一种基于图的稀疏网络脑分割方法

N. Honnorat, H. Eavani, T. Satterthwaite, C. Davatzikos
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引用次数: 3

摘要

功能磁共振成像是评估大脑功能的有力工具。静息状态fMRI的分析可以描述皮层区域之间的功能关系。由于大多数连通性分析方法都受到维度诅咒的影响,因此需要首先将皮层划分为连贯激活模式的区域。一旦提取了这些感兴趣区域的信号,估计其相关矩阵逆的稀疏近似值是鲁棒描述其功能相互作用的经典方法。在本文中,我们用一种新的基于马尔可夫随机场的分割方法来解决这两个目标,这种方法有利于提取稀疏的区域网络。我们的方法依赖于最先进的rsfMRI模型,自然地适应数据的包裹数量,并且由于使用形状先验而保证提供连接区域。本文的第二个贡献在于两个新的稀疏增强势。我们的方法通过一个公开可用的数据集进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Graph-Based Brain Parcellation Method Extracting Sparse Networks
fMRI is a powerful tool for assessing the functioning of the brain. The analysis of resting-state fMRI allows to describe the functional relationship between the cortical areas. Since most connectivity analysis methods suffer from the curse of dimensionality, the cortex needs to be first partitioned into regions of coherent activation patterns. Once the signals of these regions of interest have been extracted, estimating a sparse approximation of the inverse of their correlation matrix is a classical way to robustly describe their functional interactions. In this paper, we address both objectives with a novel parcellation method based on Markov Random Fields that favors the extraction of sparse networks of regions. Our method relies on state of the art rsfMRI models, naturally adapts the number of parcels to the data and is guaranteed to provide connected regions due to the use of shape priors. The second contribution of this paper resides in two novel sparsity enforcing potentials. Our approach is validated with a publicly available dataset.
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