Elsevier

NeuroImage

Volume 225, 15 January 2021, 117475
NeuroImage

Both activation and deactivation of functional networks support increased sentence processing costs

https://doi.org/10.1016/j.neuroimage.2020.117475Get rights and content
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Highlights

  • The default mode network deactivated for coordinating cognitive resources available for processing costs related to gap-filler integration.

  • The task-related positive and negative networks concurrently modulated by processing costs related to center-embeddedness.

  • Syntactic reanalysis elicited increased functional connectivity between the core language network and other networks.

  • Higher attentional focalization elicited increased functional connectivity within the ventral attention network.

Abstract

The research on the neural correlates underlying the language system has gradually moved away from the traditional Broca-Wernicke framework to a network perspective in the past 15 years. Language processing is found to be supported by the co-activation of both core and peripheral brain regions. However, the dynamic co-activation patterns of these brain regions serving different language functions remain to be fully revealed. The present functional magnetic resonance imaging (fMRI) study focused on sentence processing at different syntactic complexity levels to examine how the co-activation of different brain networks will be modulated by increased processing costs. Chinese relative clauses were used to probe the two dimensions of syntactic complexity: embeddedness (left-branching vs. center-embedded) and gap-filler dependency (subject-gap vs. object-gap) using the general linear model (GLM) approach, independent component analysis (ICA) and graph theoretical analysis. In contrast to localized activation revealed by the GLM approach, ICA identified more extensive networks both positively and negatively correlated with the task. We found that the posterior default mode network was anti-correlated to the gap-filler integration costs with increased deactivation for the left-branching object relative clauses compared to subject relative clauses, suggesting the involvement of this network in leveraging the cognitive resources based on the complexity level of the language task. Concurrent activation and deactivation of networks were found to be associated with the higher costs induced by center-embedding and its interaction with gap-filler integration. The graph theoretical analysis further unveiled that center-embeddedness imposed more attentional demand on the subject relative clause, as characterized by its higher degree and strength in the ventral attention network, and higher processing costs of syntactic reanalysis on the object relative clause, as characterized by increased intermodular connections of the language network with other networks. The results suggest that network activation and deactivation profiles are modulated by different dimensions of syntactic complexity to serve the higher demand of creating a coherent semantic representation.

Keywords

Chinese relative clause
Functional network
Deactivation
Gap-filler integration
Center-embedding

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