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首页> 外文期刊>IEEE Transactions on Medical Imaging >Tractography Gone Wild: Probabilistic Fibre Tracking Using the Wild Bootstrap With Diffusion Tensor MRI
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Tractography Gone Wild: Probabilistic Fibre Tracking Using the Wild Bootstrap With Diffusion Tensor MRI

机译:野外术学:使用具有扩散张量MRI的野外引导程序进行概率纤维跟踪

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Diffusion tensor magnetic resonance imaging (DT-MRI) permits the noninvasive assessment of tissue microstructure and, with fibre-tracking algorithms, allows for the 3-D trajectories of white matter fasciculi to be reconstructed noninvasively. Probabilistic algorithms allow one to assign a “confidence” to a given reconstructed pathway—but often rely on a priori assumptions about sources of uncertainty in the data. Bootstrap methods have been proposed as a way of circumventing this problem, deriving the uncertainty from the data themselves—but acquisition times for data amenable to precise and robust bootstrapping are clinically prohibitive. By combining the wild bootstrap, recently introduced to the DT-MRI literature, with tractography, we show how confidence can be assigned to reconstructed trajectories using data collected in a fraction of the time required for regular bootstrapping. We compare in vivo wild bootstrap tracking results with regular tracking results and show that results are comparable. This approach therefore allows users who have collected data sets for use with deterministic tracking algorithms, rather than those specifically designed for bootstrapping, to be able to apply bootstrap analyses and retrospectively assign confidence to their reconstructed trajectories with minimum additional effort.
机译:扩散张量磁共振成像(DT-MRI)允许对组织的微结构进行非侵入性评估,并借助纤维跟踪算法,可以无创地重建白质束的3D轨迹。概率算法允许人们为给定的重构路径分配“置信度”,但通常依赖于有关数据不确定性来源的先验假设。自举方法已被提出来作为解决此问题的一种方法,它从数据本身中得出了不确定性,但是,适合于精确而强大的自举的数据的获取时间在临床上是禁止的。通过将最近引入DT-MRI文献中的野生自举带与束线照相术相结合,我们展示了如何使用在常规自举所需时间的一小部分中收集的数据将置信度分配给重构的轨迹。我们将体内的野生自举跟踪结果与常规跟踪结果进行了比较,并表明结果具有可比性。因此,该方法允许收集了用于确定性跟踪算法而不是专门为自举而设计的数据集的用户能够应用引导程序分析,并以最少的额外努力对其重新构造的轨迹进行置信度分配。

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