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A Connectivity-Based Method for Defining Regions-of-Interest in fMRI Data

机译:基于连通性的fMRI数据兴趣区定义方法

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In this paper, we describe a new methodology for defining brain regions-of-interset (ROIs) in functional magnetic resonance imaging (fMRI) data. The ROIs are defined based on their functional connectivity to other ROIs, i.e., ROIs are defined as sets of voxels with similar connectivity patterns to other ROIs. The method relies on 1) a spatially regularized canonical correlation analysis for identifying maximally correlated signals, which are not due to correlated noise; 2) a test for merging ROIs which have similar connectivity patterns to the other ROIs; and 3) a graph-cuts optimization for assigning voxels to ROIs. Since our method is fully connectivity-based, the extracted ROIs and their corresponding time signals are ideally suited for a subsequent brain connectivity analysis.
机译:在本文中,我们描述了一种在功能性磁共振成像(fMRI)数据中定义脑部区域(ROI)的新方法。根据ROI与其他ROI的功能连通性来定义ROI,即ROI定义为具有与其他ROI相似的连通性模式的体素集。该方法依赖于:1)空间正则规范相关分析,用于识别不是由相关噪声引起的最大相关信号; 2)合并具有与其他ROI相似的连接模式的ROI的测试;和3)用于将体素分配给ROI的图形切割优化。由于我们的方法是完全基于连接性的,因此提取的ROI及其对应的时间信号非常适合于后续的大脑连接性分析。

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