Edge-centric functional network representations of human cerebral cortex reveal overlapping system-level architecture.
Joshua FaskowitzFarnaz Zamani EsfahlaniYoungheun JoOlaf SpornsRichard F BetzelPublished in: Nature neuroscience (2020)
Network neuroscience has relied on a node-centric network model in which cells, populations and regions are linked to one another via anatomical or functional connections. This model cannot account for interactions of edges with one another. In this study, we developed an edge-centric network model that generates constructs 'edge time series' and 'edge functional connectivity' (eFC). Using network analysis, we show that, at rest, eFC is consistent across datasets and reproducible within the same individual over multiple scan sessions. We demonstrate that clustering eFC yields communities of edges that naturally divide the brain into overlapping clusters, with regions in sensorimotor and attentional networks exhibiting the greatest levels of overlap. We show that eFC is systematically modulated by variation in sensory input. In future work, the edge-centric approach could be useful for identifying novel biomarkers of disease, characterizing individual variation and mapping the architecture of highly resolved neural circuits.
Keyphrases
- functional connectivity
- resting state
- network analysis
- endothelial cells
- working memory
- induced apoptosis
- single cell
- computed tomography
- rna seq
- lymph node
- gene expression
- high resolution
- genome wide
- magnetic resonance imaging
- magnetic resonance
- oxidative stress
- multiple sclerosis
- cell cycle arrest
- mass spectrometry
- dna methylation
- current status
- induced pluripotent stem cells
- endoplasmic reticulum stress
- cell proliferation
- dual energy
- cerebral blood flow