论文标题
X射线冠状动脉造影图像序列的前景提取和血管分割的强大实施
Robust Implementation of Foreground Extraction and Vessel Segmentation for X-ray Coronary Angiography Image Sequence
论文作者
论文摘要
从X射线冠状动脉造影术(XCA)图像序列中提取对比度的血管对于直觉诊断和治疗具有重要的临床意义。在这项研究中,XCA图像序列被认为是3D张量输入,容器层被视为稀疏张量,并且背景层被视为低级数张量。使用张量的核标准(TNN)最小化,提出了一种基于张量强的主成分分析(TRPCA)的血管层提取的新方法。此外,考虑到血管的不规则运动以及周围无关组织的低频动态干扰,引入了总变化(TV)正规化时空约束,以平滑前景层。随后,对于具有不平衡对比度分布的血管层图像,将两阶段的区域生长(TSRG)方法用于血管增强和分割。全局阈值方法用作获得主分支的预处理,并使用类似ra的特征(RLF)滤波器来增强和连接损坏的小段,最终的二进制容器掩码是通过结合两个中间结果来构建的。在临床XCA图像序列和第三方数据集上评估了TV-TRPCA算法用于前景提取的可见性,这可以有效地改善常用的血管分割算法的性能。基于TV-TRPCA,进一步评估了TSRG算法对血管分割的准确性。定性和定量结果都证明了所提出的方法优于现有的最新方法。
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.