Barbe Nathan, Connolly Mark, Devergnas Annaelle, Torrès Napoleon, Hervault Marrio, Bonis Mathieu, Billères Malvina, Chabardes Stephan, Piallat Brigitte
Univ. Grenoble Alpes, Fonds de dotation Clinatec, Grenoble, France.
Emory National Primate Research Center, Emory University, Atlanta, Georgia, USA.
Eur J Neurosci. 2025 Apr;61(7):e70107. doi: 10.1111/ejn.70107.
Sleep disorders substantially impact quality of life, especially in patients with neurodegenerative diseases like Parkinson's disease. Recent advances in deep brain stimulation highlight the potential of closed-loop adaptive stimulation that utilizes neural feedback signals recorded directly from the stimulation electrodes. The subthalamic nucleus, a distinct structure located deep in the brain, plays a major role in processing cortical information and could be used to classify sleep stages. We recorded local field potentials in the subthalamic nucleus of two freely moving nonhuman primates across three nights. Our study examined subthalamic neuronal activity across different vigilance stages using spectral activity, multiscale entropy analysis, and an automatic classification. Results revealed distinct spectral patterns in subthalamic activity corresponding to sleep stages, with a high synchronization between subthalamic nucleus and EEG signals during deeper sleep stages. These deeper stages were associated also with reduced entropy, suggesting decreased neural activity complexity. An automated machine learning classifier based on subthalamic nucleus spectral activity distinguished wakefulness from sleep with high accuracy (94% for both animals). While the classifier performed well for deeper sleep stages, its accuracy was lower for lighter sleep stages. Our findings suggest that subthalamic nucleus activity can mirror cortical dynamics during sleep, supporting its potential use in developing closed-loop stimulation therapies for sleep disorders. This work provides a foundation for further studies in Parkinson's disease models to evaluate the translational relevance of subthalamic nucleus activity in clinical applications.
睡眠障碍对生活质量有重大影响,尤其是在患有帕金森病等神经退行性疾病的患者中。深部脑刺激的最新进展凸显了闭环自适应刺激的潜力,该刺激利用直接从刺激电极记录的神经反馈信号。丘脑底核是位于大脑深处的一个独特结构,在处理皮层信息方面发挥着重要作用,可用于睡眠阶段分类。我们在三只自由活动的非人类灵长类动物的丘脑底核中记录了三个晚上的局部场电位。我们的研究使用频谱活动、多尺度熵分析和自动分类方法,研究了不同警觉阶段的丘脑底核神经元活动。结果显示,丘脑底核活动中与睡眠阶段相对应的频谱模式明显不同,在深度睡眠阶段,丘脑底核与脑电图信号之间具有高度同步性。这些深度睡眠阶段还与熵的降低有关,表明神经活动复杂性降低。基于丘脑底核频谱活动的自动化机器学习分类器能够高精度地区分清醒和睡眠状态(两只动物的准确率均为94%)。虽然该分类器在深度睡眠阶段表现良好,但在浅睡眠阶段的准确率较低。我们的研究结果表明,丘脑底核活动可以反映睡眠期间的皮层动态,支持其在开发睡眠障碍闭环刺激疗法中的潜在应用。这项工作为在帕金森病模型中进一步研究评估丘脑底核活动在临床应用中的转化相关性奠定了基础。