Zhang Ruijie, Dong Xinran, Zhang Lu, Lin Xinao, Wang Xuefeng, Xu Yan, Wu Chuyan, Jiang Feng, Wang Jimei
Department of Neonatology, Obstetrics and Gynecology Hospital of Fudan University, Shanghai, People's Republic of China.
Center for Molecular Medicine, Children's Hospital of Fudan University, Shanghai, People's Republic of China.
Nat Sci Sleep. 2024 Jul 22;16:1011-1025. doi: 10.2147/NSS.S472595. eCollection 2024.
Neonatal sleep is pivotal for their growth and development, yet manual interpretation of raw images is time-consuming and labor-intensive. Quantitative Electroencephalography (QEEG) presents significant advantages in terms of objectivity and convenience for investigating neonatal sleep patterns. However, research on the sleep patterns of healthy neonates remains scarce. This study aims to identify QEEG markers that distinguish between different neonatal sleep cycles and analyze QEEG alterations across various sleep stages in relation to postmenstrual age.
From September 2023 to February 2024, full-term neonates admitted to the neonatology department at the Obstetrics and Gynecology Hospital of Fudan University were enrolled in this study. Electroencephalographic (EEG) recordings were obtained from neonates aged 37-42 weeks, within 1-7 days post-birth. The ROC curve was employed to evaluate QEEG features related to amplitude, range EEG (rEEG), spectral density, and connectivity across different sleep stages. Furthermore, regression analyses were performed to investigate the association between these QEEG characteristics and postmenstrual age.
The alpha frequency band's spectral_diff_F3 emerged as the most potent discriminator between active sleep (AS) and quiet sleep (QS). In distinguishing AS from wakefulness (W), the theta frequency's spectral_diff_C4 was the most effective, whereas the delta frequency's spectral_diff_P4 excelled in differentiating QS from W. During AS and QS phases, there was a notable increase in entropy within the delta frequency band across all monitored brain regions and in the spectral relative power within the theta frequency band, correlating with postmenstrual age (PMA).
Spectral difference showcases the highest discriminative capability across awake and various sleep states. The observed patterns of neonatal QEEG alterations in relation to PMA are consistent with the maturation of neonatal sleep, offering insights into the prediction and evaluation of brain development outcomes.
新生儿睡眠对其生长发育至关重要,但对原始图像进行人工解读既耗时又费力。定量脑电图(QEEG)在研究新生儿睡眠模式方面具有客观性和便利性的显著优势。然而,关于健康新生儿睡眠模式的研究仍然匮乏。本研究旨在识别区分不同新生儿睡眠周期的QEEG标志物,并分析与孕龄相关的各睡眠阶段的QEEG变化。
2023年9月至2024年2月,复旦大学附属妇产科医院新生儿科收治的足月新生儿纳入本研究。对出生后1 - 7天内、孕周为37 - 42周的新生儿进行脑电图(EEG)记录。采用ROC曲线评估不同睡眠阶段与振幅、脑电图范围(rEEG)、频谱密度和连通性相关的QEEG特征。此外,进行回归分析以研究这些QEEG特征与孕龄之间的关联。
α频段的spectral_diff_F3成为活跃睡眠(AS)和安静睡眠(QS)之间最有效的区分指标。在区分AS与清醒(W)时,θ频段的spectral_diff_C4最为有效,而δ频段的spectral_diff_P4在区分QS与W方面表现出色。在AS和QS阶段,所有监测脑区的δ频段内熵显著增加,θ频段内频谱相对功率增加,且与孕龄(PMA)相关。
频谱差异在清醒和各种睡眠状态下具有最高的区分能力。观察到的新生儿QEEG变化与PMA的关系模式与新生儿睡眠成熟度一致,为脑发育结局的预测和评估提供了见解。