大脑有混乱吗?非线性动力学的概念和研究方法

Philippe Faure, Henri Korn
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引用次数: 228

摘要

根据过去二十年来在许多实验室所取得的结果,非线性动力学的一些工具,最初是为物理科学和工程而发展和改进的,似乎非常适合于生物现象的研究。特别是,如果不使用这些新技术,即使在综合生理学的背景下,神经细胞、神经集合和行为模式所经历的不同活动机制、它们之间的联系以及它们随时间的变化,也不能完全理解。本报告是两篇相关论文中的第一篇,旨在向非专家介绍非线性动力学的基本方面,其中最引人注目的方面是混沌理论。在介绍了混沌的一般历史和定义之后,相空间中时间序列的分析原理和混沌轨迹的一般性质将被描述为在理想系统和模型中允许将过程分类为混沌的经典度量。然后,我们将继续展示如何这些方法需要适应处理实验时间序列;在处理非平稳和经常有噪声的数据时所面临的危险和陷阱将被强调,并将描述怀疑神经元细胞和/或组件中的确定性的具体标准。我们最后将解决两个基本问题,即i)是否以及如何区分确定性模式和随机模式,以及ii)混沌相对于随机性的优势是什么:我们将解释为什么以及如何控制前者,而众所周知,后者无法被驯服。在该系列的第二篇论文中,在真实神经元网络和高级脑功能研究中获得的单细胞及其膜电导水平的结果将被严格审查。它将表明,非线性动力学的工具可以是不可替代的揭示隐藏的机制,例如,神经元同步和周期振荡。此外,还将考虑采用具有广泛潜在行为和对变化条件快速反应能力的混沌制度对大脑的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Is there chaos in the brain? I. Concepts of nonlinear dynamics and methods of investigation

In the light of results obtained during the last two decades in a number of laboratories, it appears that some of the tools of nonlinear dynamics, first developed and improved for the physical sciences and engineering, are well-suited for studies of biological phenomena. In particular it has become clear that the different regimes of activities undergone by nerve cells, neural assemblies and behavioural patterns, the linkage between them, and their modifications over time, cannot be fully understood in the context of even integrative physiology, without using these new techniques. This report, which is the first of two related papers, is aimed at introducing the non expert to the fundamental aspects of nonlinear dynamics, the most spectacular aspect of which is chaos theory. After a general history and definition of chaos the principles of analysis of time series in phase space and the general properties of chaotic trajectories will be described as will be the classical measures which allow a process to be classified as chaotic in ideal systems and models. We will then proceed to show how these methods need to be adapted for handling experimental time series; the dangers and pitfalls faced when dealing with non stationary and often noisy data will be stressed, and specific criteria for suspecting determinism in neuronal cells and/or assemblies will be described. We will finally address two fundamental questions, namely i) whether and how can one distinguish, deterministic patterns from stochastic ones, and, ii) what is the advantage of chaos over randomness: we will explain why and how the former can be controlled whereas, notoriously, the latter cannot be tamed. In the second paper of the series, results obtained at the level of single cells and their membrane conductances in real neuronal networks and in the study of higher brain functions, will be critically reviewed. It will be shown that the tools of nonlinear dynamics can be irreplaceable for revealing hidden mechanisms subserving, for example, neuronal synchronization and periodic oscillations. The benefits for the brain of adopting chaotic regimes with their wide range of potential behaviours and their aptitude to quickly react to changing conditions will also be considered.

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