Macular edema in retinal fundus images by a computational algorithm

César Augusto Garrido-Pino, Luis Miguel López-Montero, Leonel López-Lozano, Martha Alicia Hernández-González, Iván Cruz-Aceves
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Abstract

Background: Diabetes is a metabolic disease highly prevalent in our country that ends in disabling complications such as diabetic retinopathy and macular edema. As a high-impact socioeconomic issue, it is important to look for an early diagnostic test that also allows us to introduce a telemedicine service for the population with little access to specialized health services.

Objective: To describe the performance in discrimination of macular edema of a feature detection algorithm on retinal fundus images from diabetic patients.

Material and methods: We use a database of 266 retinal fundus images of diabetic patients and were classified in Macular Edema or Without Macular Edema by ophthalmologists' assessment and we test if the algorithm was capable of establish the presence or not of macular edema.

Results: We made 3 tests in which the standards of sensitivity, specificity and efficiency of the algorithm were increasing according to the amount of retinal fundus images in the training phase, reaching specificity values of 100%, sensitivity 84% and efficiency 91.30%.

Conclusions: Our study lays the foundation of a reliable screening method due to its high specificity value and allows not only a binary reply in the presence or not of macular edema but the clinical and topographic classification favoring the onset of treatment.

通过计算算法分析视网膜眼底图像中的黄斑水肿
背景:糖尿病是一种代谢性疾病,在我国发病率很高,最终会导致糖尿病视网膜病变和黄斑水肿等致残性并发症。作为一个影响巨大的社会经济问题,寻找一种早期诊断测试非常重要,这种测试还能让我们为很少有机会获得专业医疗服务的人群提供远程医疗服务:目的:描述一种特征检测算法在糖尿病患者视网膜眼底图像上判别黄斑水肿的性能:我们使用了一个包含 266 幅糖尿病患者视网膜眼底图像的数据库,通过眼科医生的评估将这些图像分为黄斑水肿和无黄斑水肿两种,并测试该算法是否能够确定黄斑水肿的存在:我们进行了 3 次测试,根据训练阶段视网膜眼底图像的数量,算法的灵敏度、特异性和效率标准不断提高,特异性达到 100%,灵敏度达到 84%,效率达到 91.30%:我们的研究为一种可靠的筛查方法奠定了基础,因为这种方法具有很高的特异性,不仅能对是否存在黄斑水肿做出二元回答,还能进行有利于开始治疗的临床和地形分类。
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