A level set based predictor-corrector algorithm for vessel segmentation

Wei Yan, T. Zhu, Yongming Xie, Wai-Man Pang, J. Qin, Jianhuang Wu, P. Heng
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Abstract

Vessel segmentation is an essential task in many computer-aided medical systems. However, the topology complexity of vascular structures and the intensity inhomogeneity of angiogram make it a challenging problem. We propose a level set based predictor-corrector algorithm to meet these challenges. In the predictor step, the overall contour of vessel structures is delineated by piecewise constant (PC) model, which is insensitive to the initial contour and adaptive to the complex morphological variations of vessel structures. In the corrector step, the segmented results are refined by an improved local binary fitting (LBF) model, which can efficiently deal with intensity inhomogeneity in the angiogram, especially in the distal part of the vessels. Compared to original LBF model, our approach can avoid the emergence of new contour in non-vascular regions. The proposed algorithm takes both global and local information into consideration and combines the advantages of PC model and LBF model. Experimental results on MRA images demonstrate the feasibility of our algorithm.
基于水平集的血管分割预测校正算法
在许多计算机辅助医疗系统中,血管分割是一项重要的任务。然而,血管结构的拓扑复杂性和血管成像的强度不均匀性使其成为一个具有挑战性的问题。我们提出了一种基于水平集的预测校正算法来应对这些挑战。在预测步骤中,采用分段常数(PC)模型描绘血管结构的总体轮廓,该模型对初始轮廓不敏感,可适应血管结构复杂的形态变化。在校正步骤中,通过改进的局部二值拟合(LBF)模型对分割结果进行细化,该模型可以有效地处理血管图像中的强度不均匀性,特别是在血管远端部分。与原来的LBF模型相比,我们的方法可以避免在非血管区域出现新的轮廓。该算法同时考虑了全局信息和局部信息,结合了PC模型和LBF模型的优点。在MRA图像上的实验结果验证了该算法的可行性。
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