Graph theoretical quantification of white matter reorganization after cortical stroke in mice

Abstract:

Stroke is a devastating disease leading to cell death and disconnection between neurons both locally and remote, often resulting in severe long-term disability. Spontaneous reorganization of areas and pathways not primarily affected by ischemia is, however, associated with albeit limited recovery of function. Quantitative mapping of whole-brain changes of structural connectivity concerning the ischemia-induced sensorimotor deficit and recovery thereof would help to target structural plasticity in order to improve rehabilitation. Currently, only in vivo diffusion MRI can extract the structural whole-brain connectome noninvasively. This approach is, however, used primarily in human studies. Here, we applied atlas-based MRI analysis and graph theory to DTI in wild-type mice with cortical stroke lesions. Using a DTI network approach and graph theory, we aimed at gaining insights into the dynamics of the spontaneous reorganization after stroke related to the recovery of function. We found evidence for altered structural integrity of connections of specific brain regions, including the breakdown of connections between brain regions directly affected by stroke as well as long-range rerouting of intra- and transhemispheric connections related to improved sensorimotor behavior.

Citation: NeuroImage 217:116873

Date Published: 1st Aug 2020

Registered Mode: by DOI

Authors: Niklas Pallast, Frederique Wieters, Marieke Nill, Gereon R. Fink, Markus Aswendt

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Citation
Pallast, N., Wieters, F., Nill, M., Fink, G. R., & Aswendt, M. (2020). Graph theoretical quantification of white matter reorganization after cortical stroke in mice. In NeuroImage (Vol. 217, p. 116873). Elsevier BV. https://doi.org/10.1016/j.neuroimage.2020.116873
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Created: 4th Nov 2024 at 15:46

Last updated: 4th Nov 2024 at 15:46

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