Laboratory for Sleep, Cognition and Consciousness Research, University of Salzburg, Salzburg, Austria.
Centre for Cognitive Neuroscience (CCNS), University of Salzburg, Salzburg, Austria.
PLoS One. 2019 Oct 29;14(10):e0224521. doi: 10.1371/journal.pone.0224521. eCollection 2019.
Human newborns spend up to 18 hours sleeping. The organization of their sleep differs immensely from adult sleep, and its quick maturation and fundamental changes correspond to the rapid cortical development at this age. Manual sleep classification is specifically challenging in this population given major body movements and frequent shifts between vigilance states; in addition various staging criteria co-exist. In the present study we utilized a machine learning approach and investigated how EEG complexity and sleep stages evolve during the very first weeks of life. We analyzed 42 full-term infants which were recorded twice (at week two and five after birth) with full polysomnography. For sleep classification EEG signal complexity was estimated using multi-scale permutation entropy and fed into a machine learning classifier. Interestingly the baby's brain signal complexity (and spectral power) revealed developmental changes in sleep in the first 5 weeks of life, and were restricted to NREM ("quiet") and REM ("active sleep") states with little to no changes in state wake. Data demonstrate that our classifier performs well over chance (i.e., >33% for 3-class classification) and reaches almost human scoring accuracy (60% at week-2, 73% at week-5). Altogether, these results demonstrate that characteristics of newborn sleep develop rapidly in the first weeks of life and can be efficiently identified by means of machine learning techniques.
新生儿每天要睡 18 个小时。他们的睡眠模式与成人有很大的不同,其睡眠的快速成熟和根本变化与这个年龄段大脑皮层的快速发育相对应。由于新生儿的身体会有大幅度的动作,而且警觉状态经常发生变化,因此手动对他们的睡眠进行分类非常具有挑战性;此外,各种分期标准同时存在。在本研究中,我们利用机器学习方法研究了新生儿生命最初几周内的大脑电活动复杂性和睡眠阶段的变化。我们分析了 42 名足月婴儿,他们在出生后两周和五周时进行了两次全睡眠描记术记录。对于睡眠分类,我们使用多尺度排列熵来估计 EEG 信号的复杂性,并将其输入机器学习分类器。有趣的是,婴儿的大脑信号复杂性(和频谱功率)揭示了生命最初 5 周内睡眠的发育变化,并且仅限于非快速眼动(“安静”)和快速眼动(“活跃睡眠”)状态,而警觉状态的变化很小或没有。数据表明,我们的分类器表现优于随机水平(即,3 类分类的准确率超过 33%),并达到了几乎与人类相同的评分准确性(第 2 周时为 60%,第 5 周时为 73%)。总的来说,这些结果表明,新生儿睡眠的特征在生命的最初几周内迅速发展,可以通过机器学习技术有效地识别。