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新生儿脑电图时间序列的非线性动力学分析:睡眠状态与复杂性之间的关系。

Nonlinear dynamical analysis of the neonatal EEG time series: the relationship between sleep state and complexity.

作者信息

Janjarasjitt S, Scher M S, Loparo K A

机构信息

Ubon Ratchathani University, Department of Electrical and Electronic Engineering, Warinchamrab, Ubon Ratchathani 34190, Thailand; Case Western Reserve University, Department of Electrical Engineering and Computer Science, Cleveland, OH 44106, USA.

Case Western Reserve University, Department of Pediatrics, Cleveland, OH 44106, USA.

出版信息

Clin Neurophysiol. 2008 Aug;119(8):1812-1823. doi: 10.1016/j.clinph.2008.03.024. Epub 2008 May 16.

Abstract

OBJECTIVE

The complexity of the EEG time series during stages of neonatal sleep states is investigated. The relationship between these sleep states, birth status (i.e. preterm and full-term), and the complexity of the EEG is assessed.

METHODS

Dimensional complexity, an estimate of the correlation dimension (D(2)) of the EEG time series, is used as a novel index for quantifying the complexity of the EEG time series during different neonatal sleep states. The dimensional complexity is estimated by using both the Grassberger-Procaccia algorithm and Theiler's modified algorithm. Also, the hypothesis that the neonatal EEG time series contains nonlinear features is investigated and verified in certain sleep states using surrogate data testing.

RESULTS

Dimensional complexity of the neonatal EEG time series during active (REM) sleep tends to be higher than during quiet (NREM) sleep; while dimensional complexity of the neonatal EEG time series during indeterminate sleep is virtually at the midpoint of the dimensional complexity range between the active and quiet sleep states. Consequently, there are statistically significant differences between the neonatal EEG time series during different sleep states as measured by dimensional complexity. Also, the birth status (preterm or full-term) of the neonate has an influence on dimensional complexity of the neonatal EEG time series. Further, the surrogate data testing null hypothesis for dimensional complexity cannot be rejected during active sleep.

CONCLUSIONS

The neonatal EEG time series tends to have statistically different complexities corresponding to different sleep states. Given that the neonatal EEG time series during active sleep is more complex than during quiet sleep, one can suggest that there is greater activity among cortical circuit elements during active as compared to quiet sleep. Further, active sleep neuronal dynamics are best modeled by a linear stochastic process, while in quiet sleep a nonlinear deterministic model may be more appropriate.

SIGNIFICANCE

There has been considerable controversy associated with measures of complexity, such as dimensional analysis, as applied to neonatal EEG data. This paper confirms that there are statistically significant differences in dimensional complexity associated with different states of sleep and that the origin of this complexity shifts from linear stochastic to nonlinear deterministic with transitions from active to quiet sleep, and is further influenced by maturation. This may provide important insight into the organization and structure of neuronal networks during sleep and with brain maturation in the neonatal period.

摘要

目的

研究新生儿睡眠状态各阶段脑电图(EEG)时间序列的复杂性。评估这些睡眠状态、出生状况(即早产和足月)与EEG复杂性之间的关系。

方法

维度复杂性,即EEG时间序列关联维数(D(2))的估计值,被用作量化不同新生儿睡眠状态下EEG时间序列复杂性的新指标。通过使用格拉斯贝格-普罗卡恰算法和泰勒修正算法来估计维度复杂性。此外,使用替代数据测试对新生儿EEG时间序列包含非线性特征这一假设在某些睡眠状态下进行研究和验证。

结果

新生儿EEG时间序列在活跃(快速眼动,REM)睡眠期间的维度复杂性往往高于安静(非快速眼动,NREM)睡眠期间;而新生儿EEG时间序列在不确定睡眠期间的维度复杂性实际上处于活跃和安静睡眠状态维度复杂性范围的中点。因此,通过维度复杂性测量,不同睡眠状态下新生儿EEG时间序列之间存在统计学上的显著差异。此外,新生儿的出生状况(早产或足月)对新生儿EEG时间序列的维度复杂性有影响。进一步而言,在活跃睡眠期间,维度复杂性的替代数据测试零假设不能被拒绝。

结论

新生儿EEG时间序列在不同睡眠状态下往往具有统计学上不同的复杂性。鉴于活跃睡眠期间的新生儿EEG时间序列比安静睡眠期间更复杂,可以认为与安静睡眠相比,活跃睡眠期间皮质回路元件的活动更多。此外,活跃睡眠神经元动力学最好用线性随机过程建模,而在安静睡眠中,非线性确定性模型可能更合适。

意义

应用于新生儿EEG数据的复杂性测量方法,如维度分析,一直存在相当大的争议。本文证实,与不同睡眠状态相关的维度复杂性存在统计学上的显著差异,并且这种复杂性的起源随着从活跃睡眠到安静睡眠的转变从线性随机转变为非线性确定性,并且进一步受到成熟度的影响。这可能为新生儿期睡眠期间神经网络的组织和结构以及大脑成熟提供重要见解。

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