| Literature DB >> 23629050 |
Tristan T Nakagawa1, Viktor K Jirsa, Andreas Spiegler, Anthony R McIntosh, Gustavo Deco.
Abstract
With the increasing availability of advanced imaging technologies, we are entering a new era of neuroscience. Detailed descriptions of the complex brain network enable us to map out a structural connectome, characterize it with graph theoretical methods, and compare it to the functional networks with increasing detail. To link these two aspects and understand how dynamics and structure interact to form functional brain networks in task and in the resting state, we use theoretical models. The advantage of using theoretical models is that by recreating functional connectivity and time series explicitly from structure and pre-defined dynamics, we can extract critical mechanisms by linking structure and function in ways not directly accessible in the real brain. Recently, resting-state models with varying local dynamics have reproduced empirical functional connectivity patterns, and given support to the view that the brain works at a critical point at the edge of a bifurcation of the system. Here, we present an overview of a modeling approach of the resting brain network and give an application of a neural mass model in the study of complexity changes in aging.Keywords: Aging; Complexity; Criticality; MSE; Multiscale entropy; Resting-state models; Structure–function
Mesh:
Year: 2013 PMID: 23629050 DOI: 10.1016/j.neuroimage.2013.04.055
Source DB: PubMed Journal: Neuroimage ISSN: 1053-8119 Impact factor: 6.556