Department of Computer Science, University of A Coruña, 15071, A Coruña, Spain.
CITIC - Research Center of Information and Communication Technologies, University of A Coruña, 15071, A Coruña, Spain.
J Digit Imaging. 2019 Dec;32(6):947-962. doi: 10.1007/s10278-019-00235-x.
An accurate identification of the retinal arteries and veins is a relevant issue in the development of automatic computer-aided diagnosis systems that facilitate the analysis of different relevant diseases that affect the vascular system as diabetes or hypertension, among others. The proposed method offers a complete analysis of the retinal vascular tree structure by its identification and posterior classification into arteries and veins using optical coherence tomography (OCT) scans. These scans include the near-infrared reflectance retinography images, the ones we used in this work, in combination with the corresponding histological sections. The method, firstly, segments the vessel tree and identifies its characteristic points. Then, Global Intensity-Based Features (GIBS) are used to measure the differences in the intensity profiles between arteries and veins. A k-means clustering classifier employs these features to evaluate the potential of artery/vein identification of the proposed method. Finally, a post-processing stage is applied to correct misclassifications using context information and maximize the performance of the classification process. The methodology was validated using an OCT image dataset retrieved from 46 different patients, where 2,392 vessel segments and 97,294 vessel points were manually labeled by an expert clinician. The method achieved satisfactory results, reaching a best accuracy of 93.35% in the identification of arteries and veins, being the first proposal that faces this issue in this image modality.
准确识别视网膜动脉和静脉是自动计算机辅助诊断系统发展中的一个重要问题,该系统有助于分析糖尿病或高血压等影响血管系统的不同相关疾病。所提出的方法通过使用光学相干断层扫描(OCT)扫描对视网膜血管树结构进行全面分析,并对其进行分类为动脉和静脉。这些扫描包括近红外反射视网膜图像,这是我们在这项工作中使用的,结合相应的组织学切片。该方法首先对血管树进行分割,并识别其特征点。然后,使用全局强度特征(GIBS)测量动脉和静脉之间的强度分布差异。k-均值聚类分类器使用这些特征来评估所提出方法的动脉/静脉识别潜力。最后,应用后处理阶段利用上下文信息纠正错误分类,从而最大限度地提高分类过程的性能。该方法使用从 46 位不同患者中检索到的 OCT 图像数据集进行了验证,其中由一位专家临床医生手动标记了 2392 个血管段和 97294 个血管点。该方法取得了令人满意的结果,在识别动脉和静脉方面的最佳准确性达到 93.35%,是首次在这种图像模式下解决此问题的方法。