基于血管能量函数和半径变球模型的肺血管和结节分割

Qingxiang Zhu, H. Xiong, Xiaoqian Jiang
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引用次数: 3

摘要

为了帮助肺癌的早期诊断,本文对肺结节和血管的检测与分割进行了研究。由于肺部血管的形状和数量的变化可以反映肺癌的进展,因此肺结节和血管的自动分割是胸部计算机辅助诊断(CAD)系统所需要的。该算法由四个步骤组成:预分割、结构增强、主动进化和细化。通过对三维区域生长的初始提取,通过多尺度滤波增强血管的线状结构和结节的斑点状结构。特别地,主动演化致力于用强度、梯度和结构的血管能量函数(VEF)进行最大似然估计。VEF的目的是通过适应结节血管区域的所有线索分布来形成精确的提取。在此基础上,采用变半径球模型对血管轮廓进行细化,使其半径仅为血管中心线的平滑度。最后,该方案经过充分的评估,超越了现有的肺图像数据库联盟(LIDC)数据库和DICOM图像技术。
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Pulmonary Blood Vessels and Nodules Segmentation via Vessel Energy Function and Radius-Variable Sphere Model
To help diagnose the early stage of lung cancer, this paper studies pulmonary nodule and blood vessel detection and segmentation. Owing to the fact that variation in the shape and number of pulmonary blood vessels would reveal the progress of lung cancer, automatic segmentation of pulmonary nodules and blood vessels is desirable for chest computer-aided diagnosis (CAD) systems. The proposed algorithm is composed of four steps: pre-segmentation, structure enhancement, active evolution, and refinement. Through the initial extraction of 3D region growing, the line structure of vessel and blob-like structure of nodule would be enhanced by multi-scale filtering. In particular, the active evolution is devoted to the maximum likelihood estimation with a vessel energy function (VEF) of intensity, gradient, and structure. The VEF aims to shape a precise extraction by adapting all the cue distribution along the vessel region from nodules. Furthermore, a radius-variable sphere model is adopted to refine the contour with the smoothness of radius alone the centerline of the blood vessel. Finally, the proposed scheme is sufficiently evaluated to exceed the existing techniques on lung image database consortium (LIDC) database and DICOM images.
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