论文标题
X射线冠状动脉造影术中用于超分辨率血管提取的稳健PCA展开网络
Robust PCA Unrolling Network for Super-resolution Vessel Extraction in X-ray Coronary Angiography
论文作者
论文摘要
尽管越来越多地采用了鲁棒的PCA从X射线冠状动脉造影(XCA)图像中提取血管,但挑战性的问题,例如效率低下的血管 - 符号建模,嘈杂和动态的背景伪像以及高计算成本仍然无法解决。因此,我们提出了一个新型的鲁棒PCA展开网络,具有稀疏特征选择,用于超分辨率XCA容器成像。被嵌入在贴合的时空超级分辨率框架中,该框架建立在汇总层和卷积长的短期短期记忆网络上,不仅可以在网络训练中逐渐逐渐修剪XCA的XCA逐渐逐渐逐渐学习,而且还可以在网络训练中逐渐学习,还可以迭代地学习并选择高级的Spatiotemmemalals语言信息。实验结果表明,该方法通过恢复异质血管的强度和几何形状曲线在复杂且动态的背景下的强度和几何形状曲线,尤其是在血管网络及其远端血管的成像中显着优于最先进的方法。
Although robust PCA has been increasingly adopted to extract vessels from X-ray coronary angiography (XCA) images, challenging problems such as inefficient vessel-sparsity modelling, noisy and dynamic background artefacts, and high computational cost still remain unsolved. Therefore, we propose a novel robust PCA unrolling network with sparse feature selection for super-resolution XCA vessel imaging. Being embedded within a patch-wise spatiotemporal super-resolution framework that is built upon a pooling layer and a convolutional long short-term memory network, the proposed network can not only gradually prune complex vessel-like artefacts and noisy backgrounds in XCA during network training but also iteratively learn and select the high-level spatiotemporal semantic information of moving contrast agents flowing in the XCA-imaged vessels. The experimental results show that the proposed method significantly outperforms state-of-the-art methods, especially in the imaging of the vessel network and its distal vessels, by restoring the intensity and geometry profiles of heterogeneous vessels against complex and dynamic backgrounds.