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Complexity measures of brain wave dynamics

机译:脑电波动力学的复杂性度量

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To understand the nature of brain dynamics as well as to develop novel methods for the diagnosis of brain pathologies, recently, a number of complexity measures from information theory, chaos theory, and random fractal theory have been applied to analyze the EEG data. These measures are crucial in quantifying the key notions of neurodynamics, including determinism, stochasticity, causation, and correlations. Finding and understanding the relations among these complexity measures is thus an important issue. However, this is a difficult task, since the foundations of information theory, chaos theory, and random fractal theory are very different. To gain significant insights into this issue, we carry out a comprehensive comparison study of major complexity measures for EEG signals. We find that the variations of commonly used complexity measures with time are either similar or reciprocal. While many of these relations are difficult to explain intuitively, all of them can be readily understood by relating these measures to the values of a multiscale complexity measure, the scale-dependent Lyapunov exponent, at specific scales. We further discuss how better indicators for epileptic seizures can be constructed.
机译:为了了解脑动力学的性质以及开发诊断脑病理学的新方法,近来,已从信息论,混沌论和随机分形理论中采用了许多复杂性措施来分析EEG数据。这些措施对于量化神经动力学的关键概念至关重要,包括确定性,随机性,因果关系和相关性。因此,找到并理解这些复杂性度量之间的关系是一个重要的问题。但是,这是一项艰巨的任务,因为信息论,混沌论和随机分形论的基础非常不同。为了获得对该问题的重要见解,我们对脑电信号的主要复杂性指标进行了全面的比较研究。我们发现,常用的复杂性度量随时间的变化是相似的或互易的。尽管这些关系中的许多关系很难直观地解释,但是通过将这些度量与特定尺度下的多尺度复杂性度量(与尺度相关的Lyapunov指数)的值相关联,可以轻松理解所有这些关系。我们将进一步讨论如何构建更好的癫痫发作指标。

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