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Probabilistic Tractography Using Q-Ball Modeling and Particle Filtering

机译:使用Q-Ball建模和粒子滤波的概率论

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By assuming that orientation information of brain white matter fibers can be inferred from Diffusion Weighted Magnetic Resonance Imaging (DWMRI) measurements, tractography algorithms provide an estimation of the brain connectivity in-vivo. The two key ingredients of tractography are the diffusion model (tensor, high-order tensor, Q-ball, etc.) and the way to deal with uncertainty during the tracking process (deterministic vs probabilistic). In this paper, we investigate the use of an analytical Q-ball model for the diffusion data within a well-formalized particle filtering framework. The proposed method is validated and compared to other tracking algorithms on the MICCAI'09 contest Fiber Cup phantom and on in-vivo brain DWMRI data.
机译:通过假设可以从扩散加权磁共振成像(DWMRI)测量中推断出大脑白质纤维的取向信息,射线照相术算法可提供体内大脑连接性的估计值。弹力学的两个关键要素是扩散模型(张量,高阶张量,Q球等)和跟踪过程中不确定性的处理方式(确定性与概率性)。在本文中,我们调查了在形式化良好的粒子过滤框架内对扩散数据使用解析Q球模型的情况。对该方法进行了验证,并与MICCAI'09竞赛纤维杯模型和体内脑DWMRI数据上的其他跟踪算法进行了比较。

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