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Neuroimaging biomarkers predict brain structural connectivity change in a mouse model of vascular cognitive impairment

Boehm-Sturm, Philipp; F�chtemeier, Martina; Foddis, Marco; Mueller, Susanne; Trueman, Rebecca C.; Zille, Marietta; Rinnenthal, Jan Leo; Kypraios, Theodore; Shaw, Laurence; Dirnagl, Ulrich; Farr, Tracy D.

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Authors

Philipp Boehm-Sturm

Martina F�chtemeier

Marco Foddis

Susanne Mueller

Rebecca C. Trueman

Marietta Zille

Jan Leo Rinnenthal

Laurence Shaw

Ulrich Dirnagl

Tracy D. Farr



Abstract

Background and Purpose�Chronic hypoperfusion in the mouse brain has been suggested to mimic aspects of vascular cognitive impairment, such as white matter damage. Although this model has attracted attention, our group has struggled to generate a reliable cognitive and pathological phenotype. This study aimed to identify neuroimaging biomarkers of brain pathology in aged, more severely hypoperfused mice.
Methods�We used magnetic resonance imaging to characterize brain degeneration in mice hypoperfused by refining the surgical procedure to use the smallest reported diameter microcoils (160 ?m).
Results�Acute cerebral blood flow decreases were observed in the hypoperfused group that recovered over 1 month and coincided with arterial remodeling. Increasing hypoperfusion resulted in a reduction in spatial learning abilities in the water maze that has not been previously reported. We were unable to observe severe white matter damage with histology, but a novel approach to analyze diffusion tensor imaging data, graph theory, revealed substantial reorganization of the hypoperfused brain network. A logistic regression model from the data revealed that 3 network parameters were particularly efficient at predicting group membership (global and local efficiency and degrees), and clustering coefficient was correlated with performance in the water maze.
Conclusions�Overall, these findings suggest that, despite the autoregulatory abilities of the mouse brain to compensate for a sudden decrease in blood flow, there is evidence of change in the brain networks that can be used as neuroimaging biomarkers to predict outcome.

Citation

Boehm-Sturm, P., Füchtemeier, M., Foddis, M., Mueller, S., Trueman, R. C., Zille, M., …Farr, T. D. (in press). Neuroimaging biomarkers predict brain structural connectivity change in a mouse model of vascular cognitive impairment. Stroke, 48(1), https://doi.org/10.1161/STROKEAHA.116.014394

Journal Article Type Article
Acceptance Date Nov 28, 2016
Online Publication Date Jan 9, 2017
Deposit Date Jan 13, 2017
Publicly Available Date Jan 13, 2017
Journal Stroke
Print ISSN 0039-2499
Electronic ISSN 1524-4628
Publisher American Heart Association
Peer Reviewed Peer Reviewed
Volume 48
Issue 1
DOI https://doi.org/10.1161/STROKEAHA.116.014394
Keywords biomarkers, diffusion tensor imaging, hypoperfusion, magnetic resonance imaging, mouse, neuroimaging, vascular cognitive impairment
Public URL https://nottingham-repository.worktribe.com/output/841066
Publisher URL http://stroke.ahajournals.org/content/early/2017/01/09/STROKEAHA.116.014394

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