How Can Graph Theory Inform the Dual-stream Model of Speech Processing? A Resting-state Functional Magnetic Resonance Imaging Study of Stroke and Aphasia Symptomology.

IF 3.1 3区 医学 Q2 NEUROSCIENCES
Haoze Zhu, Megan C Fitzhugh, Lynsey M Keator, Lisa Johnson, Chris Rorden, Leonardo Bonilha, Julius Fridriksson, Corianne Rogalsky
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Abstract

The dual-stream model of speech processing describes a cortical network involved in speech processing. However, it is not yet known if the dual-stream model represents actual intrinsic functional brain networks. Furthermore, it is unclear how disruptions after a stroke to the functional connectivity of the dual-stream model's regions are related to speech production and comprehension impairments seen in aphasia. To address these questions, in the present study, we examined two independent resting-state fMRI data sets: (1) 28 neurotypical matched controls and (2) 28 chronic left-hemisphere stroke survivors collected at another site. We successfully identified an intrinsic functional network among the dual-stream model's regions in the control group using functional connectivity. We then used both standard functional connectivity analyses and graph theory approaches to determine how this connectivity may predict performance on clinical aphasia assessments. Our findings provide evidence that the dual-stream model of speech processing is an intrinsic network as measured via resting-state MRI and that functional connectivity of the hub nodes of the dual-stream network defined by graph theory methods, but not overall average network connectivity, is weaker in the stroke group than in the control participants. In addition, the functional connectivity of the hub nodes predicted linguistic impairments on clinical assessments. In particular, the relative strength of connectivity of the right hemisphere's homologues of the left dorsal stream hubs to the left dorsal hubs, versus to the right ventral stream hubs, is a particularly strong predictor of poststroke aphasia severity and symptomology.

图论如何指导语音处理的双流模型?脑卒中和失语症症状的静息态功能磁共振成像研究。
语音处理双流模型描述了参与语音处理的大脑皮层网络。然而,双流模型是否代表实际的大脑固有功能网络尚不得而知。此外,目前还不清楚中风后双流模型区域的功能连接中断与失语症患者的言语生成和理解障碍之间的关系。为了解决这些问题,在本研究中,我们检查了两个独立的静息态 fMRI 数据集:(1)28 个神经畸形匹配对照组;(2)在另一地点收集的 28 个慢性左半球中风幸存者。在对照组中,我们利用功能连通性在双流模型区域中成功识别了一个内在功能网络。然后,我们使用标准功能连接分析和图论方法来确定这种连接如何预测临床失语症评估的表现。我们的研究结果证明,通过静息态核磁共振成像(resting-state MRI)测量,语音处理的双流模型是一个内在网络,而且与对照组的参与者相比,中风组通过图论方法定义的双流网络枢纽节点的功能连通性较弱,但整体平均网络连通性并不弱。此外,中枢节点的功能连通性还能预测临床评估中的语言障碍。特别是,右半球与左侧背侧流中枢的同源连接相对于与右侧腹侧流中枢的连接的相对强度,是中风后失语症严重程度和症状的一个特别强的预测因子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Cognitive Neuroscience
Journal of Cognitive Neuroscience 医学-神经科学
CiteScore
5.30
自引率
3.10%
发文量
151
审稿时长
3-8 weeks
期刊介绍: Journal of Cognitive Neuroscience investigates brain–behavior interaction and promotes lively interchange among the mind sciences.
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