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Connectivity-based parcellation of putamen using resting state fMRI data

机译:基于静止状态功能磁共振成像数据的壳聚糖基于连接的碎片

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In this paper, we present a novel framework for parcellation of a brain region into functional sub-regions based on connectivity patterns between brain regions. The proposed method takes the prior neurological information into consideration and aims at finding spatially continuous and functionally consistent sub-regions in a given brain area. The proposed framework relies on 1) a sparse spatially regularized fused lasso regression model for encouraging spatially and functionally adjacent voxels to share similar regression coefficients despite of spatial noise; 2) an iterative voxels (groups) merging and adaptive parameter tuning process; and 3) a Graph-Cut optimization algorithm for assigning overlapped voxels into separate sub-regions. With spatial information incorporated, spatially continuous and functionally consistent sub-regions could be obtained and further used for subsequent brain connectivity analysis.
机译:在本文中,我们提出了一个新的框架,用于根据大脑区域之间的连通性模式将大脑区域分解为功能子区域。所提出的方法将先验的神经学信息考虑在内,旨在在给定的大脑区域中找到空间连续且功能一致的子区域。所提出的框架依赖于1)稀疏的空间正则化融合套索回归模型,用于鼓励空间和功能上相邻的体素共享相似的回归系数,尽管存在空间噪声; 2)迭代体素(组)合并和自适应参数调整过程; 3)图切割优化算法,用于将重叠的体素分配到单独的子区域中。通过合并空间信息,可以获得空间连续且功能一致的子区域,并将其进一步用于后续的大脑连接性分析。

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