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Signal processing methods for interaction analysis of functional brain imaging data.

机译:用于功能性大脑成像数据的交互分析的信号处理方法。

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摘要

Modeling functional brain interaction networks using non-invasive EEG and MEG data is more challenging than using intracranial recordings data. This is because most interaction measures are not robust to cross-talk (interference) between cortical regions, which may arise due to the limited spatial resolution of EEG/MEG inverse procedures. We describe a modified beamforming approach to accurately measure cortical interactions from EEG/MEG data, designed to suppress cross-talk between cortical regions. We estimate interaction measures from the output of the modified beamformer and test for statistical significance using permutation tests. Since the underlying neuronal sources and their interactions are unknown in real MEG data, we demonstrate the performance of the proposed beamforming method in a novel simulation scheme, where intracranial recordings from a macaque monkey are used as neural sources to simulate realistic MEG signals. The advantage of this approach is that local field potentials are more realistic representations of true neuronal sources than simulation models and therefore are more suitable to evaluate the performance of our nulling beamforming method.Intracranial recordings have minimal cross-talk and therefore interactions can be measured more reliably. However, performing group level studies is a challenging task because of the sparsity and variable coverage of electrodes on each subjects' brain. We describe a set of group analysis procedures for intracranial EEG recordings, which include registration of MRI volumes and cortical surfaces, and parcellation of anatomical regions of interest. We use a parametric probability model to test for equality of phase synchrony, and use Fisher's combined p-value method to pool test results from electrodes on individual subjects into the parcellated regions of interest. We apply our group analysis procedure to intracranial EEG data recorded in a working memory experiment and find an interaction network that is modulated by memory load.
机译:与使用颅内记录数据相比,使用非侵入性EEG和MEG数据对功能性大脑互动网络进行建模更具挑战性。这是因为大多数交互措施对皮质区域之间的串扰(干扰)均不强健,这可能是由于EEG / MEG逆过程的空间分辨率有限而引起的。我们描述了一种改良的波束形成方法,可从EEG / MEG数据准确测量皮质相互作用,旨在抑制皮质区域之间的串扰。我们从改进的波束形成器的输出估计交互作用度量,并使用置换检验测试统计显着性。由于在真正的MEG数据中未知潜在的神经元来源及其相互作用,因此我们在新颖的仿真方案中证明了所提出的波束形成方法的性能,该方案将猕猴的颅内记录用作神经源来仿真逼真的MEG信号。这种方法的优势在于,与模拟模型相比,局部电势更能真实地表示真实的神经元信号源,因此更适合评估我们的归零波束形成方法的性能。颅内记录的串扰最小,因此可以更多地测量相互作用可靠地。然而,由于每个受试者大脑上电极的稀疏性和可变性,进行小组水平的研究是一项艰巨的任务。我们描述了一组颅内脑电图记录的组分析程序,其中包括MRI体积和皮层表面的配准,以及感兴趣的解剖区域的碎裂。我们使用参数概率模型来测试相位同步的相等性,并使用Fisher的组合p值方法将测试结果从单个对象上的电极汇集到感兴趣的散布区域中。我们将组分析程序应用于工作记忆实验中记录的颅内EEG数据,并发现一个受记忆负荷调节的相互作用网络。

著录项

  • 作者

    Hui, Hua Brian.;

  • 作者单位

    University of Southern California.;

  • 授予单位 University of Southern California.;
  • 学科 Engineering Biomedical.Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 131 p.
  • 总页数 131
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:36:45

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