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Segmentation of Cerebral Vascular Structures Using an Active Contour Model

机译:使用主动轮廓模型分割脑血管结构

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Segmentation of brain blood vessels is essential in medical diagnostic applications. In this study, a new active contour model (ACM) implemented by the level-set framework is proposed for segmenting vessels from TOF-MRA data. The energy function of the proposed model, combining region intensity and boundary information, is composed of two region terms, one boundary term and one penalty term. The global threshold embedded into the first term is used to guide the extraction of thick vessels. While, the dynamic intensity threshold in the second term is employed to obtain the tiny ones. The boundary term is used to drive the contours to evolve towards the boundaries with high gradients. And lastly, the penalty term is used to avoid re-initializing the level set function. Compared with the global threshold based method and localized hybrid level-set method, experiments implemented on the segmentation of cerebral vessels present that our method is not only able to achieve better Dice Similarity Coefficient, but also able to extract whole cerebral vessel trees, including the thin vessels.
机译:脑血管的分割在医学诊断应用中至关重要。在这项研究中,提出了一种由水平集框架实现的新的主动轮廓模型(ACM),用于从TOF-MRA数据中分割血管。该模型的能量函数结合了区域强度和边界信息,由两个区域项组成,一个边界项和一个惩罚项。嵌入第一项的全局阈值用于指导较厚血管的提取。同时,第二项中的动态强度阈值用于获得微小的阈值。边界项用于驱动轮廓向高梯度边界扩展。最后,惩罚项用于避免重新初始化级别设置功能。与基于全局阈值的方法和局部混合水平集方法相比,对脑血管进行分割的实验表明,我们的方法不仅能够获得更好的骰子相似性系数,而且还能够提取整个脑血管树,包括细血管。

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