| Literature DB >> 25827242 |
Emily E Shaw1,2, Aaron P Schultz1,2,3, Reisa A Sperling1,2,3,4, Trey Hedden1,5.
Abstract
Intrinsic functional connectivity MRI has become a widely used tool for measuring integrity in large-scale cortical networks. This study examined multiple cortical networks using Template-Based Rotation (TBR), a method that applies a priori network and nuisance component templates defined from an independent dataset to test datasets of interest. A priori templates were applied to a test dataset of 276 older adults (ages 65-90) from the Harvard Aging Brain Study to examine the relationship between multiple large-scale cortical networks and cognition. Factor scores derived from neuropsychological tests represented processing speed, executive function, and episodic memory. Resting-state BOLD data were acquired in two 6-min acquisitions on a 3-Tesla scanner and processed with TBR to extract individual-level metrics of network connectivity in multiple cortical networks. All results controlled for data quality metrics, including motion. Connectivity in multiple large-scale cortical networks was positively related to all cognitive domains, with a composite measure of general connectivity positively associated with general cognitive performance. Controlling for the correlations between networks, the frontoparietal control network (FPCN) and executive function demonstrated the only significant association, suggesting specificity in this relationship. Further analyses found that the FPCN mediated the relationships of the other networks with cognition, suggesting that this network may play a central role in understanding individual variation in cognition during aging.Entities:
Keywords: cognition; cognitive control; default mode network; memory; resting-state functional connectivity MRI
Mesh:
Year: 2015 PMID: 25827242 PMCID: PMC4601675 DOI: 10.1089/brain.2014.0327
Source DB: PubMed Journal: Brain Connect ISSN: 2158-0014

Template maps for the cortical networks of interest. Network templates were defined from an independent dataset and probed in the current dataset for relationships to cognition. Right and left surface renderings, as defined in the reference dataset, are shown for the default network (DN), frontoparietal control network (FPCN), salience network (SN), and dorsal attention network (DAN). Color intensities indicate factor loading of each voxel with the network template in the reference dataset. Color images available online at www.liebertpub.com/brain
Correlations Between Cognition and Cortical Network Connectivity, Controlling for Age and Quality Assurance Metrics
| r | p | r | p | r | p | |
|---|---|---|---|---|---|---|
| DN | <0.001 | 0.003 | 0.003 | |||
| FPCN | <0.001 | <0.001 | <0.001 | |||
| SN | 0.006 | 0.11 | 0.034 | 0.006 | ||
| DAN | 0.09 | 0.067 | 0.09 | 0.080 | 0.02 | 0.370 |
Correlations between cognitive factor scores and cortical networks within older adults controlling for age, signal-to-noise ratio, movement, and number of outlier volumes. Bold values indicate significance at p<0.05, one-tailed after false discovery rate correction for multiple comparisons.
DAN, dorsal attention network; DN, default network; FPCN, frontoparietal control network; SN, salience network.

Voxelwise correlations with cognition. Correlations were restricted to voxels within the mask of each network template (white). Representative slices showing that the largest regional correlations are displayed for each combination of network and cognitive domain. Each row is displayed at the same z-coordinate indicated at the left. Correlations were corrected for age and quality assessment metrics. The red-yellow spectrum indicates results exceeding a liberal threshold of p<0.05, cluster extent=50. The blue regions exceeded a more conservative threshold of p<0.001. Color images available online at www.liebertpub.com/brain

Partial correlation of FPCN connectivity with executive function. Scatterplot is shown after residualizing FPCN connectivity on age, quality assessment metrics, and average connectivity in the other three networks.

Voxelwise partial correlations of the FPCN with executive function. Correlations were restricted to voxels within the mask of the left and right FPCN templates (white) and displayed on an inflated surface map. Correlations were corrected for age, quality assessment metrics, and average connectivity in the other three networks. The red-yellow spectrum indicates results exceeding a liberal threshold of p<0.05. The blue regions exceeded a more conservative threshold of p<0.001. Color images available online at www.liebertpub.com/brain

Mediation and moderation models of network connectivity to cognition. In a mediation relationship (left), the effect of a network's connectivity (Nx) on cognition (C) acts through a mediator network's connectivity (Nm). For full mediation to be supported, the direct effect of Nx on C is expected to no longer be significant after controlling for the mediating role of Nm, as indicated by the dashed path. In a moderating relationship (right), the effect of a network's connectivity (Nx) on cognition (C) is altered in the presence of a moderating network (Nm). Moderation is tested by examining the interaction effect of Nx and Nm on C.
Mediation Models
| Nx=DN, Nm=FPCN | |||||
| Speed | 0.19[ | 0.70[ | 0.17[ | 0.12[ | 0.07 |
| Executive function | 0.15[ | 0.70[ | 0.29[ | 0.20[ | −0.05 |
| Memory | 0.16[ | 0.70[ | 0.16 | 0.11 | 0.05 |
| Global | 0.19[ | 0.70[ | 0.23[ | 0.16[ | 0.03 |
| Nx=SN, Nm=FPCN | |||||
| Speed | 0.14[ | 0.62[ | 0.22[ | 0.13[ | 0.01 |
| Executive function | 0.10 | 0.62[ | 0.31[ | 0.19[ | −0.09 |
| Memory | 0.14[ | 0.62[ | 0.17[ | 0.10[ | 0.04 |
| Global | 0.15[ | 0.62[ | 0.26[ | 0.16[ | −0.01 |
Standardized path coefficients for mediation models involving FPCN as a mediator of the network to cognition relationships for the DN and SN. Refer to Figure 5 (left) for model structure. Network measures were controlled for age and quality assessment metrics before entry in the models. Nx−Nm−C indicates the indirect (mediated) effect of Nx on C through Nm. Nx′−C indicates the direct effect of Nx on C after controlling for the indirect effect of Nm.
Path value is significant with 95% confidence intervals not overlapping 0.