Johns Hopkins University.
Northwestern University.
J Cogn Neurosci. 2019 Jul;31(7):961-977. doi: 10.1162/jocn_a_01405. Epub 2019 Apr 2.
Orthographic processing skills (reading and spelling) are evolutionarily recent and mastered late in development, providing an opportunity to investigate how the properties of the neural networks supporting skills of this type compare to those supporting evolutionarily older, well-established "reference" networks. Although there has been extensive research using task-based fMRI to study the neural substrates of reading, there has been very little using resting-state fMRI to examine the properties of orthographic networks. In this investigation using resting-state fMRI, we compare the within-network and across-network coherence properties of reading and spelling networks directly to these properties of reference networks, and we also compare the network properties of the key node of the orthographic networks-the visual word form area-to those of the other nodes of the orthographic and reference networks. Consistent with previous results, we find that orthographic processing networks do not exhibit certain basic network coherence properties displayed by other networks. However, we identify novel distinctive properties of the orthographic processing networks and establish that the visual word form area has unusually high levels of connectivity with a broad range of brain areas. These characteristics form the basis of our proposal that orthographic networks represent a class of "high-level integrative networks" with distinctive properties that allow them to recruit and integrate multiple, lower level processes.
正字法加工技能(阅读和拼写)是最近进化而来的,在发展后期才掌握,这为研究支持这种类型技能的神经网络的特性如何与支持更早、更成熟的“参考”网络的特性相媲美提供了机会。尽管已经有大量使用任务型 fMRI 研究阅读神经基础的研究,但使用静息态 fMRI 研究正字法网络特性的研究却很少。在这项使用静息态 fMRI 的研究中,我们直接将阅读和拼写网络的网络内和网络间相干性特性与参考网络的这些特性进行比较,我们还将正字法网络的关键节点——视觉词形区的网络特性与正字法和参考网络的其他节点的网络特性进行比较。与之前的结果一致,我们发现正字法处理网络不具有其他网络显示的某些基本网络相干性特性。然而,我们确定了正字法处理网络的新颖独特特性,并证实视觉词形区与广泛的大脑区域具有异常高的连接性。这些特征构成了我们的提议的基础,即正字法网络代表一类“高级综合网络”,具有独特的特性,使它们能够招募和整合多个较低级别的过程。