Abstract

Reconfigurations of synchronized large-scale networks are thought to be central neural mechanisms that support cognition and behavior in the human brain. Magnetoencephalography (MEG) recordings together with recent advances in network analysis now allow for sub-second snapshots of such networks. In the present study, we compared frequency-resolved functional connectivity patterns underlying reading of single words and visual recognition of symbol strings. Word reading emphasized coherence in a left-lateralized network with nodes in classical perisylvian language regions, whereas symbol processing recruited a bilateral network, including connections between frontal and parietal regions previously associated with spatial attention and visual working memory. Our results illustrate the flexible nature of functional networks, whereby processing of different form categories, written words vs. symbol strings, leads to the formation of large-scale functional networks that operate at distinct oscillatory frequencies and incorporate task-relevant regions. These results suggest that category-specific processing should be viewed not so much as a local process but as a distributed neural process implemented in signature networks. For words, increased coherence was detected particularly in the alpha (8–13 Hz) and high gamma (60–90 Hz) frequency bands, whereas increased coherence for symbol strings was observed in the high beta (21–29 Hz) and low gamma (30–45 Hz) frequency range. These findings attest to the role of coherence in specific frequency bands as a general mechanism for integrating stimulus-dependent information across brain regions.

Highlights

  • Large-scale functional networks are thought to arise through synchronization between distantly situated and functionally specialized brain regions [1, 2]

  • The language regions that were of particular interest here, the left occipito-temporal region, the left superior/middle temporal cortex (STG, middle temporal gyrus (MTG)), and the left inferior frontal cortex (IFG) were all interconnected (Fig 4, left)

  • The typical reading network is generally not prominent in a datadriven all-to-all connectivity analysis of resting state data [40, 41], it may be detected with seed-based focus on specific language-related regions [42]

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Summary

Introduction

Large-scale functional networks are thought to arise through synchronization between distantly situated and functionally specialized brain regions [1, 2]. To support behavior, such networks should be flexibly reconfigured in a stimulus-specific and task-relevant manner [3, 4]. We focus on cortical connectivity supporting visual recognition of written words, as compared with processing of symbols, to assess formation of transient large-scale functional networks in response to different form categories. Functional brain networks for words and symbols

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