Abstract
Most neuroimaging studies of post-stroke recovery rely on analyses derived from standard node-centric functional connectivity to map the distributed effects in stroke patients. Here, given the importance of nonlocal and diffuse damage, we use an edge-centric approach to functional connectivity in order to provide an alternative description of the effects of this disorder. These techniques allow for the rendering of metrics such as normalized entropy, which describes the diversity of edge communities at each node. Moreover, the approach enables the identification of high amplitude co-fluctuations in fMRI time series. We found that normalized entropy is associated with stroke lesion severity and continually increases across the time of patients’ recovery. Furthermore, high amplitude co-fluctuations not only relate to the lesion severity but are also associated with patients’ level of recovery. The current study is the first edge-centric application for a clinical population in a longitudinal dataset and demonstrates how a different perspective for functional data analysis can further characterize topographic modulations of brain dynamics.
Original language | English (US) |
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Article number | 103055 |
Journal | NeuroImage: Clinical |
Volume | 35 |
DOIs | |
State | Published - Jan 2022 |
Externally published | Yes |
Bibliographical note
Publisher Copyright:© 2022 The Authors
Keywords
- Brain dynamics
- Edge-centric
- Entropy
- Functional connectivity
- Longitudinal
- Stroke