Brain Institute, Federal University of Rio Grande do Norte, Natal, Brazil.
The University of Cape Town, Cape Town, South Africa.
PLoS One. 2020 Jul 23;15(7):e0228903. doi: 10.1371/journal.pone.0228903. eCollection 2020.
Dream reports collected after rapid eye movement sleep (REM) awakenings are, on average, longer, more vivid, bizarre, emotional and story-like compared to those collected after non-REM. However, a comparison of the word-to-word structural organization of dream reports is lacking, and traditional measures that distinguish REM and non-REM dreaming may be confounded by report length. This problem is amenable to the analysis of dream reports as non-semantic directed word graphs, which provide a structural assessment of oral reports, while controlling for individual differences in verbosity. Against this background, the present study had two main aims: Firstly, to investigate differences in graph structure between REM and non-REM dream reports, and secondly, to evaluate how non-semantic directed word graph analysis compares to the widely used measure of report length in dream analysis. To do this, we analyzed a set of 133 dream reports obtained from 20 participants in controlled laboratory awakenings from REM and N2 sleep. We found that: (1) graphs from REM sleep possess a larger connectedness compared to those from N2; (2) measures of graph structure can predict ratings of dream complexity, where increases in connectedness and decreases in randomness are observed in relation to increasing dream report complexity; and (3) measures of the Largest Connected Component of a graph can improve a model containing report length in predicting sleep stage and dream report complexity. These results indicate that dream reports sampled after REM awakening have on average a larger connectedness compared to those sampled after N2 (i.e. words recur with a longer range), a difference which appears to be related to underlying differences in dream complexity. Altogether, graph analysis represents a promising method for dream research, due to its automated nature and potential to complement report length in dream analysis.
快速眼动(REM)睡眠后收集的梦报告平均而言比非快速眼动(NREM)睡眠后收集的梦报告更长、更生动、更离奇、更情绪化和更具故事性。然而,缺乏对梦报告逐字结构组织的比较,并且区分 REM 和 NREM 做梦的传统措施可能会因报告长度而混淆。这个问题可以通过将梦报告分析为非语义导向的单词图来解决,这为口头报告提供了一种结构评估,同时控制了个体言语表达的差异。在此背景下,本研究有两个主要目的:首先,研究 REM 和 NREM 梦报告之间的图结构差异,其次,评估非语义导向的单词图分析与在梦分析中广泛使用的报告长度测量方法相比如何。为此,我们分析了一组来自 20 名参与者在 REM 和 N2 睡眠期间控制实验室唤醒后获得的 133 个梦报告。我们发现:(1)与 N2 相比,REM 睡眠的图具有更大的连通性;(2)图结构的度量可以预测梦的复杂性评分,其中连接性增加和随机性降低与梦报告复杂性增加有关;(3)图的最大连通分量的度量可以改善包含报告长度的模型,从而预测睡眠阶段和梦报告的复杂性。这些结果表明,与 N2 后(即单词以更长的范围重复出现)相比,REM 后(即单词以更长的范围重复出现)采样的梦报告平均具有更大的连通性,这种差异似乎与梦复杂性的潜在差异有关。总之,由于其自动化性质和在梦分析中补充报告长度的潜力,图分析代表了一种很有前途的梦研究方法。