Computer Engineering Department, Quchan University of Technology, Quchan, Iran.
Department of Computer Engineering, Ferdowsi University of Mashhad, Mashhad, Iran.
Artif Intell Med. 2019 Aug;99:101702. doi: 10.1016/j.artmed.2019.07.010. Epub 2019 Jul 30.
The automated analysis of retinal images is a widely researched area which can help to diagnose several diseases like diabetic retinopathy in early stages of the disease. More specifically, separation of vessels and lesions is very critical as features of these structures are directly related to the diagnosis and treatment process of diabetic retinopathy. The complexity of the retinal image contents especially in images with severe diabetic retinopathy makes detection of vascular structure and lesions difficult. In this paper, a novel framework based on morphological component analysis (MCA) is presented which benefits from the adaptive representations obtained via dictionary learning. In the proposed Bi-level Adaptive MCA (BAMCA), MCA is extended to locally deal with sparse representation of the retinal images at patch level whereas the decomposition process occurs globally at the image level. BAMCA method with appropriately offline learnt dictionaries is adopted to work on retinal images with severe diabetic retinopathy in order to simultaneously separate vessels and exudate lesions as diagnostically useful morphological components. To obtain the appropriate dictionaries, K-SVD dictionary learning algorithm is modified to use a gated error which guides the process toward learning the main structures of the retinal images using vessel or lesion maps. Computational efficiency of the proposed framework is also increased significantly through some improvement leading to noticeable reduction in run time. We experimentally show how effective dictionaries can be learnt which help BAMCA to successfully separate exudate and vessel components from retinal images even in severe cases of diabetic retinopathy. In this paper, in addition to visual qualitative assessment, the performance of the proposed method is quantitatively measured in the framework of vessel and exudate segmentation. The reported experimental results on public datasets demonstrate that the obtained components can be used to achieve competitive results with regard to the state-of-the-art vessel and exudate segmentation methods.
视网膜图像的自动分析是一个广泛研究的领域,可以帮助在疾病的早期阶段诊断出糖尿病性视网膜病变等几种疾病。更具体地说,血管和病变的分离非常关键,因为这些结构的特征与糖尿病性视网膜病变的诊断和治疗过程直接相关。视网膜图像内容的复杂性,特别是在严重糖尿病性视网膜病变的图像中,使得血管结构和病变的检测变得困难。在本文中,提出了一种基于形态成分分析(MCA)的新框架,该框架受益于通过字典学习获得的自适应表示。在所提出的双水平自适应 MCA(BAMCA)中,MCA 扩展到局部处理斑块级别的视网膜图像的稀疏表示,而分解过程则在图像级全局进行。采用具有适当离线学习字典的 BAMCA 方法处理严重糖尿病性视网膜病变的视网膜图像,以便同时将血管和渗出性病变作为有诊断意义的形态学成分分离。为了获得适当的字典,修改了 K-SVD 字典学习算法以使用门控误差,该误差指导使用血管或病变图学习视网膜图像的主要结构的过程。通过一些改进,显著提高了所提出框架的计算效率,从而显著减少了运行时间。我们通过实验证明了如何有效地学习字典,这些字典可以帮助 BAMCA 成功地从视网膜图像中分离渗出物和血管成分,即使在严重的糖尿病性视网膜病变情况下也是如此。在本文中,除了视觉定性评估外,还在血管和渗出物分割的框架内对所提出方法的性能进行了定量测量。在公共数据集上的实验结果表明,所获得的成分可用于实现与最先进的血管和渗出物分割方法竞争的结果。