| Literature DB >> 30541433 |
Stephen K Bailey1, Katherine S Aboud1, Tin Q Nguyen1, Laurie E Cutting2.
Abstract
BACKGROUND: There is a substantial literature on the neurobiology of reading and dyslexia. Differences are often described in terms of individual regions or individual cognitive processes. However, there is a growing appreciation that the brain areas subserving reading are nested within larger functional systems, and new network analysis methods may provide greater insight into how reading difficulty arises. Yet, relatively few studies have adopted a principled network-based approach (e.g., connectomics) to studying reading. In this study, we combine data from previous reading literature, connectomics studies, and original data to investigate the relationship between network architecture and reading.Entities:
Keywords: Brain network; Dyslexia; Functional MRI; Graph theory; Individual differences; Language; Reading
Mesh:
Year: 2018 PMID: 30541433 PMCID: PMC6291929 DOI: 10.1186/s11689-018-9251-z
Source DB: PubMed Journal: J Neurodev Disord ISSN: 1866-1947 Impact factor: 4.025
Demographics for study participants
| Grade 3 | Grade 4 | |
|---|---|---|
| Participants | 50 | 45 (15 new) |
| Scan runs | 152 | 162 |
| Gender | 24 F, 26 M | 23 F, 22 M |
| Age at scan (SD) | 9.45 (0.3) | 10.5 (0.3) |
| WASI Full-Scale IQ (SD) | 113.0 (15.5) | 111.0 (15.9) |
| TOWRE - Total Word Efficiency (SD) | 109.9 (14.8) | 104.6 (17.4) |
Fig. 1Reading areas are distributed across many resting-state networks. On the left is the volumetric breakdown of the “reading” network, pulled from a NeuroSynth automated meta-analysis (forward-inference: p<0.01, FDR-corrected) [22], according to the 7-network cortical parcellation from Yeo and colleagues [23]. On the right is a surface plot of the same data. Reading areas are well-distributed across different networks and load highly onto attention and executive networks. Several important reading areas, including the inferior frontal gyrus and temporo-parietal junction, sit at points where multiple networks converge, i.e., likely hub areas
Distribution of resting-state networks across NeuroSynth maps
| Distribution across volumes (%) | |||
|---|---|---|---|
| Forward-inference | Reverse-inference | Whole-brain | |
| Default mode | 17.8 | 29.7 | 23.0 |
| Dorsal attention | 22.0 | 18.5 | 12.5 |
| Fronto-parietal | 19.3 | 13.3 | 14.7 |
| Limbic | 0.1 | 1.2 | 8.7 |
| Somatomotor-auditory | 8.3 | 7.6 | 14.7 |
| Ventral attention | 15.0 | 8.3 | 10.4 |
| Visual | 17.5 | 21.4 | 16.9 |
| Total volume | 149.9 cm3 | 106.8 cm3 | 1067.9 cm3 |
Fig. 2Modularity metrics at rest predict reading skill. Global modularity, the degree to which a whole-brain network separates into RSNs, was positively related to reading skill across all subjects (N=65). Modularity for individual nodes was also positive overall (ravg=0.134), but was significantly higher for nodes in the visual, default mode and cingulo-opercular RSNs (p<0.01). RSN colors correspond to the dominant Yeo RSN displayed in Fig. 1
Fig. 3Dyslexia disproportionately impacts hub areas. Among the brain areas examined in Power and colleagues [36], nodes implicated in dyslexia have higher participation coefficients (32 nodes) compared to the rest of the brain (232 nodes)
Participation coefficients (PC) for nodes identified in multiple dyslexia meta-analyses
| Atlas label | MNI coordinates | Hubness | Suggested network | ||||
|---|---|---|---|---|---|---|---|
| X | Y | Z | PC | % | Yeo 2011 | Power 2011 | |
| L BA 47, L insula | − 35 | 20 | 0 | 5.46 | 97.7 | Fronto-parietal | Salience |
| L mid. occ. gyrus | − 42 | − 60 | − 9 | 5.35 | 97.0 | Dorsal attn. | Dorsal attn. |
| L putamen | − 15 | 4 | 8 | 3.20 | 67.4 | – | Subcortical |
| L inf. par. lobule | − 53 | − 49 | 43 | 3.07 | 65.5 | Default mode | Fronto-parietal |
| L sup. temp. gyrus | − 55 | − 40 | 14 | 2.94 | 64.0 | Ventral attn. | Ventral attn. |
| L fusiform gyrus | − 47 | − 51 | − 21 | 1.66 | 50.8 | Dorsal attn. | Uncertain |