Applying a network framework to the neurobiology of reading and dyslexia

被引:43
作者
Bailey, Stephen K. [1 ]
Aboud, Katherine S. [1 ]
Nguyen, Tin Q. [1 ]
Cutting, Laurie E. [1 ]
机构
[1] Vanderbilt Univ, Peabody Coll, One Magnolia Circle, Nashville, TN 37203 USA
关键词
Dyslexia; Brain network; Individual differences; Reading; Language; Functional MRI; Graph theory; WORD FORM AREA; FUNCTIONAL CONNECTIVITY; BRAIN; ORGANIZATION; LANGUAGE; ANTICORRELATIONS; SPEECH;
D O I
10.1186/s11689-018-9251-z
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
BackgroundThere 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.MethodsFirst, we detailed the distribution of reading-related areas across many resting-state networks using meta-analytic data from NeuroSynth. Then, we tested whether individual differences in modularity, the brain's tendency to segregate into resting-state networks, are related to reading skill. Finally, we determined whether brain areas that function atypically in dyslexia, as identified by previous meta-analyses, tend to be concentrated in hub regions.ResultsWe found that most resting-state networks contributed to the reading network, including those subserving domain-general cognitive skills such as attention and executive function. There was also a positive relationship between the global modularity of an individual's brain network and reading skill, with the visual, default mode and cingulo-opercular networks showing the highest correlations. Brain areas implicated in dyslexia were also significantly more likely to have a higher participation coefficient (connect to multiple resting-state networks) than other areas.ConclusionsThese results contribute to the growing literature on the relationship between reading and brain network architecture. They suggest that an efficient network organization, i.e., one in which brain areas form cohesive resting-state networks, is important for skilled reading, and that dyslexia can be characterized by abnormal functioning of hub regions that map information between multiple systems. Overall, use of a connectomics framework opens up new possibilities for investigating reading difficulty, especially its commonalities across other neurodevelopmental disorders.
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页数:9
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