The extraction of contrast-filled vessels from X-ray coronary angiography (XCA) image sequence has important clinical significance for intuitively diagnosis and therapy. In this study, the XCA image sequence is regarded as a 3D tensor input, the vessel layer is regarded as a sparse tensor, and the background layer is regarded as a low-rank tensor. Using tensor nuclear norm (TNN) minimization, a novel method for vessel layer extraction based on tensor robust principal component analysis (TRPCA) is proposed. Furthermore, considering the irregular movement of vessels and the low-frequency dynamic disturbance of surrounding irrelevant tissues, the total variation (TV) regularized spatial-temporal constraint is introduced to smooth the foreground layer. Subsequently, for vessel layer images with uneven contrast distribution, a two-stage region growing (TSRG) method is utilized for vessel enhancement and segmentation. A global threshold method is used as the preprocessing to obtain main branches, and the Radon-Like features (RLF) filter is used to enhance and connect broken minor segments, the final binary vessel mask is constructed by combining the two intermediate results. The visibility of TV-TRPCA algorithm for foreground extraction is evaluated on clinical XCA image sequences and third-party dataset, which can effectively improve the performance of commonly used vessel segmentation algorithms. Based on TV-TRPCA, the accuracy of TSRG algorithm for vessel segmentation is further evaluated. Both qualitative and quantitative results validate the superiority of the proposed method over existing state-of-the-art approaches.
翻译:从X射线冠心血管动脉学(XCA)图像中提取装有对比的容器,对于直觉诊断和治疗具有重要的临床意义。在本研究中,XCA图像序列被视为3D感光输入,容器层被视为稀疏的振动,背景层被视为低压振动。利用高压核规范(TNN)最小化,一种基于强力主要成分分析(TRPCA)的新型船舶层提取方法。此外,考虑到船只流动不规则,周围无关组织发生低频动态扰动,因此引入了完全变异(TV)空间时序限制以平滑地表层。随后,对于对比分布不均匀的容器层图像,采用了两阶段增长(TSRG)方法来增强船舶的分化和分解。使用全球阈限法作为预处理的主要分支,而Radon-类似特性(RLF)过滤器用来加强和连接断裂的小段,最后的硬面容器遮罩是通过将T-ROCA的两次中间级结果结合来构建成平基的T-RO-RO-ROA的中间结果,用来提高现有S-C-CSVA的连续测测测测测测。</s>