A Systematic Study of Deep Learning Architectures for Analysis of Glaucoma and Hypertensive Retinopathy

Madhura Prakash M, Deepthi K Prasad, Meghna S Kulkarni, Spoorthi K, V. S.
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Abstract

Deep learning models are applied seamlessly across various computer vision tasks like object detection, object tracking, scene understanding and further. The application of cutting-edge deep learning (DL) models like U-Net in the classification and segmentation of medical images on different modalities has established significant results in the past few years. Ocular diseases like Diabetic Retinopathy (DR), Glaucoma, Age-Related Macular Degeneration (AMD / ARMD), Hypertensive Retina (HR), Cataract, and dry eyes can be detected at the early stages of disease onset by capturing the fundus image or the anterior image of the subject’s eye. Early detection is key to seeking early treatment and thereby preventing the disease progression, which in some cases may lead to blindness. There is a plethora of deep learning models available which have established significant results in medical image processing and specifically in ocular disease detection. A given task can be solved by using a variety of models and or a combination of them. Deep learning models can be computationally expensive and deploying them on an edge device may be a challenge. This paper provides a comprehensive report and critical evaluation of the various deep learning architectures that can be used to segment and classify ocular diseases namely Glaucoma and Hypertensive Retina on the posterior images of the eye. This review also compares the models based on complexity and edge deployability.
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青光眼和高血压视网膜病变分析的深度学习架构系统研究
深度学习模型无缝地应用于各种计算机视觉任务,如对象检测、对象跟踪、场景理解等。在过去的几年里,像U-Net这样的前沿深度学习(DL)模型在不同模式的医学图像分类和分割中的应用已经取得了显著的成果。眼部疾病,如糖尿病视网膜病变(DR)、青光眼、年龄相关性黄斑变性(AMD / ARMD)、高血压视网膜(HR)、白内障和干眼症,可以在疾病发作的早期阶段通过捕获眼底图像或受试者眼睛的前像来检测。早期发现是寻求早期治疗的关键,从而防止疾病进展,在某些情况下可能导致失明。有大量的深度学习模型已经在医学图像处理,特别是眼部疾病检测方面取得了显著的成果。给定的任务可以通过使用各种模型或它们的组合来解决。深度学习模型在计算上可能很昂贵,并且在边缘设备上部署它们可能是一个挑战。本文对各种深度学习架构进行了全面的报告和批判性的评估,这些架构可用于在眼睛的后图像上分割和分类眼部疾病,即青光眼和高血压视网膜。本文还比较了基于复杂性和边缘可部署性的模型。
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