Center for Cyber Security, Faculty of Information Science & Technology, Universiti Kebangsaan Malaysia, Selangor, Malaysia.
Computer Center, Northern Technical University, Ninevah, Iraq.
J Med Internet Res. 2021 Sep 21;23(9):e27414. doi: 10.2196/27414.
Glaucoma leads to irreversible blindness. Globally, it is the second most common retinal disease that leads to blindness, slightly less common than cataracts. Therefore, there is a great need to avoid the silent growth of this disease using recently developed generative adversarial networks (GANs).
This paper aims to introduce a GAN technology for the diagnosis of eye disorders, particularly glaucoma. This paper illustrates deep adversarial learning as a potential diagnostic tool and the challenges involved in its implementation. This study describes and analyzes many of the pitfalls and problems that researchers will need to overcome to implement this kind of technology.
To organize this review comprehensively, articles and reviews were collected using the following keywords: ("Glaucoma," "optic disc," "blood vessels") and ("receptive field," "loss function," "GAN," "Generative Adversarial Network," "Deep learning," "CNN," "convolutional neural network" OR encoder). The records were identified from 5 highly reputed databases: IEEE Xplore, Web of Science, Scopus, ScienceDirect, and PubMed. These libraries broadly cover the technical and medical literature. Publications within the last 5 years, specifically 2015-2020, were included because the target GAN technique was invented only in 2014 and the publishing date of the collected papers was not earlier than 2016. Duplicate records were removed, and irrelevant titles and abstracts were excluded. In addition, we excluded papers that used optical coherence tomography and visual field images, except for those with 2D images. A large-scale systematic analysis was performed, and then a summarized taxonomy was generated. Furthermore, the results of the collected articles were summarized and a visual representation of the results was presented on a T-shaped matrix diagram. This study was conducted between March 2020 and November 2020.
We found 59 articles after conducting a comprehensive survey of the literature. Among the 59 articles, 30 present actual attempts to synthesize images and provide accurate segmentation/classification using single/multiple landmarks or share certain experiences. The other 29 articles discuss the recent advances in GANs, do practical experiments, and contain analytical studies of retinal disease.
Recent deep learning techniques, namely GANs, have shown encouraging performance in retinal disease detection. Although this methodology involves an extensive computing budget and optimization process, it saturates the greedy nature of deep learning techniques by synthesizing images and solves major medical issues. This paper contributes to this research field by offering a thorough analysis of existing works, highlighting current limitations, and suggesting alternatives to support other researchers and participants in further improving and strengthening future work. Finally, new directions for this research have been identified.
青光眼可导致不可逆转的失明。在全球范围内,它是导致失明的第二大常见视网膜疾病,略低于白内障。因此,非常有必要使用最近开发的生成对抗网络(GAN)来避免这种疾病的悄然发展。
本文旨在介绍一种用于眼部疾病诊断的 GAN 技术,特别是青光眼。本文说明了深度对抗学习作为一种潜在的诊断工具,以及在其实现过程中涉及的挑战。本研究描述并分析了研究人员在实施此类技术时需要克服的许多陷阱和问题。
为了全面组织本综述,使用以下关键词收集文章和评论:(“青光眼”,“视盘”,“血管”)和(“感受野”,“损失函数”,“GAN”,“生成对抗网络”,“深度学习”,“CNN”,“卷积神经网络”或编码器)。从五个声誉很高的数据库:IEEE Xplore、Web of Science、Scopus、ScienceDirect 和 PubMed 中识别出记录。这些库广泛涵盖了技术和医学文献。包含的出版物为过去 5 年,即 2015-2020 年,因为目标 GAN 技术仅在 2014 年发明,并且所收集论文的出版日期不早于 2016 年。已删除重复记录,并排除了不相关的标题和摘要。此外,我们排除了使用光学相干断层扫描和视野图像的论文,除了具有 2D 图像的论文。进行了大规模的系统分析,然后生成了一个总结分类法。此外,对收集的文章的结果进行了总结,并在 T 形矩阵图上呈现了结果的可视化表示。本研究于 2020 年 3 月至 2020 年 11 月进行。
经过全面的文献调查,我们发现了 59 篇文章。在 59 篇文章中,有 30 篇文章实际尝试合成图像,并使用单个/多个地标提供准确的分割/分类,或分享某些经验。另外 29 篇文章讨论了 GAN 最近的进展,进行了实际实验,并对视网膜疾病进行了分析研究。
最近的深度学习技术,即 GAN,在视网膜疾病检测中表现出了令人鼓舞的性能。尽管这种方法涉及广泛的计算预算和优化过程,但它通过合成图像饱和了深度学习技术的贪婪性质,并解决了主要的医学问题。本文通过对现有工作进行全面分析,突出当前的局限性,并提出替代方案来支持其他研究人员和参与者进一步改进和加强未来的工作,从而为该研究领域做出了贡献。最后,确定了该研究的新方向。