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Integration of fMRI and MEG towards modeling language networks in the brain.

机译:将fMRI和MEG集成到大脑中的语言网络建模中。

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摘要

Human language is a complex neurocognitive process that relies upon a widely-distributed network in the brain. With the advent of advanced neuroimaging techniques (i.e. fMRI and EEG/MEG), our understanding of language system is being transformed from functional segregation to functional integration over the last decade. Instead of asking "where' and "when" the task-related brain activity happened, researchers start to ask how the brain networks are modulated by the task. The main goal of this dissertation work is to elucidate language networks by integrating fMRI from a group of children who have participated annually in a longitudinal study from their childhood through adolescence and MEG data from the same group of children.;This dissertation consists of four main parts: (1) Neuroimaging data from each modality were analyzed separately and spatial maps were quantitatively compared. This is the initial step establishing a framework to integrate the two modalities, because it would provide confidence that fMRI could be used as spatial priors on MEG source localization. (2) Functional network connectivity supporting narrative comprehension was established using fMRI data only from two versions of the narrative comprehension task. FMRI provides us with the spatial information of the underlying network architecture supporting narrative comprehension. However, it is unclear that how the underlying mechanism of high-order cognitive processes modulates the brain networks during narrative comprehension task. Therefore, (3) in order to improve our understanding of these high-order cognitive processes, we integrated fMRI and MEG data within a Bayesian framework by applying a Multiple Sparse Prior (MSP) algorithm from Friston et al. 2008. Both simulated data and experimental data were examined. For experimental data, the group fMRI results were used as spatial priors in the MEG source reconstruction. As a result, we obtained fine spatiotemporal time courses from multiple elements of the brain-language networks. This step enables us to capitalize on the advantages of each modality and obviate the primary limitations of each, leading to an improved method for elaborating the complex network structure of language processing in the human brain. (4) Finally, we used Dynamic Causal Modeling (DCM), a recent network analysis technique, to study the fine spatiotemporal time courses from (3) in order to improve our understanding of how high-order cognitive processes modulate the pathways within the network architecture.;This dissertation makes several significant contributions to the neuroimaging field for better understanding of language networks. First, this is a first cross-modality validation study that qualitatively and quantitatively compares the fMRI and MEG data from the same subjects performing the same high-order cognitive tasks. Second, fMRI spatial maps were successfully incorporated into MEG inverse problem using MSP algorithm under a hierarchical Bayesian framework. Using both simulated data and experimental data, we provided evidence of improvements in the MEG source reconstruction by incorporating spatial priors. Finally, by using fine spatiotemporal time courses from functional active regions, we expanded our understanding of the language networks previously established from our fMRI data alone and found pathways within the language networks supporting narrative comprehension.
机译:人类语言是一个复杂的神经认知过程,它依赖于大脑中广泛分布的网络。随着先进的神经影像技术(即fMRI和EEG / MEG)的出现,在过去十年中,我们对语言系统的理解已从功能隔离转变为功能整合。研究人员开始询问任务相关的大脑网络是如何调节的,而不是询问与任务相关的大脑活动的“位置”和“时间”,本文的主要目的是通过整合小组的功能磁共振成像来阐明语言网络。每年参加从儿童期到青春期的纵向研究的儿童,以及同一组儿童的MEG数据。本论文包括四个主要部分:(1)分别分析每种方式的神经影像数据并定量分析空间图这是建立整合这两种模式的框架的第一步,因为它将提供信心,认为fMRI可以用作MEG源定位的空间先验(2)仅使用来自fMRI的数据来建立支持叙述性理解的功能网络连接。叙述性理解任务的两个版本FMRI为我们提供了基础网络的空间信息支持叙事理解的结构。然而,不清楚在叙事理解任务中,高阶认知过程的潜在机制如何调节大脑网络。因此,(3)为了提高我们对这些高阶认知过程的理解,我们通过应用Friston等人的多重稀疏先验(MSP)算法将fMRI和MEG数据集成在贝叶斯框架中。 2008。检查了模拟数据和实验数据。对于实验数据,将组fMRI结果用作MEG源重建中的空间先验。结果,我们从大脑语言网络的多个元素中获得了良好的时空时程。此步骤使我们能够利用每种模式的优势,并消除每种模式的主要局限性,从而获得一种改进的方法,用于阐述人脑中语言处理的复杂网络结构。 (4)最后,我们使用一种最新的网络分析技术动态因果模型(DCM)研究了(3)中的精细时空时间过程,以增进我们对高阶认知过程如何调节网络内路径的理解本文对神经成像领域做出了重要贡献,以更好地理解语言网络。首先,这是第一个跨模式验证研究,该研究定性和定量比较了来自执行相同高阶认知任务的相同受试者的fMRI和MEG数据。其次,在多层贝叶斯框架下,使用MSP算法将fMRI空间图成功地纳入了MEG反问题。使用模拟数据和实验数据,我们通过合并空间先验提供了改善MEG源重构的证据。最后,通过使用来自功能性活动区域的精细时空时间课程,我们扩展了对以前仅由fMRI数据建立的语言网络的理解,并在语言网络中找到了支持叙事理解的途径。

著录项

  • 作者

    Wang, Yingying.;

  • 作者单位

    University of Cincinnati.;

  • 授予单位 University of Cincinnati.;
  • 学科 Health Sciences Radiology.;Biology Biostatistics.;Engineering Biomedical.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 232 p.
  • 总页数 232
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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