The complex network dynamics that arise from the interaction of the brain's structural and functional architectures give rise to mental function. Theoretical models demonstrate that the structure-function relation is maximal when the global network dynamics operate at a critical point of state transition. In the present work, we used a dynamic mean-field neural model to fit empirical structural connectivity (SC) and functional connectivity (FC) data acquired in humans and macaques and developed a new iterative-fitting algorithm to optimize the SC matrix based on the FC matrix. A dramatic improvement of the fitting of the matrices was obtained with the addition of a small number of anatomical links, particularly cross-hemispheric connections, and reweighting of existing connections. We suggest that the notion of a critical working point, where the structure-function interplay is maximal, may provide a new way to link behavior and cognition, and a new perspective to understand recovery of function in clinical conditions. © 2014 the authors.
CITATION STYLE
Deco, G., McIntosh, A. R., Shen, K., Matthew Hutchison, R., Menon, R. S., Everling, S., … Jirsa, V. K. (2014). Identification of optimal structural connectivity using functional connectivity and neural modeling. Journal of Neuroscience, 34(23), 7910–7916. https://doi.org/10.1523/JNEUROSCI.4423-13.2014
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