用于识别和分类视网膜疾病的深度学习

Mohamed Berrimi, A. Moussaoui
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引用次数: 6

摘要

视力和眼睛健康是人类生命中最重要的东西之一,它需要得到保护才能维持个体的生命。诸如CNV、DRUSEN、AMD、DME等眼病主要是由于视网膜的损伤引起的,由于视网膜的损伤是在后期发现的,几乎没有机会逆转视力和治愈,这意味着患者将部分甚至完全失去视力。光学相干断层扫描是一种先进的扫描设备,可以通过测量生物组织内部结构的光学反射来进行非侵入性的横断面成像。这将有助于眼科医生清楚地看到眼睛的后部,并在早期阶段确定视网膜,黄斑和视神经的损害。本研究的目的是提出一种基于深度学习和迁移学习的新型分类模型,利用光学相干断层扫描(OCT)设备获取的视网膜图像对不同的视网膜疾病进行自动分类。我们提出了一种深度CNN架构,并将得到的结果与预先训练的模型(如Inception V3和VGG-16)进行了比较,我们提出的CNN架构在测试集上的准确率为98.5%,Inception V3模型的准确率高达99.27%,而VGG-16的准确率仅为53%。我们通过增加更多的卷积层和正则化项来改进VGG-16架构,获得了高达93.5%的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning for identifying and classifying retinal diseases
Vision and eye health are one of the most crucial things in human life, it needs to be preserved to maintain the life of the individuals. Eye diseases such as CNV, DRUSEN, AMD, DME are mainly caused due to the damages of the retina, and since the retina is damaged and discovered at late stages, there is almost no chance to reverse vision and cure it, which means that the patient will lose the power of vision partially and maybe entirely. Optical Coherence Tomography is an advanced scanning device that can perform non-invasive cross-sectional imaging of internal structures in biological tissues by measuring their optical reflections. which will help the ophthalmologists to take a clear look on the back of the eye and determine at early stages the damage caused to the retina, macula, and optic nerve. The aim of this study is to propose a novel classification model based on deep learning and transfer learning to automatically classify the different retinal diseases using retinal images obtained from Optical Coherence Tomography (OCT) device. We propose a deep CNN architecture and compared the obtained results with pretrained models such as Inception V3 and VGG-16, our proposed CNN architecture gave an accuracy of 98.5 % and Inception V3 model gave an accuracy up to 99.27 % on the test set while VGG-16 gave only 53% we modified VGG-16 architecture by adding more convolution layers and regularization terms to obtain a result up to 93.5%.
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