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Bayesian Tracking of Tubular Structures and Its Application to Carotid Arteries in CTA

机译:贝叶斯管结构的跟踪及其在CTA颈动脉中的应用

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摘要

This paper presents a Bayesian framework for tracking of tubular structures such as vessels. Compared to conventional tracking schemes, its main advantage is its non-deterministic character, which strongly increases the robustness of the method. A key element of our approach is a dedicated observation model for tubular structures in regions with varying intensities. Furthermore, we show how the tracking method can be used to obtain a probabilistic segmentation of the tracked tubular structure. The method has been applied to track the internal carotid artery from CT angiography data of 14 patients (28 carotids) through the skull base. This is a challenging problem, owing to the close proximity of bone, overlap in intensity values of lumen voxels and (partial volume) bone voxels, and the tortuous path of the vessels. The tracking was successful in 25 cases, and the extracted path were found to be close (< 1.0mm) to manually traced paths by two observers.
机译:本文提出了一种贝叶斯框架,用于跟踪管状结构(例如容器)。与传统的跟踪方案相比,它的主要优点是其不确定性,这大大提高了该方法的鲁棒性。我们方法的一个关键要素是针对强度变化区域中的管状结构的专用观测模型。此外,我们展示了如何使用跟踪方法来获得被跟踪管状结构的概率分割。该方法已被应用于通过颅底从14例患者(28个颈动脉)的CT血管造影数据中跟踪颈内动脉。这是一个具有挑战性的问题,这是由于骨骼的紧密接近,管腔体素和(部分体积)骨素的强度值重叠以及血管的曲折路径。在25个案例中,跟踪成功,并且发现提取的路径与两名观察员发现的路径接近(<1.0mm)与手动跟踪的路径。

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