Application of Transfer Learning Approach for Diabetic Retinopathy Classification

Nasmin Jiwani, Ketan Gupta, Md. Haris Uddin Sharif, Ripon Datta, Farhan Habib, Neda Afreen
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Abstract

Diabetes is a disorder of the metabolism caused by high glucose levels in the body. Diabetes causes eye deficiency, also known as Diabetic Retinopathy (DR), which causes significant vision loss over time. Diabetes patients’ vision can be saved if DR is detected and diagnosed early. Microaneurysms, haemorrhages, and exudates are prior signs of DR that emerge on the surface of retina. Nevertheless, diagnosing DR is a challenging problem that necessitates the services of an experienced ophthalmologist. Using an automated classifier, an artificial intelligence based deep learning can assist the ophthalmologist in providing an expert advice related to the assessment of the DR. A large volume of data is required to effectively train the model for the classification of DR, that is a major constraint in the DR area. Transfer learning is a methodwhich could assist in combating image limitation. The central idea behind transfer learning approach is that, this framework was already trained on large set of images which could be fine-tuned to fit for the required set of data. This paper applied transfer learning based VGG16 and InceptionV3 model for the DR classification on a public benchmark IDRiD dataset (Indian Diabetic Retinopathy Image Dataset). These models are used to address the problem and to maximize the results.
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迁移学习方法在糖尿病视网膜病变分类中的应用
糖尿病是一种由体内高血糖引起的代谢紊乱。糖尿病会导致视力不足,也被称为糖尿病视网膜病变(DR),随着时间的推移会导致严重的视力丧失。如果早期发现和诊断DR,可以挽救糖尿病患者的视力。视网膜表面出现的微动脉瘤、出血和渗出物是DR的前兆。然而,诊断DR是一个具有挑战性的问题,需要有经验的眼科医生的服务。使用自动分类器,基于人工智能的深度学习可以帮助眼科医生提供与DR评估相关的专家建议。DR分类需要大量的数据来有效训练模型,这是DR领域的主要制约因素。迁移学习是一种可以帮助克服图像限制的方法。迁移学习方法背后的核心思想是,该框架已经在大量图像上进行了训练,这些图像可以进行微调以适应所需的数据集。本文将基于迁移学习的VGG16和InceptionV3模型应用于公共基准IDRiD数据集(印度糖尿病视网膜病变图像数据集)的DR分类。这些模型用于解决问题并最大化结果。
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