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Connectivity-based whole brain dual parcellation by group ICA reveals tract structures and decreased connectivity in schizophrenia

机译:ICA组基于连通性的全脑双重分割揭示了精神分裂症的道结构并降低了连通性

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Mapping brain connectivity based on neuroimaging data is a promising new tool for understanding brain structure and function. In this methods paper, we demonstrate that group independent component analysis (GICA) can be used to perform a dual parcellation of the brain based on its connectivity matrix (cmICA). This dual parcellation consists of a set of spatially independent source maps, and a corresponding set of paired dual maps that define the connectivity of each source map to the brain. These dual maps are called the connectivity profiles of the source maps. Traditional analysis of connectivity matrices has been used previously for brain parcellation, but the present method provides additional information on the connectivity of these segmented regions. In this paper, the whole brain structural connectivity matrices were calculated on a 5 mm(3) voxel scale from diffusion imaging data based on the probabilistic tractography method. The effect of the choice of the number of components (30 and 100) and their stability were examined. This method generated a set of spatially independent components that are consistent with the canonical brain tracts provided by previous anatomic descriptions, with the high order model yielding finer segmentations. The corpus-callosum example shows how this method leads to a robust parcellation of a brain structure based on its connectivity properties. We applied cmICA to study structural connectivity differences between a group of schizophrenia subjects and healthy controls. The connectivity profiles at both model orders showed similar regions with reduced connectivity in schizophrenia patients. These regions included forceps major, right inferior fronto-occipital fasciculus, uncinate fasciculus, thalamic radiation, and corticospinal tract. This paper provides a novel unsupervised data-driven framework that summarizes the information in a large global connectivity matrix and tests for brain connectivity differences. It has the potential for capturing important brain changes related to disease in connectivity-based disorders. Hum Brain Mapp 36:4681-4701, 2015. (c) 2015 Wiley Periodicals, Inc.
机译:基于神经影像数据绘制大脑连通性是一种了解大脑结构和功能的有前途的新工具。在此方法论文中,我们证明了基于组的独立成分分析(GICA)可用于根据其连接矩阵(cmICA)对大脑进行双重分割。这种双重分割包括一组空间独立的源贴图,以及一组相应的成对的双贴图,它们定义了每个源贴图与大脑的连通性。这些双重映射称为源映射的连接配置文件。连通性矩阵的传统分析先前已用于脑部分裂,但本方法提供了有关这些分段区域的连通性的其他信息。在本文中,基于概率束摄影法,根据扩散成像数据以5 mm(3)体素量表计算了整个大脑结构的连接矩阵。检查了选择组件数量(30和100)及其稳定性的影响。该方法生成了一组空间独立的组件,这些组件与以前的解剖学描述所提供的规范脑束相一致,而高阶模型产生了更精细的分割。 call体示例显示了该方法如何基于其连接属性导致大脑结构的鲁棒分割。我们应用cmICA研究一组精神分裂症患者与健康对照之间的结构连接差异。两个模型订单的连通性分布图显示,精神分裂症患者的相似区域的连通性降低。这些区域包括大钳,右额枕下​​筋膜,结状筋膜,丘脑放射和皮质脊髓束。本文提供了一种新颖的无监督数据驱动框架,该框架在大型全局连接矩阵中汇总了信息,并测试了大脑的连接差异。它具有捕获与基于连接性疾病相关的重要大脑变化的潜力。嗡嗡声大脑Mapp 36:4681-4701,2015.(c)2015 Wiley Periodicals,Inc.

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