Detection of Multi-Class Glaucoma Using Active Contour Snakes and Support Vector Machine

F. Zulfira, S. Suyanto
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引用次数: 1

Abstract

There are several ways to detect glaucoma, one of the most accurate is the presence of peripapillary atrophy (PPA). PPA is located outside the optic disc around the optic nerve head (ONH) and sometimes looks vague which can cause misclassification, so other parameters that can detect glaucoma are needed. The calculation of the optic cup to disc ratio (CDR) is mostly done for glaucoma detection so that CDR can be considered in addition to the presence of PPA to improve classification results. In this paper, a multi-class glaucoma detection is developed using an active contour snake to get the value of the optic cup and optic disc to measure CDR and a support vector machine (SVM) for classification. Glaucoma is categorized into three classes: non-glaucoma, mild-glaucoma, and severe-glaucoma. Hence, the model can detect its severity which determines further treatment. Evaluation using two datasets of 210 retinal fundus images (165 train and 45 test) informs that the model reaches high accuracies of 95%.
基于活动轮廓蛇和支持向量机的多类别青光眼检测
有几种方法可以检测青光眼,其中最准确的是乳头周围萎缩(PPA)的存在。PPA位于视神经头(ONH)周围的视盘外,有时看起来模糊,可能导致分类错误,因此需要其他可以检测青光眼的参数。光学杯盘比(CDR)的计算多用于青光眼的检测,在考虑PPA存在的基础上考虑CDR,以提高分类结果。本文提出了一种多类别青光眼检测方法,利用活动轮廓蛇获取视杯和视盘的值来测量CDR,并利用支持向量机(SVM)进行分类。青光眼分为三类:非青光眼、轻度青光眼和重度青光眼。因此,该模型可以检测其严重程度,从而确定进一步的治疗。使用210张视网膜眼底图像的两个数据集(165张训练图像和45张测试图像)进行评估,发现该模型达到了95%的高精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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