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用于X射线血管造影图像血管分割的具有集成策略的递归中心线和方向感知联合学习网络

Recursive Centerline- and Direction-Aware Joint Learning Network with Ensemble Strategy for Vessel Segmentation in X-ray Angiography Images.

作者信息

Han Tao, Ai Danni, Wang Yining, Bian Yonglin, An Ruirui, Fan Jingfan, Song Hong, Xie Hongzhi, Yang Jian

机构信息

Laboratory of Beijing Engineering Research Center of Mixed Reality and Advanced Display, School of Optics and Photonics, Beijing Institute of Technology, Beijing, 100081, China.

Laboratory of Beijing Engineering Research Center of Mixed Reality and Advanced Display, School of Optics and Photonics, Beijing Institute of Technology, Beijing, 100081, China.

出版信息

Comput Methods Programs Biomed. 2022 Jun;220:106787. doi: 10.1016/j.cmpb.2022.106787. Epub 2022 Apr 1.

Abstract

BACKGROUND AND OBJECTIVE

Automatic vessel segmentation from X-ray angiography images is an important research topic for the diagnosis and treatment of cardiovascular disease. The main challenge is how to extract continuous and completed vessel structures from XRA images with poor quality and high complexity. Most existing methods predominantly focus on pixel-wise segmentation and overlook the geometric features, resulting in breaking and absence in segmentation results. To improve the completeness and accuracy of vessel segmentation, we propose a recursive joint learning network embedded with geometric features.

METHODS

The network joins the centerline- and direction-aware auxiliary tasks with the primary task of segmentation, which guides the network to explore the geometric features of vessel connectivity. Moreover, the recursive learning strategy is designed by passing the previous segmentation result into the same network iteratively to improve segmentation. To further enhance connectivity, we present a complementary-task ensemble strategy by fusing the outputs of the three tasks for the final segmentation result with majority voting.

RESULTS

To validate the effectiveness of our method, we conduct qualitative and quantitative experiments on the XRA images of the coronary artery and aorta including aortic arch, thoracic aorta, and abdominal aorta. Our method achieves F scores of 85.61±3.48% for the coronary artery, 89.02±2.89% for the aortic arch, 88.22±3.33% for the thoracic aorta, and 83.12±4.61% for the abdominal aorta.

CONCLUSIONS

Compared with six state-of-the-art methods, our method shows the most complete and accurate vessel segmentation results.

摘要

背景与目的

从X射线血管造影图像中自动分割血管是心血管疾病诊断和治疗的一个重要研究课题。主要挑战在于如何从质量差且复杂度高的X射线血管造影(XRA)图像中提取连续且完整的血管结构。大多数现有方法主要集中在逐像素分割,而忽略了几何特征,导致分割结果出现断裂和缺失。为了提高血管分割的完整性和准确性,我们提出了一种嵌入几何特征的递归联合学习网络。

方法

该网络将中心线和方向感知辅助任务与分割的主要任务相结合,引导网络探索血管连通性的几何特征。此外,通过将先前的分割结果迭代地传入同一网络来设计递归学习策略,以改进分割。为了进一步增强连通性,我们提出了一种互补任务集成策略,通过对三个任务的输出进行多数投票来融合最终分割结果。

结果

为了验证我们方法的有效性,我们对包括主动脉弓、胸主动脉和腹主动脉在内的冠状动脉和主动脉的XRA图像进行了定性和定量实验。我们的方法在冠状动脉上的F分数为85.61±3.48%,在主动脉弓上为89.02±2.89%,在胸主动脉上为88.22±3.33%,在腹主动脉上为83.12±4.61%。

结论

与六种最先进的方法相比,我们的方法显示出最完整和准确的血管分割结果。

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