| Literature DB >> 32306280 |
Annerine Roos1,2, Jean-Paul Fouche3, Jonathan C Ipser3, Katherine L Narr4, Roger P Woods4, Heather J Zar5, Dan J Stein3, Kirsten A Donald5.
Abstract
Prenatal alcohol exposure leads to alterations in cognition, behavior and underlying brain architecture. However, prior studies have not integrated structural and functional imaging data in children with prenatal alcohol exposure. The aim of this study was to characterize disruptions in both structural and functional brain network organization after prenatal alcohol exposure in very early life. A group of 11 neonates with prenatal alcohol exposure and 14 unexposed controls were investigated using diffusion weighted structural and resting state functional magnetic resonance imaging. Covariance networks were created using graph theoretical analyses for each data set, controlling for age and sex. Group differences in global hub arrangement and regional connectivity were determined using nonparametric permutation tests. Neonates with prenatal alcohol exposure and controls exhibited similar global structural network organization. However, global functional networks of neonates with prenatal alcohol exposure comprised of temporal and limbic hubs, while hubs were more distributed in controls representing an early default mode network. On a regional level, controls showed prominent structural and functional connectivity in parietal and occipital regions. Neonates with prenatal alcohol exposure showed regionally, predominant structural and functional connectivity in several subcortical regions and occipital regions. The findings suggest early functional disruption on a global and regional level after prenatal alcohol exposure and indicate suboptimal organization of functional networks. These differences likely underlie sensory dysregulation and behavioral difficulties in prenatal alcohol exposure.Entities:
Keywords: functional brain network; graph theoretical analysis; multimodal brain imaging; neonate; prenatal alcohol exposure; structural brain network
Year: 2021 PMID: 32306280 PMCID: PMC7572489 DOI: 10.1007/s11682-020-00277-8
Source DB: PubMed Journal: Brain Imaging Behav ISSN: 1931-7557 Impact factor: 3.978
Demographic and anthropometric information of neonates
| PAE | Controls | Statistics | |
|---|---|---|---|
| Age in days (SD) | 21.9 (4.3) | 23.7 (6.1) | F = 0.81, p = 0.39 |
| Gestation in weeks (SD) | 39.5 (2.3) | 39.1 (1.5) | F = 0.29, p = 0.60 |
| Boys/girls (n) | 5/9 | 6/5 | χ2 = 0.89, p = 0.35 |
| Length (cm) | 51.6 | 51.6 | F = 0.001, p = 0.98 |
| Weight (kg) | 4.2 | 4.0 | F = 0.63, p = 0.44 |
| Head circumference (cm) | 36.3 | 36.5 | F = 0.08, p = 0.79 |
PAE, prenatal alcohol exposed
Data processing steps
| Processing | Program | Steps and descriptions |
|---|---|---|
| Diffusion tensor imaging | TORTOISE | 1. Axialization of images (similar to MIPAV) to optimize alignment without warping or changing intensity parameters, by calculating an affine alignment to the UNC neonate structural template. |
| 2. DIFFPREP: Distortion corrections for participant motion, eddy currents and basic echo-planar imaging (EPI) distortions separately on each anterior-posterior and posterior-anterior encoded image. | ||
| 3. DR-BUDDI: Merging encoded sets and further EPI distortion corrections. | ||
| AFNI | 4. Post processing and diffusion tensor parameter fitting. | |
| Resting state | AFNI | 1. Stabilizing magnetic field by removing first four EPI volumes per scan. |
| 2. Exclusion of outlier signal intensities per voxel using 3dDespike. | ||
| 3. Motion correction by rigid-body alignment of each EPI to the third volume, and resampling of data to 2.5 mm in three spatial dimensions. | ||
| 4. Intermediate anatomical registration to T2 images to derive displacement factors and final registration to UNC neonate atlas. | ||
| 5. Spatial smoothing using 5 mm full width at half-maximum (FWHM). | ||
| 6. Registration of individual resting state images to UNC neonate atlas, and utilization of the 90 regions as masks to extract time series data. | ||
| Graph theoretical analysis | GAT | 1. Creation of small-world networks. |
| 2. Threshholding of association matrices at a range of network densities. | ||
| 3. Extraction of clustering coefficient that provides an indication of local segregation of networks i.e. mean connectivity among nodes. | ||
| 3. Extraction of characteristic path length that provides an indication of network integration i.e. mean shortest path length between nodes. | ||
| 4. Creation of random networks with regions and edges comparable to that of the actual brain network, to evaluate the clustering coefficient and characteristic path length, and determine network arrangement. | ||
| BCT | 5. Estimation of nodal betweenness centrality that determines all shortest path lengths of connections between local regions. | |
| 6. Identification of hubs based on nodal betweenness centrality output. | ||
| 6. Nonparametric permutation testing (1000 permutations) to investigate group differences. Comparison of small-world index, clustering coefficient and characteristic path length by group across a range of densities (0.1 to 0.4); and regional network measures e.g. nodal betweenness centrality at minimum density (0.1). |
AFNI, Analysis of Functional NeuroImages; BCT, Brain Connectivity Toolbox; GAT, Graph Theoretical Analysis Toolbox; MIPAV, Medical Image Processing, Analysis, and Visualization; TORTOISE, Tolerably Obsessive Registration and Tensor Optimization Indolent Software Ensemble; UNC, University of California
Outcome of quality checking procedures for diffusion and resting state data. For diffusion data, the number of volumes discarded on average (out of 48) due to motion or other technical issues, and group differences are shown. For resting state data, the number of volumes discarded (out of 176) due to excessive motion, and the maximum and average motion (mm) over all volumes before and after removal of volumes are shown, as well as group differences. Although more volumes were removed and average motion was higher in the prenatal alcohol exposed group, this was not significantly different compared to controls.
