基于改进GAC模型的CTPA图像序列肺动脉分割

Zhenhong Liu, Hongfang Yuan, Huaqing Wang, Min Liu
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引用次数: 0

摘要

针对传统测地活动轮廓(GAC)模型容易产生边界泄漏、不能自适应分割的问题,提出了一种改进的GAC模型,实现了计算机层析肺血管造影(CTPA)图像序列中肺动脉的自动分割。首先,用变速C(I)代替传统GAC模型的匀速C,在改进的GAC模型上用C(I)对CTPA序列的第一帧图像进行分割,得到收敛的肺动脉轮廓;其次,利用目标区域的灰度信息将C(I)改进为V(I),使其方向可变;最后,基于改进的带有V(I)的GAC模型,实现了后续图像中肺动脉的自动分割。其中,每幅后续图像的初始轮廓就是前一幅图像的最终轮廓。这两种改进策略可以解决模型容易被过度分割的问题,并驱动曲线自适应地向内或向外向目标轮廓演化。实验结果表明,该算法能够实现肺动脉的自动分割,且与医师分割结果的符合率较高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved GAC Model-based Pulmonary Artery Segmentation of CTPA Image Sequence
Aiming at the problem that the traditional geodesic active contour (GAC) model is prone to produce boundary leakage and cannot segment adaptively, this paper proposes an improved GAC model and realizes the automatic segmentation of pulmonary artery in computed tomographic pulmonary angiography (CTPA) image sequence. Firstly, the variable velocity C(I) is used to replace the constant velocity c of the traditional GAC model, and base on the improved GAC model with C(I) to segment the first frame image of the CTPA sequence to obtain a convergent pulmonary artery contour. Secondly, the grayscale information of the target area is used to improve C(I) to V(I), which makes its direction variable. Finally, based on the improved GAC model with V(I), automatic segmentation of pulmonary artery in subsequent images is realized. Among them, the initial contour of each subsequent image is the final contour of the previous image. These two improvement strategies can solve the problem that the model is easy to be over-segmented and drive the curve evolve adaptively inward or outward to the target contour. Experimental results show that the proposed algorithm can realize automatic segmentation of pulmonary artery, and has a high coincidence rate with the results of physician segmentation.
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