眼底图像处理早期检测视网膜神经纤维层缺损

J. David, A. Sukesh Kumar
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引用次数: 20

摘要

青光眼是导致失明的第二大原因,是一种以神经组织丧失为特征的疾病。处理这种疾病的关键问题是早期发现其存在或进展,并迅速开始或推进适当的治疗。通过眼底图像处理对视网膜神经纤维层(Retinal Nerve Fiber Layer, RNFL)进行定量分析,对其早期发现具有重要意义。这种疾病的特征是视神经纤维的进行性变性,显示出明显的视神经头图像。青光眼导致(i)视神经头(ONH)和神经纤维层的结构改变,(ii)视野同时功能衰竭。本研究旨在开发一种系统,通过人眼眼底图像的变化来识别青光眼的存在,并使用图像处理技术自动量化RNFL缺陷,从而有助于青光眼疾病的诊断。系统的输入图像将是保存为位图或JPEG格式的眼底图像或实时图像。结果表明,该系统具有较好的临床诊断效果。在未来,该系统可以提供第一个低价格的青光眼适应症,以便可能减少误报的数量,误报的数量被误报到成本密集的复杂临床调查中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Early detection of retinal nerve fiber layer defects using fundus image processing
Glaucoma, the second leading cause of blindness is a disease characterized by loss of neural tissue over time. The key issue in dealing with this disease is early detection of its presence or progression, with the rapid initiation or advancement of appropriate treatment. Quantitative analysis of Retinal Nerve Fiber Layer (RNFL) via image processing of fundus images plays a major role in its early detection. The disease is characterized by the progressive degeneration of optic nerve fibers showing a distinct image of the optic nerve head. Glaucoma leads to (i) structural changes of the optic nerve head (ONH) and the nerve fiber layer and (ii) a simultaneous functional failure of the visual field. This work aims to develop a system which will recognize the presence of glaucoma by the changes in the fundus image of an eye of a person and automatically quantify the RNFL defect using image processing techniques which aids in the diagnosis of glaucoma disease. Input image of the system will be the fundus image of an eye saved in bitmap or JPEG format or a real time one. Results show that the performance of our system is appreciable with the clinical diagnosis. In the future, the system can provide a first low-priced glaucoma indication in order to possibly reduce the amount of false positives misrouted to the cost-intensive elaborate clinical investigations.
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