Estimation of Circadian Rhythms Using Complexity Analysis with Temporal Scale Dependency in Electroencephalogram Signals

Yuta Iinuma, S. Nobukawa, Sho Takagi, Haruhiko Nishimura
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引用次数: 1

Abstract

Disturbances in circadian rhythms have been recently associated with a variety of healthy states and psychiatric pathologies. Therefore, estimating the degree of circadian rhythm disturbance is important for discriminating psychiatric disorders from healthy conditions. Electroencephalogram (EEG) allows to detect brain activity directly, but the recorded signal combines neural activity across multiple time scales. The complexity of brain activity across multiple time scales has been previously quantified using multiscale entropy (MSE) analysis. In this study, we investigated whether MSE analysis of EEG data can detect circadian rhythms. Our results show that in the daytime, the complexity of brain activity is increased at larger temporal scale, and that MSE analysis detects these changes more accurately than conventional power analysis. Because complexity at large temporal scales arises from the long-range connectivity in brain networks, we suggest that the decrease in this EEG pattern complexity by night is mediated by melatonin, which suppresses neural firing and reduces wide-range interactions between brain regions. Our method can be applied for the EEG-based analysis of circadian rhythms in longitudinal studies and may help to diagnose healthy states and psychiatric conditions.
利用脑电图信号时间尺度依赖性的复杂性分析估计昼夜节律
昼夜节律紊乱最近与各种健康状态和精神病理有关。因此,估计昼夜节律紊乱的程度对于区分精神疾病和健康状况非常重要。脑电图(EEG)可以直接检测大脑活动,但记录的信号结合了多个时间尺度的神经活动。大脑活动在多个时间尺度上的复杂性已经用多尺度熵(MSE)分析进行了量化。在这项研究中,我们研究了脑电数据的MSE分析是否可以检测昼夜节律。我们的研究结果表明,在白天,大脑活动的复杂性在更大的时间尺度上增加,并且MSE分析比传统的功率分析更准确地检测到这些变化。由于大时间尺度的复杂性源于大脑网络的远程连接,我们认为夜间脑电图模式复杂性的降低是由褪黑激素介导的,褪黑激素抑制神经放电,减少大脑区域之间的大范围相互作用。我们的方法可以应用于纵向研究中基于脑电图的昼夜节律分析,并可能有助于诊断健康状态和精神状况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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