Heisz Jennifer J, McIntosh Anthony R
Rotman Research Institute, Baycrest.
J Vis Exp. 2013 Jun 27(76):50131. doi: 10.3791/50131.
When considering human neuroimaging data, an appreciation of signal variability represents a fundamental innovation in the way we think about brain signal. Typically, researchers represent the brain's response as the mean across repeated experimental trials and disregard signal fluctuations over time as "noise". However, it is becoming clear that brain signal variability conveys meaningful functional information about neural network dynamics. This article describes the novel method of multiscale entropy (MSE) for quantifying brain signal variability. MSE may be particularly informative of neural network dynamics because it shows timescale dependence and sensitivity to linear and nonlinear dynamics in the data.
在考虑人类神经成像数据时,认识到信号变异性代表了我们思考脑信号方式的一项根本性创新。通常,研究人员将大脑的反应表示为重复实验试验的平均值,并将随时间的信号波动视为“噪声”而不予考虑。然而,越来越明显的是,脑信号变异性传达了有关神经网络动态的有意义的功能信息。本文描述了一种用于量化脑信号变异性的多尺度熵(MSE)新方法。MSE可能对神经网络动态特别具有信息价值,因为它显示了时间尺度依赖性以及对数据中线性和非线性动态的敏感性。