Zhang Jiong, Sha Dengfeng, Ma Yuhui, Zhang Dan, Tan Tao, Xu Xiayu, Yi Quanyong, Zhao Yitian
Cixi Institute of Biomedical Engineering, Ningbo Institute of Materials Technology and Engineering, Chinese Academy of Sciences, Ningbo, China.
The Affiliated Ningbo Eye Hospital of Wenzhou Medical University, Ningbo, China.
Front Cell Dev Biol. 2023 May 5;11:1181305. doi: 10.3389/fcell.2023.1181305. eCollection 2023.
Ultra-Wide-Field (UWF) fundus imaging is an essential diagnostic tool for identifying ophthalmologic diseases, as it captures detailed retinal structures within a wider field of view (FOV). However, the presence of eyelashes along the edge of the eyelids can cast shadows and obscure the view of fundus imaging, which hinders reliable interpretation and subsequent screening of fundus diseases. Despite its limitations, there are currently no effective methods or datasets available for removing eyelash artifacts from UWF fundus images. This research aims to develop an effective approach for eyelash artifact removal and thus improve the visual quality of UWF fundus images for accurate analysis and diagnosis. To address this issue, we first constructed two UWF fundus datasets: the paired synthetic eyelashes (PSE) dataset and the unpaired real eyelashes (uPRE) dataset. Then we proposed a deep learning architecture called Joint Conditional Generative Adversarial Networks (JcGAN) to remove eyelash artifacts from UWF fundus images. JcGAN employs a shared generator with two discriminators for joint learning of both real and synthetic eyelash artifacts. Furthermore, we designed a background refinement module that refines background information and is trained with the generator in an end-to-end manner. Experimental results on both PSE and uPRE datasets demonstrate the superiority of the proposed JcGAN over several state-of-the-art deep learning approaches. Compared with the best existing method, JcGAN improves PSNR and SSIM by 4.82% and 0.23%, respectively. In addition, we also verified that eyelash artifact removal via JcGAN could significantly improve vessel segmentation performance in UWF fundus images. Assessment via vessel segmentation illustrates that the sensitivity, Dice coefficient and area under curve (AUC) of ResU-Net have respectively increased by 3.64%, 1.54%, and 1.43% after eyelash artifact removal using JcGAN. The proposed JcGAN effectively removes eyelash artifacts in UWF images, resulting in improved visibility of retinal vessels. Our method can facilitate better processing and analysis of retinal vessels and has the potential to improve diagnostic outcomes.
超广角(UWF)眼底成像是识别眼科疾病的重要诊断工具,因为它能在更宽的视野(FOV)内捕捉详细的视网膜结构。然而,眼睑边缘的睫毛会产生阴影并遮挡眼底成像的视野,这阻碍了对眼底疾病的可靠解读和后续筛查。尽管存在局限性,但目前尚无有效的方法或数据集可用于去除UWF眼底图像中的睫毛伪影。本研究旨在开发一种有效的去除睫毛伪影的方法,从而提高UWF眼底图像的视觉质量,以进行准确的分析和诊断。为了解决这个问题,我们首先构建了两个UWF眼底数据集:配对合成睫毛(PSE)数据集和未配对真实睫毛(uPRE)数据集。然后,我们提出了一种名为联合条件生成对抗网络(JcGAN)的深度学习架构,用于去除UWF眼底图像中的睫毛伪影。JcGAN采用一个共享生成器和两个判别器,对真实和合成睫毛伪影进行联合学习。此外,我们设计了一个背景细化模块,用于细化背景信息,并与生成器进行端到端训练。在PSE和uPRE数据集上的实验结果表明,所提出的JcGAN优于几种先进的深度学习方法。与现有最佳方法相比,JcGAN的峰值信噪比(PSNR)和结构相似性指数(SSIM)分别提高了4.82%和0.23%。此外,我们还验证了通过JcGAN去除睫毛伪影可以显著提高UWF眼底图像中的血管分割性能。通过血管分割进行评估表明,使用JcGAN去除睫毛伪影后,ResU-Net的灵敏度、骰子系数和曲线下面积(AUC)分别提高了3.64%、1.54%和1.43%。所提出的JcGAN有效地去除了UWF图像中的睫毛伪影,提高了视网膜血管的可见性。我们的方法可以促进对视网膜血管的更好处理和分析,并有可能改善诊断结果。