Department of Computer Science and Information Engineering, National Chung Cheng University, Chiayi, Taiwan.
IEEE Trans Biomed Eng. 2012 Dec;59(12):3337-47. doi: 10.1109/TBME.2012.2215034. Epub 2012 Aug 23.
Motivated by the goals of automatically extracting vessel segments and constructing retinal vascular trees with anatomical realism, this paper presents and analyses an algorithm that combines vessel segmentation and grouping of the extracted vessel segments. The proposed method aims to restore the topology of the vascular trees with anatomical realism for clinical studies and diagnosis of retinal vascular diseases, which manifest abnormalities in either venous and/or arterial vascular systems. Vessel segments are grouped using extended Kalman filter which takes into account continuities in curvature, width, and intensity changes at the bifurcation or crossover point. At a junction, the proposed method applies the minimum-cost matching algorithm to resolve the conflict in grouping due to error in tracing. The system was trained with 20 images from the DRIVE dataset, and tested using the remaining 20 images. The dataset contained a mixture of normal and pathological images. In addition, six pathological fluorescein angiogram sequences were also included in this study. The results were compared against the groundtruth images provided by a physician, achieving average success rates of 88.79% and 90.09%, respectively.
受自动提取血管段和构建具有解剖真实感的视网膜血管树的目标驱动,本文提出并分析了一种将血管段分割和分组相结合的算法。该方法旨在为临床研究和视网膜血管疾病的诊断恢复具有解剖真实感的血管树的拓扑结构,这些疾病在静脉和/或动脉血管系统中表现出异常。血管段使用扩展卡尔曼滤波器进行分组,该滤波器考虑了在分支或交叉点处曲率、宽度和强度变化的连续性。在交点处,该方法应用最小代价匹配算法来解决由于跟踪错误导致的分组冲突。该系统使用 DRIVE 数据集的 20 张图像进行训练,并使用其余的 20 张图像进行测试。数据集包含正常和病理图像的混合物。此外,本研究还包括六个病理荧光血管造影序列。将结果与医生提供的真实图像进行比较,分别达到了 88.79%和 90.09%的平均成功率。