You Aram, Kim Jin Kuk, Ryu Ik Hee, Yoo Tae Keun
School of Architecture, Kumoh National Institute of Technology, Gumi, Gyeongbuk, South Korea.
B&VIIT Eye Center, Seoul, South Korea.
Eye Vis (Lond). 2022 Feb 2;9(1):6. doi: 10.1186/s40662-022-00277-3.
Recent advances in deep learning techniques have led to improved diagnostic abilities in ophthalmology. A generative adversarial network (GAN), which consists of two competing types of deep neural networks, including a generator and a discriminator, has demonstrated remarkable performance in image synthesis and image-to-image translation. The adoption of GAN for medical imaging is increasing for image generation and translation, but it is not familiar to researchers in the field of ophthalmology. In this work, we present a literature review on the application of GAN in ophthalmology image domains to discuss important contributions and to identify potential future research directions.
We performed a survey on studies using GAN published before June 2021 only, and we introduced various applications of GAN in ophthalmology image domains. The search identified 48 peer-reviewed papers in the final review. The type of GAN used in the analysis, task, imaging domain, and the outcome were collected to verify the usefulness of the GAN.
In ophthalmology image domains, GAN can perform segmentation, data augmentation, denoising, domain transfer, super-resolution, post-intervention prediction, and feature extraction. GAN techniques have established an extension of datasets and modalities in ophthalmology. GAN has several limitations, such as mode collapse, spatial deformities, unintended changes, and the generation of high-frequency noises and artifacts of checkerboard patterns.
The use of GAN has benefited the various tasks in ophthalmology image domains. Based on our observations, the adoption of GAN in ophthalmology is still in a very early stage of clinical validation compared with deep learning classification techniques because several problems need to be overcome for practical use. However, the proper selection of the GAN technique and statistical modeling of ocular imaging will greatly improve the performance of each image analysis. Finally, this survey would enable researchers to access the appropriate GAN technique to maximize the potential of ophthalmology datasets for deep learning research.
深度学习技术的最新进展提高了眼科的诊断能力。生成对抗网络(GAN)由两种相互竞争的深度神经网络组成,包括生成器和判别器,在图像合成和图像到图像的转换中表现出卓越性能。GAN在医学成像中的应用在图像生成和转换方面日益增加,但眼科领域的研究人员对此并不熟悉。在本研究中,我们对GAN在眼科图像领域的应用进行文献综述,以讨论其重要贡献并确定未来潜在的研究方向。
我们仅对2021年6月之前发表的使用GAN的研究进行了调查,并介绍了GAN在眼科图像领域的各种应用。搜索最终确定了48篇同行评审论文。收集分析中使用的GAN类型、任务、成像领域和结果,以验证GAN的实用性。
在眼科图像领域,GAN可进行分割、数据增强、去噪、域转换、超分辨率、干预后预测和特征提取。GAN技术扩展了眼科数据集和成像方式。GAN存在一些局限性,如模式崩溃、空间变形、意外变化以及产生棋盘格图案的高频噪声和伪影。
GAN的使用使眼科图像领域的各项任务受益。基于我们的观察,与深度学习分类技术相比,GAN在眼科的应用仍处于临床验证的非常早期阶段,因为实际应用中还需要克服一些问题。然而,正确选择GAN技术和对眼部成像进行统计建模将大大提高各图像分析的性能。最后,本次综述将使研究人员能够获取合适的GAN技术,以最大限度地发挥眼科数据集在深度学习研究中的潜力。