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局部转移熵能告诉我们关于电生理信号中相位-幅度耦合的哪些信息?

What Can Local Transfer Entropy Tell Us about Phase-Amplitude Coupling in Electrophysiological Signals?

作者信息

Martínez-Cancino Ramón, Delorme Arnaud, Wagner Johanna, Kreutz-Delgado Kenneth, Sotero Roberto C, Makeig Scott

机构信息

Swartz Center for Computational Neurosciences, Institute for Neural Computation, University of California San Diego, La Jolla, CA 92093, USA.

Jacobs School of Engineering, University of California San Diego, La Jolla, CA 92093, USA.

出版信息

Entropy (Basel). 2020 Nov 6;22(11):1262. doi: 10.3390/e22111262.

Abstract

Modulation of the amplitude of high-frequency cortical field activity locked to changes in the phase of a slower brain rhythm is known as phase-amplitude coupling (PAC). The study of this phenomenon has been gaining traction in neuroscience because of several reports on its appearance in normal and pathological brain processes in humans as well as across different mammalian species. This has led to the suggestion that PAC may be an intrinsic brain process that facilitates brain inter-area communication across different spatiotemporal scales. Several methods have been proposed to measure the PAC process, but few of these enable detailed study of its time course. It appears that no studies have reported details of PAC dynamics including its possible directional delay characteristic. Here, we study and characterize the use of a novel information theoretic measure that may address this limitation: local transfer entropy. We use both simulated and actual intracranial electroencephalographic data. In both cases, we observe initial indications that local transfer entropy can be used to detect the onset and offset of modulation process periods revealed by mutual information estimated phase-amplitude coupling (MIPAC). We review our results in the context of current theories about PAC in brain electrical activity, and discuss technical issues that must be addressed to see local transfer entropy more widely applied to PAC analysis. The current work sets the foundations for further use of local transfer entropy for estimating PAC process dynamics, and extends and complements our previous work on using local mutual information to compute PAC (MIPAC).

摘要

与较慢脑节律的相位变化相关联的高频皮质场活动幅度调制被称为相位-幅度耦合(PAC)。由于有多项关于其在人类正常和病理脑过程以及不同哺乳动物物种中出现的报道,这一现象的研究在神经科学领域越来越受到关注。这引发了一种观点,即PAC可能是一种内在的脑过程,有助于跨不同时空尺度的脑区间通信。已经提出了几种方法来测量PAC过程,但其中很少有方法能够详细研究其时间进程。似乎没有研究报告过PAC动力学的细节,包括其可能的方向延迟特征。在这里,我们研究并描述一种可能解决这一局限性的新型信息论测量方法的应用:局部转移熵。我们使用了模拟和实际的颅内脑电图数据。在这两种情况下,我们都观察到了初步迹象,表明局部转移熵可用于检测由互信息估计的相位-幅度耦合(MIPAC)所揭示的调制过程周期的开始和结束。我们在当前关于脑电活动中PAC的理论背景下审视我们的结果,并讨论为使局部转移熵更广泛地应用于PAC分析而必须解决的技术问题。当前的工作为进一步利用局部转移熵来估计PAC过程动力学奠定了基础,并扩展和补充了我们之前关于使用局部互信息来计算PAC(MIPAC)的工作。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/06be/7712258/62210d053498/entropy-22-01262-g001.jpg

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