| Literature DB >> 27752518 |
Lin Li1, Mary Cazzell2, Olajide Babawale3, Hanli Liu3.
Abstract
Atlas-guided diffuse optical tomography (atlas-DOT) is a computational means to image changes in cortical hemodynamic signals during human brain activities. Graph theory analysis (GTA) is a network analysis tool commonly used in functional neuroimaging to study brain networks. Atlas-DOT has not been analyzed with GTA to derive large-scale brain connectivity/networks based on near-infrared spectroscopy (NIRS) measurements. We introduced an automated voxel classification (AVC) method that facilitated the use of GTA with atlas-DOT images by grouping unequal-sized finite element voxels into anatomically meaningful regions of interest within the human brain. The overall approach included volume segmentation, AVC, and cross-correlation. To demonstrate the usefulness of AVC, we applied reproducibility analysis to resting-state functional connectivity measurements conducted from 15 young adults in a two-week period. We also quantified and compared changes in several brain network metrics between young and older adults, which were in agreement with those reported by a previous positron emission tomography study. Overall, this study demonstrated that AVC is a useful means for facilitating integration or combination of atlas-DOT with GTA and thus for quantifying NIRS-based, voxel-wise resting-state functional brain networks.Entities:
Keywords: AAL 116 atlas; atlas-guided diffuse optical tomography; functional brain connectivity; graph formation; graph theory; young and older adults
Year: 2016 PMID: 27752518 PMCID: PMC5052324 DOI: 10.1117/1.NPh.3.4.045002
Source DB: PubMed Journal: Neurophotonics ISSN: 2329-423X Impact factor: 3.593