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使用神经场理论对脑状态进行实时自动脑电图追踪

Real-time automated EEG tracking of brain states using neural field theory.

作者信息

Abeysuriya R G, Robinson P A

机构信息

School of Physics, University of Sydney, New South Wales 2006, Australia; Center for Integrative Brain Function, University of Sydney, New South Wales 2006, Australia; Neurosleep, 431 Glebe Point Rd, Glebe, New South Wales 2037, Australia; Brain Dynamics Center, Sydney Medical School - Western, University of Sydney, Westmead, New South Wales 2145, Australia.

School of Physics, University of Sydney, New South Wales 2006, Australia; Center for Integrative Brain Function, University of Sydney, New South Wales 2006, Australia; Neurosleep, 431 Glebe Point Rd, Glebe, New South Wales 2037, Australia; Brain Dynamics Center, Sydney Medical School - Western, University of Sydney, Westmead, New South Wales 2145, Australia.

出版信息

J Neurosci Methods. 2016 Jan 30;258:28-45. doi: 10.1016/j.jneumeth.2015.09.026. Epub 2015 Oct 31.

Abstract

A real-time fitting system is developed and used to fit the predictions of an established physiologically-based neural field model to electroencephalographic spectra, yielding a trajectory in a physiological parameter space that parametrizes intracortical, intrathalamic, and corticothalamic feedbacks as the arousal state evolves continuously over time. This avoids traditional sleep/wake staging (e.g., using Rechtschaffen-Kales stages), which is fundamentally limited because it forces classification of continuous dynamics into a few discrete categories that are neither physiologically informative nor individualized. The classification is also subject to substantial interobserver disagreement because traditional staging relies in part on subjective evaluations. The fitting routine objectively and robustly tracks arousal parameters over the course of a full night of sleep, and runs in real-time on a desktop computer. The system developed here supersedes discrete staging systems by representing arousal states in terms of physiology, and provides an objective measure of arousal state which solves the problem of interobserver disagreement. Discrete stages from traditional schemes can be expressed in terms of model parameters for backward compatibility with prior studies.

摘要

开发了一种实时拟合系统,用于将已建立的基于生理学的神经场模型的预测结果拟合到脑电图频谱上,从而在生理参数空间中生成一条轨迹,该轨迹随着觉醒状态随时间连续演变,对皮质内、丘脑内和皮质丘脑反馈进行参数化。这避免了传统的睡眠/觉醒分期(例如使用 Rechtschaffen-Kales 分期),传统分期从根本上存在局限性,因为它将连续动力学的分类强行纳入少数几个离散类别,这些类别既没有生理信息价值也不具有个体特异性。这种分类还存在观察者之间的重大分歧,因为传统分期部分依赖于主观评估。拟合程序可以在一整晚的睡眠过程中客观、稳健地跟踪觉醒参数,并在台式计算机上实时运行。这里开发的系统通过从生理学角度表示觉醒状态,取代了离散分期系统,并提供了一种解决观察者间分歧问题的觉醒状态客观测量方法。传统方案中的离散阶段可以用模型参数来表示,以便与先前的研究保持向后兼容性。

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