Universidad de las Américas-Puebla, Puebla, Mexico.
Instituto Nacional de Astrofísica, Óptica y Electrónica, Puebla, Mexico.
Comput Med Imaging Graph. 2015 Sep;44:41-53. doi: 10.1016/j.compmedimag.2015.07.001. Epub 2015 Jul 14.
Diabetes increases the risk of developing any deterioration in the blood vessels that supply the retina, an ailment known as Diabetic Retinopathy (DR). Since this disease is asymptomatic, it can only be diagnosed by an ophthalmologist. However, the growth of the number of ophthalmologists is lower than the growth of the population with diabetes so that preventive and early diagnosis is difficult due to the lack of opportunity in terms of time and cost. Preliminary, affordable and accessible ophthalmological diagnosis will give the opportunity to perform routine preventive examinations, indicating the need to consult an ophthalmologist during a stage of non proliferation. During this stage, there is a lesion on the retina known as microaneurysm (MA), which is one of the first clinically observable lesions that indicate the disease. In recent years, different image processing algorithms, which allow the detection of the DR, have been developed; however, the issue is still open since acceptable levels of sensitivity and specificity have not yet been reached, preventing its use as a pre-diagnostic tool. Consequently, this work proposes a new approach for MA detection based on (1) reduction of non-uniform illumination; (2) normalization of image grayscale content to improve dependence of images from different contexts; (3) application of the bottom-hat transform to leave reddish regions intact while suppressing bright objects; (4) binarization of the image of interest with the result that objects corresponding to MAs, blood vessels, and other reddish objects (Regions of Interest-ROIs) are completely separated from the background; (5) application of the hit-or-miss Transformation on the binary image to remove blood vessels from the ROIs; (6) two features are extracted from a candidate to distinguish real MAs from FPs, where one feature discriminates round shaped candidates (MAs) from elongated shaped ones (vessels) through application of Principal Component Analysis (PCA); (7) the second feature is a count of the number of times that the radon transform of the candidate ROI, evaluated at the set of discrete angle values {0°, 1°, 2°, …, 180°}, is characterized by a valley between two peaks. The proposed approach is tested on the public databases DiaretDB1 and Retinopathy Online Challenge (ROC) competition. The proposed MA detection method achieves sensitivity, specificity and precision of 92.32%, 93.87% and 95.93% for the diaretDB1 database and 88.06%, 97.47% and 92.19% for the ROC database. Theory, results, challenges and performance related to the proposed MA detecting method are presented.
糖尿病会增加供应视网膜的血管恶化的风险,这种疾病被称为糖尿病性视网膜病变(DR)。由于这种疾病没有症状,只能由眼科医生诊断。然而,眼科医生的数量增长低于糖尿病患者的数量增长,因此由于时间和成本方面的机会有限,难以进行预防和早期诊断。初步的、负担得起的和可获得的眼科诊断将有机会进行常规预防检查,并表明在非增殖阶段需要咨询眼科医生。在此阶段,视网膜上会出现称为微动脉瘤(MA)的病变,这是表明疾病存在的最早的临床可观察到的病变之一。近年来,已经开发出不同的图像处理算法来检测 DR,但由于尚未达到可接受的灵敏度和特异性水平,因此该问题仍然存在,这阻止了其作为预诊断工具的使用。因此,这项工作提出了一种基于(1)减少非均匀照明;(2)归一化图像灰度内容以提高来自不同上下文的图像的依赖性;(3)应用底部帽变换以保持红色区域完整,同时抑制明亮物体;(4)对感兴趣的图像进行二值化,使得对应于 MA、血管和其他红色物体(感兴趣区域-ROI)的对象完全与背景分离;(5)在二进制图像上应用 hit-or-miss 变换以从 ROI 中去除血管;(6)从候选对象中提取两个特征以区分真正的 MA 和 FP,其中一个特征通过应用主成分分析(PCA)将候选对象(MA)与拉长形状的血管(血管)区分开来;(7)第二个特征是候选 ROI 的 radon 变换在离散角度值{0°,1°,2°,…,180°}的集合上评估时特征为两个峰之间的谷的次数。所提出的方法在公共数据库 DiaretDB1 和视网膜在线挑战赛(ROC)竞赛上进行了测试。所提出的 MA 检测方法在 DiaretDB1 数据库上的灵敏度、特异性和精度分别为 92.32%、93.87%和 95.93%,在 ROC 数据库上的灵敏度、特异性和精度分别为 88.06%、97.47%和 92.19%。介绍了与所提出的 MA 检测方法相关的理论、结果、挑战和性能。