Xiao Ruoxiu, Yang Jian, Ai Danni, Fan Jingfan, Liu Yue, Wang Guangzhi, Wang Yongtian
Key Laboratory of Photoelectronic Imaging Technology and System, Ministry of Education of China, School of Optics and Electronics, Beijing Institute of Technology, Beijing 100081, China ; Department of Biomedical Engineering, School of Medicine, Tsinghua University, Room C249, Beijing 100084, China.
Key Laboratory of Photoelectronic Imaging Technology and System, Ministry of Education of China, School of Optics and Electronics, Beijing Institute of Technology, Beijing 100081, China.
Comput Math Methods Med. 2015;2015:502573. doi: 10.1155/2015/502573. Epub 2015 May 18.
Seed point is prerequired condition for tracking based method for extracting centerline or vascular structures from the angiogram. In this paper, a novel seed point detection method for coronary artery segmentation is proposed. Vessels on the image are first enhanced according to the distribution of Hessian eigenvalue in multiscale space; consequently, centerlines of tubular vessels are also enhanced. Ridge point is extracted as candidate seed point, which is then refined according to its mathematical definition. The theoretical feasibility of this method is also proven. Finally, all the detected ridge points are checked using a self-adaptive threshold to improve the robustness of results. Clinical angiograms are used to evaluate the performance of the proposed algorithm, and the results show that the proposed algorithm can detect a large set of true seed points located on most branches of vessels. Compared with traditional seed point detection algorithms, the proposed method can detect a larger number of seed points with higher precision. Considering that the proposed method can achieve accurate seed detection without any human interaction, it can be utilized for several clinical applications, such as vessel segmentation, centerline extraction, and topological identification.
种子点是基于跟踪的从血管造影图像中提取中心线或血管结构方法的先决条件。本文提出了一种用于冠状动脉分割的新型种子点检测方法。首先根据多尺度空间中Hessian特征值的分布对图像上的血管进行增强;因此,管状血管的中心线也得到增强。提取脊点作为候选种子点,然后根据其数学定义进行细化。该方法的理论可行性也得到了证明。最后,使用自适应阈值对所有检测到的脊点进行检查,以提高结果的鲁棒性。使用临床血管造影图像来评估所提算法的性能,结果表明所提算法能够检测到位于大多数血管分支上的大量真实种子点。与传统种子点检测算法相比,所提方法能够以更高的精度检测到更多的种子点。考虑到所提方法无需任何人工干预即可实现准确的种子检测,它可用于多种临床应用,如血管分割、中心线提取和拓扑识别。