Elbert T, Ray W J, Kowalik Z J, Skinner J E, Graf K E, Birbaumer N
Institute for Experimental Audiology, University of Münster, Germany.
Physiol Rev. 1994 Jan;74(1):1-47. doi: 10.1152/physrev.1994.74.1.1.
In this review we examined the emerging science of deterministic chaos (nonlinear systems theory) and its application to selected physiological systems. Although many of the popular images of fractals represent fascination and beauty that by analogy corresponds to nature as we see it, the question remains as to its ultimate meaning for physiological processes. It was our intent to help clarify this somewhat popular, somewhat obscure area of nonlinear dynamics in the context of an ever-changing procedural base. We examined not only the basic concepts of chaos, but also its applications ranging from observations in single cells to the complexity of the EEG. We have not suggested that nonlinear dynamics will answer all of our questions; however, we did attempt to illustrate ways in which this approach may help us to answer new questions and to rearticulate old ones. Chaos is revolutionary in that the overall approach requires us to adopt a different frame of reference which, at times, may move us away from previous concerns and methods of data analysis. In sections I-IV, we summarized the nonlinear dynamics approach and described its application to physiology and neural systems. First, we presented a general overview of the application of nonlinear dynamical techniques to neural systems. We discussed the manner in which even apparently simple deterministic systems can behave in an unpredictable manner. Second, we described the principles of nonlinear dynamical systems including the derived analytical techniques. We now see a variety of procedures for delineating whether frenetic chaotic behavior results from a nonlinear dynamical system with a few degrees of freedom, or whether it is caused by an infinite number of variables, i.e., noise. Third, we approached the applications of nonlinear procedures to the cardiovascular systems and to the neurosciences. In terms of time series, we described initial studies which applied the now "traditional" measures of dimensionality (e.g., based on the algorithm by Grassberger and Procaccia) and information change (e.g., Lyapunov exponents). Examples include our own work and that of Pritchard et al., demonstrating that the dynamics of neural mass activity reflect psychopathological states. Today, however, the trend has expanded to include the use of surrogate data and statistical null hypotheses testing to examine whether a given time series can be considered different from that of white or colored noise (cf. Ref. 262). One of the most important potential applications is that of quantifying changes in nonlinear dynamics to predict future states of the system.(ABSTRACT TRUNCATED AT 400 WORDS)
在本综述中,我们研究了确定性混沌(非线性系统理论)这一新兴科学及其在特定生理系统中的应用。尽管许多流行的分形图像展现出的魅力和美感可类比我们所看到的自然,但关于其对生理过程的终极意义的问题依然存在。我们的目的是在不断变化的程序基础背景下,帮助厘清这个既有些流行又有些晦涩的非线性动力学领域。我们不仅研究了混沌的基本概念,还探讨了其从单细胞观测到脑电图复杂性等方面的应用。我们并非认为非线性动力学能回答所有问题;然而,我们确实试图举例说明这种方法能如何帮助我们回答新问题并重新阐述旧问题。混沌具有革命性,因为其整体方法要求我们采用不同的参照系,这有时可能使我们偏离先前关注的内容和数据分析方法。在第一至四部分,我们总结了非线性动力学方法,并描述了其在生理学和神经系统中的应用。首先,我们对非线性动力学技术在神经系统中的应用做了总体概述。我们讨论了即便看似简单的确定性系统也能以不可预测方式表现的情形。其次,我们描述了非线性动力学系统的原理,包括衍生出的分析技术。如今,我们看到了各种用于判断狂热的混沌行为是源于具有几个自由度的非线性动力学系统,还是由无数变量即噪声导致的程序。第三,我们探讨了非线性程序在心血管系统和神经科学中的应用。在时间序列方面,我们描述了最初的研究,这些研究应用了如今“传统”的维度测量方法(例如基于格拉斯伯格和普罗卡恰算法)以及信息变化(例如李雅普诺夫指数)。例子包括我们自己的工作以及普里查德等人的研究,这些研究表明神经群体活动的动力学反映了精神病理状态。然而如今,这一趋势已扩展到包括使用替代数据和统计零假设检验,以检查给定的时间序列是否可被认为与白噪声或有色噪声不同(参见参考文献262)。最重要的潜在应用之一是量化非线性动力学的变化以预测系统的未来状态。(摘要截选至400字)