首页> 外文会议>2011 8th IEEE International Symposium on Biomedical Imaging: From Nano to Macro >Intra-hepatic vessel segmentation and classification in multi-phase CT using optimized graph cuts
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Intra-hepatic vessel segmentation and classification in multi-phase CT using optimized graph cuts

机译:使用优化的图切法在多相CT中进行肝内血管分割和分类

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The segmentation and classification of the major intra-hepatic blood vessels are critical for the robust identification of the segmental anatomy of the liver. We propose a novel 4D graph-based method to segment and label the hepatic and portal veins. The algorithm uses multi-phase CT images to model the differential enhancement of the liver structures and Hessian-based vesselness likelihood to avoid the common pitfalls of graph cuts-based intra-hepatic vessel segmentation. A hybrid classification step identifies the right, middle and left hepatic, and portal veins. We tested the method on CT data from nine patients and comparatively found that the new vesselness and enhancement graph costs are effective in reducing the effects of heterogeneous noise and vessel fragmentation.
机译:主要肝内血管的分割和分类对于可靠地识别肝脏的部分解剖结构至关重要。我们提出了一种新颖的基于4D图的方法来分割和标记肝静脉和门静脉。该算法使用多相CT图像对肝脏结构的差异增强和基于Hessian的血管形成可能性进行建模,以避免基于图割的肝内血管分割的常见缺陷。混合分类步骤可识别右,中,左肝和门静脉。我们在9位患者的CT数据上测试了该方法,并比较发现,新的血管分布和增强图成本可有效减少异类噪声和血管碎片的影响。

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