Lutzenberger W, Preissl H, Pulvermüller F
Institut für Medizinische Psychologie und Verhaltensneurobiologie, Universität Tübingen, Germany.
Biol Cybern. 1995 Oct;73(5):477-82. doi: 10.1007/BF00201482.
Fractal dimension has been proposed as a useful measure for the characterization of electrophysiological time series. This paper investigates what the pointwise dimension of electroencephalographic (EEG) time series can reveal about underlying neuronal generators. The following theoretical assumptions concerning brain function were made (i) within the cortex, strongly coupled neural assemblies exist which oscillate at certain frequencies when they are active, (ii) several such assemblies can oscillate at a time, and (iii) activity flow between assemblies is minimal. If these assumptions are made, cortical activity can be considered as the weighted sum of a finite number of oscillations (plus noise). It is shown that the correlation dimension of finite time series generated by multiple oscillators increases monotonically with the number of oscillators. Furthermore, it is shown that a reliable estimate of the pointwise dimension of the raw EEG signal can be calculated from a time series as short as a few seconds. These results indicate that (i) The pointwise dimension of the EEG allows conclusions regarding the number of independently oscillating networks in the cortex, and (ii) a reliable estimate of the pointwise dimension of the EEG is possible on the basis of short raw signals.
分形维数已被提议作为表征电生理时间序列的一种有用度量。本文研究脑电图(EEG)时间序列的逐点维数能揭示关于潜在神经元发生器的哪些信息。做出了以下关于脑功能的理论假设:(i)在皮质内,存在强耦合的神经集合,当它们活跃时会以特定频率振荡;(ii)几个这样的集合可以同时振荡;(iii)集合之间的活动流最小。如果做出这些假设,皮质活动可被视为有限数量振荡(加噪声)的加权和。结果表明,由多个振荡器生成的有限时间序列的关联维数随振荡器数量单调增加。此外,结果表明可以从短至几秒的时间序列计算出原始EEG信号逐点维数的可靠估计值。这些结果表明:(i)EEG的逐点维数允许得出关于皮质中独立振荡网络数量的结论;(ii)基于短原始信号有可能对EEG的逐点维数进行可靠估计。