| Literature DB >> 23476025 |
Gagan S Wig1, Timothy O Laumann2, Alexander L Cohen2, Jonathan D Power2, Steven M Nelson3, Matthew F Glasser4, Francis M Miezin5, Abraham Z Snyder5, Bradley L Schlaggar6, Steven E Petersen7.
Abstract
We describe methods for parcellating an individual subject's cortical and subcortical brain structures using resting-state functional correlations (RSFCs). Inspired by approaches from social network analysis, we first describe the application of snowball sampling on RSFC data (RSFC-Snowballing) to identify the centers of cortical areas, subdivisions of subcortical nuclei, and the cerebellum. RSFC-Snowballing parcellation is then compared with parcellation derived from identifying locations where RSFC maps exhibit abrupt transitions (RSFC-Boundary Mapping). RSFC-Snowballing and RSFC-Boundary Mapping largely complement one another, but also provide unique parcellation information; together, the methods identify independent entities with distinct functional correlations across many cortical and subcortical locations in the brain. RSFC parcellation is relatively reliable within a subject scanned across multiple days, and while the locations of many area centers and boundaries appear to exhibit considerable overlap across subjects, there is also cross-subject variability-reinforcing the motivation to parcellate brains at the level of individuals. Finally, examination of a large meta-analysis of task-evoked functional magnetic resonance imaging data reveals that area centers defined by task-evoked activity exhibit correspondence with area centers defined by RSFC-Snowballing. This observation provides important evidence for the ability of RSFC to parcellate broad expanses of an individual's brain into functionally meaningful units.Entities:
Keywords: boundary mapping; brain area parcellation; brain networks; individual differences; resting-state functional correlations; snowball sampling
Mesh:
Year: 2013 PMID: 23476025 PMCID: PMC4089380 DOI: 10.1093/cercor/bht056
Source DB: PubMed Journal: Cereb Cortex ISSN: 1047-3211 Impact factor: 5.357