基于眼底颜色数据的深度学习和机器学习算法的糖尿病视网膜病变实时分析

Siddharth Gupta, A. Panwar, Akanksha Kapruwan, Nisha Chaube, Manav Chauhan
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引用次数: 7

摘要

糖尿病是一种迅速蔓延的疾病,对人体器官如肾脏、肺、心脏、眼睛等具有破坏性后果。糖尿病视网膜病变(DR)是一种由持续的糖尿病引起的疾病,它损害了眼睛中运送血液的小血管和组织。这种疾病的特点是在视网膜区域产生被称为微动脉瘤的膨胀物,如果忽视它,可能会对眼睛的血管造成不可逆转的损害,最终导致失明。在疾病的早期阶段,不会出现这样的临床表现。因此,定期和及时的检查是最重要的。然而,人工识别糖尿病视网膜病变是费时的,容易出现人为错误。在上述研究中,处理后的色底色数据集扫描被传递给多个深度学习(DL)模型来学习特征。这些模型对来自数千个类别的数百万张不同图像进行了训练。最后,使用几个机器学习分类器根据收集到的特征对病变进行分类。提取结果显示了非常引人注目的性能。这使专家能够创建完全解决将未识别扫描分类到正确的类或类别的问题的体系结构。
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Real Time Analysis of Diabetic Retinopathy Lesions by Employing Deep Learning and Machine Learning Algorithms using Color Fundus Data
Diabetes is a rapidly spreading illness that has devastating consequences on human organs such as kidney, lungs, heart, eyes, etc. Diabetic Retinopathy (DR) is a condition caused by abiding diabetes that damages small vessels carrying blood and tissues in the eyes. The condition is characterized by the creation of inflated formations in the retinal region known as Micro-aneurysms, which if ignored can result in irreversible damage to the eye's blood vessels, eventually leading to blindness. In the early stages of the disease, such clinical manifestations do not appear. As a result, regular and timely checkups are foremost important. However, manual identification of diabetic retinopathy is time intensive and prone to human mistake. In the stated research, the color fundus dataset scans after processing are passed to multiple Deep Learning (DL) models employed to learn characteristics. These models trained on millions of different images from thousands of classes. Finally, several machine learning classifiers were used to classify lesions using the collected characteristics. The extracted result shows very eye catching performance. This enables experts to create architecture that fully address the problem of classifying unidentified scans into the right class or category.
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