基于医学CT图像的主动脉夹层视觉三维重建

Xiaojie Duan, Dandan Chen, Jianming Wang, Meichen Shi, Qingliang Chen, He Zhao, Ruixue Zuo, Xiuyan Li, Qi Wang
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引用次数: 6

摘要

随着CT技术的飞速发展,尤其是CT机分辨率的提高和切片量的急剧增加,从海量的医学图像数据中提取并三维显示主动脉夹层成为一项具有挑战性的任务。本文采用结合空间连续性的主动形状模型实现主动脉夹层的自动重建。首先,从大数据样本库中标记主动脉特征点,注册训练样本,建立统计模型。同时,利用以地标为中心的方阵对灰度向量进行采样。采用CT序列间空间连续性的方法自动调整初始形状的姿态参数。对比实验证明,该算法可以在不选择感兴趣区域的情况下实现主动脉的准确分割,且其分割准确率高于GVF snake算法(主动脉弓分割准确率为93.29%比87.54%,降主动脉分割准确率为94.30%比89.25%)。采用Hessian矩阵和贝叶斯理论提取主动脉夹层膜。最后,基于射线投射法的体绘制完成主动脉夹层的三维可视化,辅助医生进行临床诊断,提高手术成功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual Three-Dimensional Reconstruction of Aortic Dissection Based on Medical CT Images
With the rapid development of CT technology, especially the higher resolution of CT machine and a sharp increase in the amount of slices, to extract and three-dimensionally display aortic dissection from the huge medical image data became a challenging task. In this paper, active shape model combined with spatial continuity was adopted to realize automatic reconstruction of aortic dissection. First, we marked aortic feature points from big data sample library and registered training samples to build a statistical model. Meanwhile, gray vectors were sampled by utilizing square matrix, which set the landmarks as the center. Posture parameters of the initial shape were automatically adjusted by the method of spatial continuity between CT sequences. The contrast experiment proved that the proposed algorithm could realize accurate aorta segmentation without selecting the interested region, and it had higher accuracy than GVF snake algorithm (93.29% versus 87.54% on aortic arch, 94.30% versus 89.25% on descending aorta). Aortic dissection membrane was extracted via Hessian matrix and Bayesian theory. Finally, the three-dimensional visualization of the aortic dissection was completed by volume rendering based on the ray casting method to assist the doctors in clinical diagnosis, which contributed to improving the success rate of the operations.
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