| PAE | Controls | ||||
|---|---|---|---|---|---|
| mean | SE | mean | SE | Statistics | |
| Diffusion data | |||||
| Volumes removed | 15 | 3.06 | 10 | 2.18 | F = 1.67, p = 0.21 |
| Resting state data | |||||
| Volumes removed | 20 | 4.72 | 17 | 3.04 | F = 0.47, p = 0.50 |
| Maximum motion before | 3.61 | 0.41 | 4.27 | 0.65 | F = 0.65, p = 0.43 |
| Maximum motion after | 2.58 | 0.32 | 4.10 | 0.65 | F = 3.76, p = 0.06 |
| Average motion before | 0.14 | 0.02 | 0.12 | 0.01 | F = 1.49, p = 0.23 |
| Average motion after | 0.08 | 0.01 | 0.07 | 0.01 | F = 1.68, p = 0.21 |
Fig. 1Between-group differences and 95% confidence intervals in normalized global network measures as a function of network density. There were no significant differences in any of the parameters between groups, thus no ‘x’ fell outside of the confidence intervals. CON, controls; PAE, prenatal alcohol exposed
Group differences in node betweenness centrality of structural and functional networks as an indication of regional connectivity
| PAE > Controls | Controls > PAE | |||||||
|---|---|---|---|---|---|---|---|---|
| Lobe | Structural | p | Functional | p | Structural | p | Functional | p |
| Temporal | R AMYG | 0.044 | R AMYG | 0.013 | ||||
| L STP | 0.013 | L STP | 0.029 | |||||
| R STP | 0.013 | |||||||
| R FG | 0.038 | |||||||
| Occipital | L SOG | 0.003 | R LNG | 0.043 | ||||
| Frontal | L MFG | 0.007 | R IFG-T | 0.022 | ||||
| Parietal | R MCG | 0.023 | R PCUN | 0.017 | ||||
| R ROL | 0.046 |
PAE, prenatal alcohol exposed; AMYG, amygdala; FG, fusiform gyrus; IFG-T, inferior frontal gyrus (triangularis); LNG, lingual gyrus; MCG, middle cingulate gyrus; MFG, middle frontal gyrus; PCUN, precuneus; ROL, rolandic operculum; SOG, superior occipital gyrus; STP, superior temporal pole
Highly connected network hubs
| PAE | Controls | |
|---|---|---|
| Structural hubs | Bilateral MCG | Bilateral MCG |
| R PHIP | R PHIP | |
| R FG | L FG | |
| Functional hubs | R AMYG | R CALC |
| R PLD | L PCG | |
| R STP | R LNG | |
| R CUN | ||
| R PCUN |
PAE, prenatal alcohol exposed; AMYG, amygdala; CALC, calcarine; CUN, cuneus; FG; fusiform gyrus; LNG, lingual gyrus; MCG, middle cingulate gyrus; PLD, pallidum; PCUN, precuneus; PCG, posterior cingulate gyrus; PHIP, parahippocampal gyrus; STP, superior temporal pole
Fig. 2Hubs of the structural network of the control (CON) and PAE group as derived from diffusion tensor imaging data. These were regions with connectivity 2 SD above that of mean network connectivity. Hubs indicated by circles are the middle cingulate gyrus (MCG), fusiform gyrus (FG) and parahippocampal gyrus (PHIP)
Fig. 3Hubs of the functional network of the control (CON) and PAE group as derived from resting state data. These were regions with connectivity 2 SD above that of mean network connectivity. Hubs indicated by circles are the posterior cingulate gyrus (PCG), superior temporal pole (STP), pallidum (PLD), amygdala (AMYG), precuneus (PCUN), cuneus (CUN), calcarine sulcus (CALC) and lingual gyrus (LNG)