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Probabilistic Anatomical Connectivity Using Completion Fields

机译:使用完成字段的概率解剖学连通性

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Diffusion magnetic resonance imaging has led to active research in the analysis of anatomical connectivity in the brain. Many approaches have been proposed to model the diffusion signal and to obtain estimates of fibre tracts. Despite these advances, the question of defining probabilistic connectivity indices which utilize the relevant information in the diffusion MRI signal to indicate connectivity strength, remains largely open. To address this problem we introduce a novel numerical implementation of a stochastic completion field algorithm, which models the diffusion of water molecules in a medium while incorporating the local diffusion MRI data. We show that the approach yields a valid probabilistic estimate of connectivity strength between two seed regions, with experimental results on the MICCAI 2009 Fibre Cup phantom[l].
机译:扩散磁共振成像已导致在分析大脑的解剖学连通性方面进行了积极的研究。已经提出了许多方法来对扩散信号建模并获得纤维束的估计。尽管取得了这些进步,但是定义概率连通性指数的问题在很大程度上仍未解决,该指数利用扩散MRI信号中的相关信息来指示连通性强度。为了解决这个问题,我们介绍了一种随机完成场算法的新型数值实现方法,该算法对水分子在介质中的扩散进行建模,同时结合了局部扩散MRI数据。我们证明了该方法对两个种子区域之间的连接强度产生了有效的概率估计,并在MICCAI 2009纤维杯模型上获得了实验结果[1]。

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