视网膜中央静脉闭塞检测的CNN方法

Jayanthi Rajee Bala, Mohamed Mansoor Roomi Sindha, Jency Sahayam, Praveena Govindharaj, Karthika Priya Rakesh
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引用次数: 0

摘要

--在医学领域中,需要对视网膜疾病进行自动检测。老年人的失明主要是由视网膜中央静脉阻塞(CRVO)引起的。它会导致快速、不可逆转的视力下降,因此,尽快识别和解决CRVO至关重要。出血是CRVO最早的症状之一,出血的大小、色素和形状可能不同,从点状出血到火焰状出血。然而,CRVO的早期迹象是出血,出血非常轻微,眼科医生必须在视网膜图像(即眼底图像)中动态观察这些指标,这是一项具有挑战性且耗时的任务。也很难分割出血,因为血管和出血(HE)具有相同的颜色特性,而且出血没有特定的形状,并且它散布在眼底图像上。需要进行一项具有挑战性的研究来提取静脉可变形性和扩张性的特征。此外,捕获图像的质量影响特征识别分析的效果。本文提出了一种用于CRVO提取的深度学习方法。
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A CNN Approach to Central Retinal Vein Occlusion Detection
— In the field of medicine there is a need for the automatic detection of retinal disorders. Blindness in older persons is primarily caused by Central Retinal Vein Occlusion (CRVO). It results in rapid, irreversible eyesight loss, therefore, it is essential to identify and address CRVO as soon as feasible. Hemorrhages, which can differ in size, pigment, and shape from dot-shaped to flame hemorrhages, are one of the earliest symptoms of CRVO. The early signs of CRVO are, hemorrhages, however, so mild that ophthalmologists must dynamically observe such indicators in the retina image known as the fundus image, which is a challenging and time-consuming task. It is also difficult to segment hemorrhages since the blood vessels and hemorrhages (HE) have the same color properties also there is no particular shape for hemorrhages and it scatters all over the fundus image. A challenging study is needed to extract the characteristics of vein deformability and dilatation. Furthermore, the quality of the captured image affects the efficacy of feature Identification analysis. In this paper, a deep learning approach for CRVO extraction is proposed .
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CiteScore
1.50
自引率
14.30%
发文量
0
审稿时长
12 weeks
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