基于深度分割的视网膜图像分析检测新生血管

Muhammad Zubair Khan, Yugyung Lee
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引用次数: 2

摘要

视网膜在早期发现威胁视力的疾病症状方面起着重要作用。眼部并发症多表现在视网膜。从这一重要资源中提取有用信息是一项关键任务。人工智能的最新进展开辟了通过视网膜图像快速检测眼部疾病的途径。在本文中,我们提出了一种血管分割模型,用于早期发现新生血管。这是慢性糖尿病视网膜病变患者的常见症状。在新生血管形成过程中,随着时间的推移,人体血液中含有大量的糖,产生的微小血管会被阻塞。新形成的细小血管的检测需要精确的血管提取系统。我们的模型在一个公开可用的视网膜图像数据集上显示了有希望的结果。在0.9780 AUC下,达到了0.9554的最高精度。潜在的研究是努力生产自动化疾病检测系统。该系统的核心功能是分析出现眼部疾病症状的受试者血管的结构变化,并通过早期诊断降低失明的风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Retinal Image Analysis to Detect Neovascularization using Deep Segmentation
The retina has a significant role in early detection of sight-threatening disease symptoms. Most of the ocular complications manifest themselves in retina. The extraction of useful information from this vital resource is a critical task. The recent advancement in artificial intelligence has opened ways to provide rapid assistance in detecting ocular disorders through retinal images. In this article, we have proposed a vessels segmentation model for the early detection of neovascularization. It is a common symptom for patients facing chronic diabetic retinopathy. In neovascularization, the tiny vessels are produced that gets block over time with an extensive amount of sugar content in human blood. The detection of newly formatted tiny blood vessels needs a precise vessels extraction system. Our model has shown promising results on a publicly available retinal image dataset. It has achieved the highest accuracy of 0.9554 with 0.9780 AUC. The underlying research is an effort to produce automated disease detection system. The core function of the proposed system is to analyze the structural variation in vessels of subjects experiencing ocular disease symptoms and to reduce the risk of blindness through early diagnosis.
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