Retinal image synthesis from multiple-landmarks input with generative adversarial networks

计算机科学 管道(软件) 人工智能 发电机(电路理论) 眼底(子宫) 预处理器 图像(数学) 模式识别(心理学) 鉴别器 树(集合论) 深度学习 图像翻译 计算机视觉 数学 电信 探测器 眼科 物理 数学分析 医学 功率(物理) 程序设计语言 量子力学
作者
Zekuan Yu,Qing Xiang,Jiahao Meng,Caixia Kou,Qiushi Ren,Yanye Lu
出处
期刊:Biomedical Engineering Online [BioMed Central]
卷期号:18 (1) 被引量:59
标识
DOI:10.1186/s12938-019-0682-x
摘要

Medical datasets, especially medical images, are often imbalanced due to the different incidences of various diseases. To address this problem, many methods have been proposed to synthesize medical images using generative adversarial networks (GANs) to enlarge training datasets for facilitating medical image analysis. For instance, conventional methods such as image-to-image translation techniques are used to synthesize fundus images with their respective vessel trees in the field of fundus image.In order to improve the image quality and details of the synthetic images, three key aspects of the pipeline are mainly elaborated: the input mask, architecture of GANs, and the resolution of paired images. We propose a new preprocessing pipeline named multiple-channels-multiple-landmarks (MCML), aiming to synthesize color fundus images from a combination of vessel tree, optic disc, and optic cup images. We compared both single vessel mask input and MCML mask input on two public fundus image datasets (DRIVE and DRISHTI-GS) with different kinds of Pix2pix and Cycle-GAN architectures. A new Pix2pix structure with ResU-net generator is also designed, which has been compared with the other models.As shown in the results, the proposed MCML method outperforms the single vessel-based methods for each architecture of GANs. Furthermore, we find that our Pix2pix model with ResU-net generator achieves superior PSNR and SSIM performance than the other GANs. High-resolution paired images are also beneficial for improving the performance of each GAN in this work. Finally, a Pix2pix network with ResU-net generator using MCML and high-resolution paired images are able to generate good and realistic fundus images in this work, indicating that our MCML method has great potential in the field of glaucoma computer-aided diagnosis based on fundus image.

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