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Dynamic functional connectivity analysis reveals transiently increased segregation in patients with severe stroke

Authors :
Vince D. Calhoun
Anne-Katrin Giese
Christian Grefkes
Kathleen Donahue
Mark R Etherton
Carissa Tuozzo
Markus D. Schirmer
Anna K. Bonkhoff
Marco Nardin
Martin Bretzner
Natalia S. Rost
Ona Wu
Publication Year :
2020
Publisher :
Cold Spring Harbor Laboratory, 2020.

Abstract

Background and PurposeTo explore the whole-brain dynamic functional network connectivity patterns in acute ischemic stroke (AIS) patients and their relation to stroke severity in the short and long term.MethodsWe investigated large-scale dynamic functional network connectivity of 41 AIS patients two to five days after symptom onset. Re-occurring dynamic connectivity configurations were obtained using a sliding window approach and k-means clustering. We evaluated differences in dynamic patterns between three NIHSS-stroke severity defined groups (mildly, moderately, and severely affected patients). Furthermore, we established correlation analyses between dynamic connectivity estimates and AIS severity as well as neurological recovery within the first 90 days after stroke (DNIHSS). Finally, we built Bayesian hierarchical models to predict acute ischemic stroke severity and examine the inter-relation of dynamic connectivity and clinical measures, with an emphasis on white matter hyperintensity lesion load.ResultsWe identified three distinct dynamic connectivity configurations in the early post-acute stroke phase. More severely affected patients (NIHSS 10–21) spent significantly more time in a highly segregated dynamic connectivity configuration that was characterized by particularly strong connectivity (three-level ANOVA: ppr = –0.68, pConclusionsOur findings demonstrate transiently increased segregation between multiple functional domains in case of severe AIS. Dynamic connectivity involving default mode network components significantly correlated with recovery in the first three months post-stroke.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....0341c02a847f5f4eef8019d7fcbc3963
Full Text :
https://doi.org/10.1101/2020.06.01.20119263