Gergely Anna, Kiss Orsolya, Reicher Vivien, Iotchev Ivaylo, Kovács Enikő, Gombos Ferenc, Benczúr András, Galambos Ágoston, Topál József, Kis Anna
Institute of Cognitive Neuroscience and Psychology, Research Centre for Natural Sciences, 1117 Budapest, Hungary.
Department of Ethology, Eötvös Loránd University, 1117 Budapest, Hungary.
Animals (Basel). 2020 May 26;10(6):927. doi: 10.3390/ani10060927.
Non-invasive polysomnography recording on dogs has been claimed to produce data comparable to those for humans regarding sleep macrostructure, EEG spectra and sleep spindles. While functional parallels have been described relating to both affective (e.g., emotion processing) and cognitive (e.g., memory consolidation) domains, methodologically relevant questions about the reliability of sleep stage scoring still need to be addressed. In Study 1, we analyzed the effects of different coders and different numbers of visible EEG channels on the visual scoring of the same polysomnography recordings. The lowest agreement was found between independent coders with different scoring experience using full (3 h-long) recordings of the whole dataset, and the highest agreement within-coder, using only a fraction of the original dataset (randomly selected 100 epochs (i.e., 100 × 20 s long segments)). The identification of drowsiness was found to be the least reliable, while that of non-REM (rapid eye movement, NREM) was the most reliable. Disagreements resulted in no or only moderate differences in macrostructural and spectral variables. Study 2 targeted the task of automated sleep EEG time series classification. Supervised machine learning (ML) models were used to help the manual annotation process by reliably predicting if the dog was sleeping or awake. Logistic regression models (LogREG), gradient boosted trees (GBT) and convolutional neural networks (CNN) were set up and trained for sleep state prediction from already collected and manually annotated EEG data. The evaluation of the individual models suggests that their combination results in the best performance: ~0.9 AUC test scores.
据宣称,对狗进行的无创多导睡眠图记录所产生的数据,在睡眠宏观结构、脑电图频谱和睡眠纺锤波方面与人类的数据相当。虽然已经描述了在情感(如情绪处理)和认知(如记忆巩固)领域的功能相似之处,但关于睡眠阶段评分可靠性的方法学相关问题仍需解决。在研究1中,我们分析了不同编码人员和不同数量的可见脑电图通道对同一多导睡眠图记录视觉评分的影响。在使用整个数据集的完整(3小时长)记录且评分经验不同的独立编码人员之间,一致性最低;而在编码人员内部,仅使用原始数据集的一部分(随机选择100个时段,即100个20秒长的片段)时,一致性最高。发现嗜睡的识别最不可靠,而非快速眼动(NREM)的识别最可靠。分歧导致宏观结构和频谱变量没有差异或只有适度差异。研究2针对自动睡眠脑电图时间序列分类任务。使用监督机器学习(ML)模型通过可靠地预测狗是在睡觉还是清醒来辅助人工注释过程。建立并训练了逻辑回归模型(LogREG)、梯度提升树(GBT)和卷积神经网络(CNN),用于根据已收集并人工注释的脑电图数据进行睡眠状态预测。对各个模型的评估表明,它们的组合产生了最佳性能:测试曲线下面积(AUC)分数约为0.9。