Aur Dorian, Vila-Rodriguez Fidel
Non-Invasive Neurostimulation Therapies Lab, Department of Psychiatry, University of British Columbia, Vancouver, British Columbia, Canada.
Non-Invasive Neurostimulation Therapies Lab, Department of Psychiatry, University of British Columbia, Vancouver, British Columbia, Canada.
J Neurosci Methods. 2017 Jan 1;275:10-18. doi: 10.1016/j.jneumeth.2016.10.015. Epub 2016 Oct 29.
Complexity measures for time series have been used in many applications to quantify the regularity of one dimensional time series, however many dynamical systems are spatially distributed multidimensional systems.
We introduced Dynamic Cross-Entropy (DCE) a novel multidimensional complexity measure that quantifies the degree of regularity of EEG signals in selected frequency bands. Time series generated by discrete logistic equations with varying control parameter r are used to test DCE measures.
Sliding window DCE analyses are able to reveal specific period doubling bifurcations that lead to chaos. A similar behavior can be observed in seizures triggered by electroconvulsive therapy (ECT). Sample entropy data show the level of signal complexity in different phases of the ictal ECT. The transition to irregular activity is preceded by the occurrence of cyclic regular behavior. A significant increase of DCE values in successive order from high frequencies in gamma to low frequencies in delta band reveals several phase transitions into less ordered states, possible chaos in the human brain.
To our knowledge there are no reliable techniques able to reveal the transition to chaos in case of multidimensional times series. In addition, DCE based on sample entropy appears to be robust to EEG artifacts compared to DCE based on Shannon entropy.
The applied technique may offer new approaches to better understand nonlinear brain activity.
时间序列的复杂性度量已在许多应用中用于量化一维时间序列的规律性,然而许多动力系统是空间分布的多维系统。
我们引入了动态交叉熵(DCE),这是一种新颖的多维复杂性度量,用于量化选定频段内脑电信号的规律性程度。使用具有变化控制参数r的离散逻辑方程生成的时间序列来测试DCE度量。
滑动窗口DCE分析能够揭示导致混沌的特定倍周期分岔。在电惊厥治疗(ECT)引发的癫痫发作中也可观察到类似行为。样本熵数据显示了发作期ECT不同阶段的信号复杂程度。向不规则活动的转变之前会出现周期性的规则行为。从γ频段的高频到δ频段的低频,DCE值按连续顺序显著增加,揭示了几次向无序状态的相变,可能是人脑的混沌状态。
据我们所知,在多维时间序列情况下,没有可靠的技术能够揭示向混沌的转变。此外,基于样本熵的DCE与基于香农熵的DCE相比,似乎对脑电伪迹具有更强的鲁棒性。
所应用的技术可能为更好地理解非线性脑活动提供新方法。