Diabetic retinopathy (DR) is the result of a complication of diabetes affecting the retina. It can cause blindness, if left undiagnosed and untreated. An ophthalmologist performs the diagnosis by screening each patient and analyzing the retinal lesions via ocular imaging. In practice, such analysis is time-consuming and cumbersome to perform. This paper presents a model for automatic DR classification on eye fundus images. The approach identifies the main ocular lesions related to DR and subsequently diagnoses the illness. The proposed method follows the same workflow as the clinicians, providing information that can be interpreted clinically to support the prediction. A subset of the kaggle EyePACS and the Messidor-2 datasets, labeled with ocular lesions, is made publicly available. The kaggle EyePACS subset is used as a training set and the Messidor-2 as a test set for lesions and DR classification models. For DR diagnosis, our model has an area-under-the-curve, sensitivity, and specificity of 0.948, 0.886, and 0.875, respectively, which competes with state-of-the-art approaches.
翻译:眼科医生通过对每个病人进行检查和分析视网膜损伤,通过视觉成像分析视网膜损伤,进行诊断。实际上,这种分析耗时繁琐,难以进行。本文为眼睛基金图象自动进行DR分类提供了一个模型。该方法确定了与DR有关的主要眼部损伤,并随后诊断了病情。拟议方法遵循临床医生的工作流程,提供可以临床解释的信息以支持预测。卡格格莱眼视波控制系统和Messidor-2数据集中贴有眼损伤标签的一组被公诸于众。卡格格莱眼视波科系统集用作训练组,梅西多尔-2作为腐蚀和DR分类模型的测试组。关于DR诊断,我们的模式采用与临床医生相同的流程,敏感度和特征分别为0.48886和0.875,它们与州-区-区-区-区-区-区-区-区-区-区-区-区-区-区-区-区-区-区-区-区-区-区-区-区-区-区-区-区-区标标标。