Deep-learning based automated segmentation of Diabetic Retinopathy symptoms

Hung-an Yeh, Cheng-Jhong Lin, Chih-Chung Hsu, Chia-Yen Lee
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Abstract

Purpose: Retinal fundus images are an important basis for reflecting retinal health status, are widely used in clinical diagnosis, and have important significance in fundus image processing and analysis. At present, clinicians rely on manual examination of fundus images when diagnosing retinopathy, which is both time- and labor-consuming. However, the need for rapid auxiliary diagnostic imaging is increasing day by day. Therefore, this study evaluates deep learning as a preprocessing method for optic disc examination along with the method proposed in this study. Methods: During optic disc segmentation, the optic disc region in original images is blurry and unclear compared to the entire image. The halo around the optic disc causes boundaries to become unclear and makes examination difficult. In this paper, different preprocessing methods were used to solve the problem of blurry optic disc region and the effectiveness of the various preprocessing methods was evaluated. Preprocessing methods used in this study to identify optic disc regions that were not apparent in the original image include the original image, green channel, CLAHE, and subtraction of average filter from Gaussian filter (σ=1) using the original image. This preprocessing method is known as local differential filter and was uploaded to U-Net for training. Results: Evaluate the proposed method on the MICCAI REFUGE Challenge 2018 database. In the performance of Dice, the original image is 0.9473; the LDF image is 0.9521; the green channel image is 0.9429; CLAHE image is 0.9499. Conclusions: Currently, deep learning is used in many types of preprocessing for segmentation. In this study, we preprocessed fundus images and inputted them into the model for training. Finally, LDF image was used to obtain the best preprocessing method for optic disc segmentation in fundus images.
基于深度学习的糖尿病视网膜病变症状自动分割
目的:视网膜眼底图像是反映视网膜健康状况的重要依据,在临床诊断中应用广泛,在眼底图像处理和分析中具有重要意义。目前临床医生在诊断视网膜病变时,主要依靠人工检查眼底图像,既费时又费力。然而,对快速辅助诊断影像的需求日益增加。因此,本研究结合本研究提出的方法,对深度学习作为视盘检查的预处理方法进行了评价。方法:在视盘分割过程中,原始图像中的视盘区域相对于整幅图像模糊不清。视盘周围的光晕使边界变得不清楚,使检查变得困难。本文采用不同的预处理方法来解决视盘区域模糊问题,并对各种预处理方法的有效性进行了评价。本文采用预处理方法识别原始图像中不明显的视盘区域,包括原始图像、绿色通道、CLAHE和利用原始图像从高斯滤波器(σ=1)中减去平均滤波器。这种预处理方法被称为局部差分滤波,并上传到U-Net进行训练。结果:在MICCAI REFUGE Challenge 2018数据库上评估所提出的方法。在Dice的性能中,原始图像为0.9473;LDF图像为0.9521;绿色通道图像为0.9429;CLAHE图像为0.9499。结论:目前,深度学习被用于多种类型的分割预处理。在本研究中,我们对眼底图像进行预处理并输入到模型中进行训练。最后,利用LDF图像获得眼底图像中视盘分割的最佳预处理方法。
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