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Optic disc segmentation for glaucoma screening system using fundus images

机译:使用眼底图像的青光眼筛查系统视盘分割

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摘要

Segmenting the optic disc (OD) is an important and essential step in creating a frame of reference for diagnosing optic nerve head pathologies such as glaucoma. Therefore, a reliable OD segmentation technique is necessary for automatic screening of optic nerve head abnormalities. The main contribution of this paper is in presenting a novel OD segmentation algorithm based on applying a level set method on a localized OD image. To prevent the blood vessels from interfering with the level set process, an inpainting technique was applied. As well an important contribution was to involve the variations in opinions among the ophthalmologists in detecting the disc boundaries and diagnosing the glaucoma. Most of the previous studies were trained and tested based on only one opinion, which can be assumed to be biased for the ophthalmologist. In addition, the accuracy was calculated based on the number of images that coincided with the ophthalmologists’ agreed-upon images, and not only on the overlapping images as in previous studies. The ultimate goal of this project is to develop an automated image processing system for glaucoma screening. The disc algorithm is evaluated using a new retinal fundus image dataset called RIGA (retinal images for glaucoma analysis). In the case of low-quality images, a double level set was applied, in which the first level set was considered to be localization for the OD. Five hundred and fifty images are used to test the algorithm accuracy as well as the agreement among the manual markings of six ophthalmologists. The accuracy of the algorithm in marking the optic disc area and centroid was 83.9%, and the best agreement was observed between the results of the algorithm and manual markings in 379 images.
机译:分割视盘(OD)是创建诊断视神经头病变(例如青光眼)的参考框架的重要且必不可少的步骤。因此,需要可靠的OD分割技术来自动筛查视神经乳头异常。本文的主要贡献在于提出了一种基于在局部OD图像上应用水平集方法的新颖OD分割算法。为了防止血管干扰水平设置过程,应用了修复技术。同样重要的贡献是使眼科医生之间的观点差异有助于发现椎间盘边界并诊断青光眼。以前的大多数研究都是仅根据一种意见进行培训和测试的,可以认为这对眼科医生有偏见。另外,准确性的计算是根据与眼科医生同意的图像数量一致的,而不是像以前的研究那样,不仅是根据重叠的图像进行的。该项目的最终目标是开发用于青光眼筛查的自动化图像处理系统。使用称为RIGA(用于青光眼分析的视网膜图像)的新视网膜眼底图像数据集评估椎间盘融合算法。在低质量图像的情况下,将应用双级别集,其中第一级别集被认为是OD的定位。 550张图像用于测试算法的准确性以及六位眼科医生的手动标记之间的一致性。该算法在视盘区域和质心标记上的准确性为83.9%,在379张图像中,该算法的结果与人工标记之间的一致性最佳。

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