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DT-MRI Fiber Tracking: A Shortest Paths Approach

机译:DT-MRI光纤跟踪:最短路径方法

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ara> We derive a new fiber tracking algorithm for DT-MRI that parts with the locally “greedy” paradigm intrinsic to conventional tracking algorithms. We demonstrate the ability to precisely reconstruct a diverse range of fiber trajectories in authentic and computer-generated DT-MRI data, for which well-known conventional tracking algorithms are shown to fail. Our approach is to pose fiber tracking as a problem in computing shortest paths in a weighted digraph. Voxels serve as vertices, and edges are included between neighboring voxels. We assign probabilities (weights) to edges using a Bayesian framework. Higher probabilities are assigned to edges that are aligned with fiber trajectories in their close proximity. We compute optimal paths of maximum probability using computationally scalable shortest path algorithms. The salient features of our approach are: global optimality—unlike conventional tracking algorithms, local errors do not accumulate and one “wrong-turn” does not spell disaster; a target point is specified a priori; precise reconstruction is demonstrated for extremely low signal-to-noise ratio; impartiality to which of two endpoints is used as a seed; and, faster computation times than conventional all-paths tracking. We can use our new tracking algorithm in either a single-path tracking mode (deterministic tracking) or an all-paths tracking mode (probabilistic tracking).
机译:ara>我们导出了一种用于DT-MRI的新的纤维跟踪算法,该算法与传统跟踪算法固有的局部“贪婪”范式分开。我们展示了在真实的和计算机生成的DT-MRI数据中精确重建各种范围的纤维轨迹的能力,而众所周知的常规跟踪算法均无法显示这种轨迹。我们的方法是将光纤跟踪作为计算加权有向图中最短路径的一个问题。体素用作顶点,并且在相邻的体素之间包括边缘。我们使用贝叶斯框架将概率(权重)分配给边。较高的概率分配给与紧邻纤维轨迹的边缘对齐。我们使用可计算的可扩展最短路径算法来计算最大概率的最佳路径。我们方法的主要特点是:全局最优-与传统的跟踪算法不同,局部误差不会累积,一个“错误的转折”不会带来灾难。指定目标点先验;演示了精确重建,以实现极低的信噪比;公正地使用两个端点中的哪一个作为种子;并且,计算时间比传统的全路径跟踪更快。我们可以在单路径跟踪模式(确定性跟踪)或全路径跟踪模式(概率跟踪)中使用新的跟踪算法。

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