| Literature DB >> 23851571 |
Jennifer J Heisz1, Anthony R McIntosh.
Abstract
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.Entities:
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Year: 2013 PMID: 23851571 PMCID: PMC3729183 DOI: 10.3791/50131
Source DB: PubMed Journal: J Vis Exp ISSN: 1940-087X Impact factor: 1.355