基于深度学习的青光眼视盘和视杯分割

Jongwoo Kim, L. Tran, E. Chew, Sameer Kiran Antani
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引用次数: 25

摘要

青光眼是最常见的眼病之一,由于视神经受损,可导致不可逆的视力丧失。眼科医生认为杯与视盘之比大于0.3提示有青光眼。不幸的是,由于不容易在眼底图像中可靠地测量视盘和杯状区域,眼科医生在估计比例方面存在很大的差异。因此,本文提出了自动分割视盘和视杯区域的方法。估计比率有两个步骤:从眼底图像中检测感兴趣区域(ROI)区域(视盘在中心),然后分割视盘和杯。本文主要研究了从ROI图像中分割视盘和视杯的自动化方法。采用U-Net结构的全卷积网络(FCN)进行分割。RIGA数据集(由MESSIDOR、Bin rush和Magrabi三个不同的眼底图像数据集组成)包含750张眼底图像,用于训练和测试fns。我们提出的fns比其他现有算法表现出相对更好的性能。视盘的最佳分割结果为Jaccard指数0.95,F-measure 0.98,准确率0.99。cup的最佳分割结果为Jaccard指数0.80,F-measure 0.88,准确率0.99。
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Optic Disc and Cup Segmentation for Glaucoma Characterization Using Deep Learning
Glaucoma is one of the most common eye diseases that can cause irreversible vision loss due to damage to the optic nerve. Ophthalmologists consider a cup to optic disc ratio greater than 0.3 to be suggestive of glaucoma. Unfortunately, there is high variability among ophthalmologists in estimating the ratio since it is not easy to reliably measure optic disc and cup areas in a fundus image. Therefore, this paper proposes automatic methods to segment the optic disc and cup areas. There are two steps to estimate the ratio: region of interest (ROI) area detection (where optic disc is in the center) from a fundus image, followed by optic disc and cup segmentation. This paper focuses on automated methods to segment the optic disc and cup from the ROI. Fully convolutional networks (FCN) with U-Net architectures are used for the segmentation. The RIGA dataset (composed of three different fundus image datasets: MESSIDOR, Bin Rushed, and Magrabi), containing 750 fundus images, is used to train and test the FCNs. Our proposed FCNs show relatively better performance than other existing algorithms. The best segmentation results for optic disc show 0.95 Jaccard index, 0.98 F-measure, and 0.99 accuracy. The best segmentation results for cup show 0.80 Jaccard index, 0.88 F-measure, and 0.99 accuracy.
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