Anokhin Andrey P, Müller Viktor, Lindenberger Ulman, Heath Andrew C, Myers Erin
Washington University School of Medicine, Department of Psychiatry, 18 S.Kingshighway, Suite 2T/U, St. Louis, MO 63108, USA.
Neurosci Lett. 2006;397(1-2):93-8. doi: 10.1016/j.neulet.2005.12.025. Epub 2006 Jan 27.
Human electroencephalogram (EEG) consists of complex aperiodic oscillations that are assumed to indicate underlying neural dynamics such as the number and degree of independence of oscillating neuronal networks. EEG complexity can be estimated using measures derived from nonlinear dynamic systems theory. Variations in such measures have been shown to be associated with normal individual differences in cognition and some neuropsychiatric disorders. Despite the increasing use of EEG complexity measures for the study of normal and abnormal brain functioning, little is known about genetic and environmental influences on these measures. Using the pointwise dimension (PD2) algorithm, this study assessed heritability of EEG complexity at rest in a sample of 214 young female twins consisting of 51 monozygotic (MZ) and 56 dizygotic (DZ) pairs. In MZ twins, intrapair correlations were high and statistically significant; in DZ twins, correlations were substantially smaller. Genetic analyses using linear structural equation modeling revealed high and significant heritability of EEG complexity: 62-68% in the eyes-closed condition, and 46-60% in the eyes-open condition. Results suggest that individual differences in the complexity of resting electrocortical dynamics are largely determined by genetic factors. Neurophysiological mechanisms mediating genetic variation in EEG complexity may include the degree of structural connectivity and functional differentiation among cortical neuronal assemblies.
人类脑电图(EEG)由复杂的非周期性振荡组成,这些振荡被认为指示了潜在的神经动力学,例如振荡神经网络的数量和独立程度。EEG复杂性可以使用源自非线性动力系统理论的测量方法来估计。已表明此类测量方法的变化与认知方面的正常个体差异以及一些神经精神疾病有关。尽管EEG复杂性测量方法在正常和异常脑功能研究中的使用越来越多,但对于这些测量方法的遗传和环境影响知之甚少。本研究使用逐点维度(PD2)算法,在由51对同卵(MZ)和56对异卵(DZ)双胞胎组成的214名年轻女性双胞胎样本中评估了静息状态下EEG复杂性的遗传力。在MZ双胞胎中,双胞胎对内的相关性很高且具有统计学意义;在DZ双胞胎中,相关性则小得多。使用线性结构方程模型的遗传分析显示EEG复杂性具有高且显著的遗传力:闭眼条件下为62 - 68%,睁眼条件下为46 - 60%。结果表明,静息脑电皮质动力学复杂性的个体差异在很大程度上由遗传因素决定。介导EEG复杂性遗传变异的神经生理机制可能包括皮质神经元组件之间的结构连接程度和功能分化程度。