Bódizs Róbert, Körmendi János, Rigó Péter, Lázár Alpár Sándor
Institute of Behavioural Sciences, Semmelweis University, Nagyvárad tér 4, H-1089 Budapest, Hungary.
J Neurosci Methods. 2009 Mar 30;178(1):205-13. doi: 10.1016/j.jneumeth.2008.11.006. Epub 2008 Nov 18.
Evidence supports the robustness and stability of individual differences in non-rapid eye movement (NREM) sleep electroencephalogram (EEG) spectra with a special emphasis on the 9-16 Hz range corresponding to sleep spindle activity. These differences cast doubt on the universal validity of sleep spindle analysis methods based on strict amplitude and frequency criteria or a set of templates of natural spindles. We aim to improve sleep spindle analysis by the individual adjustments of frequency and amplitude criteria, the use of a minimum set of a priori knowledge, and by clear dissections of slow- and fast sleep spindles as well as to transcend the concept of visual inspection as being the ultimate test of the method's validity. We defined spindles as those segments of the NREM sleep EEG which contribute to the two peak regions within the 9-16 Hz EEG spectra. These segments behaved as slow- and fast sleep spindles in terms of topography and sleep cycle effects, while age correlated negatively with the occurrence of fast type events only. Automatic detections covered 92.9% of visual spindle detections (A&VD). More than half of the automatic detections (58.41%) were exclusively automatic detections (EADs). The spectra of EAD correlated significantly and positively with the spectra of A&VD as well as with the average (AVG) spectra. However, both EAD and A&VD had higher individual-specific spindle spectra than AVG had. Results suggest that the individual adjustment method (IAM) detects EEG segments possessing the individual-specific spindle spectra with higher sensitivity than visual scoring does.
有证据支持非快速眼动(NREM)睡眠脑电图(EEG)频谱中个体差异的稳健性和稳定性,特别强调对应于睡眠纺锤波活动的9 - 16赫兹范围。这些差异对基于严格幅度和频率标准或一组自然纺锤波模板的睡眠纺锤波分析方法的普遍有效性提出了质疑。我们旨在通过对频率和幅度标准进行个体调整、使用最少的先验知识以及清晰区分慢睡眠纺锤波和快睡眠纺锤波来改进睡眠纺锤波分析,并超越将视觉检查视为该方法有效性最终检验的概念。我们将纺锤波定义为NREM睡眠EEG中对9 - 16赫兹EEG频谱内的两个峰值区域有贡献的那些片段。这些片段在地形和睡眠周期效应方面表现为慢睡眠纺锤波和快睡眠纺锤波,而年龄仅与快类型事件的发生率呈负相关。自动检测覆盖了视觉纺锤波检测(A&VD)的92.9%。超过一半的自动检测(58.41%)是纯自动检测(EAD)。EAD的频谱与A&VD的频谱以及平均(AVG)频谱显著正相关。然而,EAD和A&VD的个体特异性纺锤波频谱都比AVG的高。结果表明,个体调整方法(IAM)比视觉评分更能灵敏地检测出具有个体特异性纺锤波频谱的EEG片段。