Department of Physiology, Institute of Biomedicine, PO Box 63, 00014 University of Helsinki, Helsinki, Finland.
J Neurosci Methods. 2011 Oct 30;202(1):60-4. doi: 10.1016/j.jneumeth.2011.08.023. Epub 2011 Aug 22.
We describe a new simple MATLAB-based method for automated scoring of rat and mouse sleep using the naive Bayes classifier. This method is highly sensitive resulting in overall auto-rater agreement of 93%, comparable to an inter-rater agreement between two human scorers (92%), with high sensitivity and specificity values for wake (94% and 96%), NREM sleep (94% and 97%) and REM sleep (89% and 97%) states. In addition to baseline sleep-wake conditions, the performance of the naive Bayes classifier was assessed in sleep deprivation and drug infusion experiments, as well as in aged and transgenic animals using multiple EEG derivations. 24-h recordings from 30 different animals were used, with approximately 5% of the data manually scored as training data for the classification algorithm.
我们描述了一种新的基于 MATLAB 的简单方法,用于使用朴素贝叶斯分类器对大鼠和小鼠的睡眠进行自动评分。该方法具有很高的灵敏度,导致自动评分者的总体一致性达到 93%,与两名人类评分者之间的组内一致性(92%)相当,对于清醒(94%和 96%)、非快速眼动睡眠(94%和 97%)和快速眼动睡眠(89%和 97%)状态具有高灵敏度和特异性值。除了基线睡眠-觉醒条件外,我们还在睡眠剥夺和药物输注实验中以及在使用多个脑电图衍生的老年和转基因动物中评估了朴素贝叶斯分类器的性能。使用了来自 30 只不同动物的 24 小时记录,大约 5%的数据作为分类算法的训练数据进行手动评分。