School of Mechanical Engineering, Shanghai Jiao Tong University, Shanghai, China.
State Key Laboratory of Mechanical System and Vibration, Shanghai Jiao Tong University, Shanghai, China.
Proc Inst Mech Eng H. 2023 May;237(5):557-570. doi: 10.1177/09544119231167926. Epub 2023 Apr 13.
Coronary centerline extraction is an essential technique for X-ray coronary angiography (XCA) image analysis, which provides qualitative and quantitative guidance for percutaneous coronary intervention (PCI). In this paper, an online deep reinforcement learning method for coronary centerline extraction is proposed based on the prior vascular skeleton. Firstly, with XCA image preprocessing (foreground extraction and vessel segmentation) results, the improved image thinning algorithm is used to rapidly extract the preliminary vascular skeleton network. On this basis, according to the spatial-temporal and morphological continuity of the angiography image sequence, the connectivity of different branches is determined using k-means clustering, and the vessel segments are then grouped, screened, and reconnected to obtain the aorta and its major branches. Finally, using the previous results as prior information, an online Deep Q-Network (DQN) reinforcement learning method is proposed to optimize each branch simultaneously. It comprehensively considers grayscale intensity and eigenvector continuity to achieve the combination of data-driven and model-driven without pre-training. Experimental results on clinical images and the third-party dataset demonstrate that the proposed method can accurately extract, restructure, and optimize the centerline of XCA images with a higher overall accuracy than the existing state-of-the-art methods.
冠状动脉中心线提取是 X 射线冠状动脉造影 (XCA) 图像分析的一项基本技术,为经皮冠状动脉介入治疗 (PCI) 提供定性和定量指导。在本文中,我们提出了一种基于先验血管骨架的在线深度强化学习方法用于冠状动脉中心线提取。首先,利用 XCA 图像预处理(前景提取和血管分割)的结果,采用改进的图像细化算法快速提取初步的血管骨架网络。在此基础上,根据血管造影图像序列的时空和形态连续性,使用 k-means 聚类确定不同分支的连通性,然后对血管段进行分组、筛选和重新连接,以获得主动脉及其主要分支。最后,利用先前的结果作为先验信息,提出一种在线深度 Q 网络 (DQN) 强化学习方法来同时优化每个分支。该方法综合考虑灰度强度和特征向量连续性,实现了数据驱动和模型驱动的结合,无需预训练。对临床图像和第三方数据集的实验结果表明,与现有的最先进方法相比,该方法能够准确地提取、重构和优化 XCA 图像的中心线,整体准确性更高。