Diabetic Retinopathy (DR) has emerged as a major cause of preventable blindness in recent times. With timely screening and intervention, the condition can be prevented from causing irreversible damage. The work introduces a state-of-the-art Ordinal Regression-based DR Detection framework that uses the APTOS-2019 fundus image dataset. A widely accepted combination of preprocessing methods: Green Channel (GC) Extraction, Noise Masking, and CLAHE, was used to isolate the most relevant features for DR classification. Model performance was evaluated using the Quadratic Weighted Kappa, with a focus on agreement between results and clinical grading. Our Ordinal Regression approach attained a QWK score of 0.8992, setting a new benchmark on the APTOS dataset.
翻译:糖尿病视网膜病变(DR)近年来已成为可预防性失明的主要原因。通过及时筛查和干预,可以防止该疾病造成不可逆的损伤。本研究提出了一种基于序数回归的先进DR检测框架,采用APTOS-2019眼底图像数据集。通过广泛采用的预处理方法组合——绿通道提取、噪声掩蔽和CLAHE——来分离出DR分类中最相关的特征。模型性能使用二次加权Kappa进行评估,重点关注结果与临床分级之间的一致性。我们的序数回归方法获得了0.8992的QWK分数,为APTOS数据集设立了新的基准。