Wang Chunliang, Smedby Orjan
CMIV, Linköping University Hospital, SE-58185 Linköping, Sweden.
Med Image Comput Comput Assist Interv. 2007;10(Pt 1):311-8. doi: 10.1007/978-3-540-75757-3_38.
We propose a new segmentation algorithm based on competing fuzzy connectedness theory, which is then used for visualizing coronary arteries in 3D CT angiography (CTA) images. The major difference compared to other fuzzy connectedness algorithms is that an additional data structure, the connectedness tree, is constructed at the same time as the seeds propagate. In preliminary evaluations, accurate result have been achieved with very limited user interaction. In addition to improving computational speed and segmentation results, the fuzzy connectedness tree algorithm also includes automated extraction of the vessel centerlines, which is a promising approach for creating curved plane reformat (CPR) images along arteries' long axes.
我们提出了一种基于竞争模糊连通性理论的新分割算法,该算法随后用于在三维CT血管造影(CTA)图像中可视化冠状动脉。与其他模糊连通性算法相比,主要区别在于在种子传播的同时构建了一种额外的数据结构——连通性树。在初步评估中,通过非常有限的用户交互就取得了准确的结果。除了提高计算速度和分割结果外,模糊连通性树算法还包括血管中心线的自动提取,这是一种沿动脉长轴创建曲面重组(CPR)图像的有前景的方法。