Automated Slice-Based Artery Identification in Various Field-of-View CTA Scans

David Major, A. A. Novikov, M. Wimmer, J. Hladůvka, K. Bühler
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引用次数: 2

Abstract

Automated identification of main arteries in Computed Tomography Angiography (CTA) scans plays a key role in the initialization of vessel tracking algorithms. Automated vessel tracking tools support physicians in vessel analysis and make their workflow time-efficient. We present a fully-automated framework for identification of five main arteries of three different body regions in various field-of-view CTA scans. Our method detects the two common iliac arteries, the aorta and the two common carotid arteries and delivers seed positions in them. After the field-of-view of a CTA scan is identified, artery candidate positions are regressed slice-wise and the best candidates are selected by Naive Bayes classification. Final artery seed positions are detected by picking the most optimal path over the artery classification results from slice to slice. Our method was evaluated on 20 CTA scans with various field-of-views. The high detection performance on different arteries shows its generality and future applicability for automated vessel analysis systems.
自动切片动脉识别在各种视野CTA扫描
计算机断层血管造影(CTA)扫描中主动脉的自动识别在血管跟踪算法的初始化中起着关键作用。自动化血管跟踪工具支持医生进行血管分析,使他们的工作流程更加省时。我们提出了一个全自动框架,用于在不同视场CTA扫描中识别三个不同身体区域的五条主要动脉。我们的方法检测两条髂总动脉,主动脉和两条颈总动脉并在其中放置种子位置。在CTA扫描的视野被识别后,动脉候选位置被逐片回归,并通过朴素贝叶斯分类选择最佳候选。最终的动脉种子位置是通过在动脉分类结果中选择最优路径来检测的。我们的方法在20个不同视场的CTA扫描上进行了评估。对不同动脉的高检测性能显示了其在自动化血管分析系统中的通用性和未来的适用性。
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