Multi Label Classification Of Retinal Disease On Fundus Images Using AlexNet And VGG16 Architectures

Reyhansyah Prawira, A. Bustamam, P. Anki
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Abstract

Diseases of the eye have the potential to cause blindness in sufferers. There have been many types of diseases that exist in the human eye. Some examples of diseases that exist in the eye include Diabetic Retinopathy (DR), Myopia (MA), Optic Disc Cupping (ODC). Fundus images help medical personnel to see what diseases are in the eyes of people with certain diseases. In one fundus image there may be more than one disease in the eye. The research that will be carried out is to find out what diseases are contained in the fundus image by using multi-label classification. The research will be conducted using a deep learning method using the AlexNet and VGG16 architectures which will then be compared between the two models. The data used are fundus images on DR, MA, and ODC diseases as many as 1133 data. The results obtained in this study indicate that the AlexNet model is better than the VGG16 model in performing multi-label classification on fundus images.
基于AlexNet和VGG16架构的眼底图像视网膜疾病多标签分类
眼部疾病有可能导致患者失明。在人眼中存在着许多类型的疾病。一些存在于眼睛的疾病包括糖尿病视网膜病变(DR),近视(MA),视盘拔罐(ODC)。眼底图像帮助医务人员了解患有某些疾病的人的眼睛是什么疾病。在一张眼底图像中,眼睛可能存在不止一种疾病。我们将进行的研究是通过多标签分类来发现眼底图像中包含哪些疾病。研究将使用使用AlexNet和VGG16架构的深度学习方法进行,然后在两个模型之间进行比较。使用的数据是DR、MA和ODC疾病的眼底图像,数据多达1133张。本研究结果表明,AlexNet模型在对眼底图像进行多标签分类方面优于VGG16模型。
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