眼动)睡眠和清醒期间特别高。在 73 个变量中有 4 个变量对睡眠-觉醒阶段的分离最有效:上γ、δ和上θ频带的幅度以及颈部肌肉肌电图。使用小的训练数据集,LDA 产生的结果优于分类树或传统的阈值公式。改变时程(4 到 10 秒)对性能的影响很小,8 到 10 秒的效果最好。在 REM 睡眠期间的γ和上θ活动对于睡眠-觉醒阶段的分离特别有用。线性判别分析在监督自动分期程序中表现最佳。使用 LDA 进行可靠的半自动睡眠评分可以大大减少分析时间。