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Optic disc segmentation in fundus images using deep learning

机译:光盘分割在使用深度学习的眼底图像中

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Ophthalmologists use the optic disc to cup ratio as one factor to diagnose glaucoma. Optic disc in fundus images is the area where blood vessels and optic nerve fibers enter the retina. A cup to disc ratio (the diameter of the cup divided by the diameter of the optic disc) greater than 0.3 is considered to be suggestive of glaucoma. Therefore, we are developing automatic methods to estimate optic disc and cup areas, and the optic disc to cup ratio. There are four steps to estimate the ratio: region of interest (ROI) area detection (where optic disc is in the center) from the fundus image, optic disc segmentation from the ROI, cup segmentation from the optic disc area, and cup to optic disc ratio estimation. This paper proposes an automated method to segment the optic disc from the ROI using deep learning. A Fully Convolutional Network (FCN) with a U-Net architecture is used for the segmentation. We use fundus images from MESSIDOR dataset in this experiment, a public dataset containing 1,200 fundus images. We divide the dataset into five equal subsets for training and independent testing (each set has four subsets for training and one subset for testing). The proposed method outperforms other existing algorithms. The results show 0.94 Jaccard index, 0.98 sensitivity, 0.99 specificity, and 0.99 accuracy.
机译:眼科医生使用光盘到杯子比作为诊断青光眼的一个因素。眼底图像中的光盘是血管和视神经纤维进入视网膜的区域。杯子与盘的比率(除光盘直径除以光盘直径)的杯子被认为是暗示青光眼的暗示。因此,我们正在开发自动方法来估计光盘和杯子区域,以及光盘到杯子比。估计比率的四个步骤:感兴趣的区域(ROI)区域检测(光盘在中心位于中心),来自光盘区域的ROI,杯分割的光盘分段,以及光盘区域的光盘分割,以及光学元件盘比估计。本文提出了一种自动化方法,用于使用深度学习从投资回报率中划分光盘。具有U-Net架构的完全卷积网络(FCN)用于分段。我们在该实验中使用来自Messidor DataSet的眼底图像,该实验中包含1,200根底图像的公共数据集。我们将数据集分为五个相等的子集进行培训和独立测试(每个集合有四个训练子集和一个用于测试的子集)。所提出的方法优于其他现有算法。结果显示0.94 jaccard指标,0.98灵敏度,0.99特异性和0.99。

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