Gong Zheng, Deng Zhuo, Gao Weihao, Zhou Wenda, Yang Yuhang, Zhao Hanqing, Shao Lei, Wei Wenbin, Ma Lan
Tsinghua Shenzhen International Graduate School, Tsinghua University, Shenzhen, China.
Beijing Tongren Eye Center, Beijing Key Laboratory of Intraocular Tumor Diagnosis and Treatment, Beijing Ophthalmology and Visual Sciences Key Lab, Beijing Tongren Hospital, Capital Medical University, Beijing, 100730, China.
Sci Rep. 2025 Apr 1;15(1):11171. doi: 10.1038/s41598-025-88444-z.
Cataract is one of the most common blinding eye diseases and can be treated by surgery. However, because cataract patients may also suffer from other blinding eye diseases, ophthalmologists must diagnose them before surgery. The cloudy lens of cataract patients forms a hazy degeneration in the fundus images, making it challenging to observe the patient's fundus vessels, which brings difficulties to the diagnosis process. To address this issue, this paper establishes a new cataract image restoration method named Catintell. It contains a cataract image synthesizing model, Catintell-Syn, and a restoration model, Catintell-Res. Catintell-Syn uses GAN architecture with fully unsupervised data to generate paired cataract-like images with realistic style and texture rather than the conventional Gaussian degradation algorithm. Meanwhile, Catintell-Res is an image restoration network that can improve the quality of real cataract fundus images using the knowledge learned from synthetic cataract images. Extensive experiments show that Catintell-Res outperforms other cataract image restoration methods in PSNR with 39.03 and SSIM with 0.9476. Furthermore, the universal restoration ability that Catintell-Res gained from unpaired cataract images can process cataract images from various datasets. We hope the models can help ophthalmologists identify other blinding eye diseases of cataract patients and inspire more medical image restoration methods in the future.
白内障是最常见的致盲眼病之一,可通过手术治疗。然而,由于白内障患者可能还患有其他致盲眼病,眼科医生必须在手术前对其进行诊断。白内障患者浑浊的晶状体在眼底图像中形成模糊的退化,使得观察患者的眼底血管具有挑战性,这给诊断过程带来了困难。为了解决这个问题,本文建立了一种名为Catintell的新型白内障图像恢复方法。它包含一个白内障图像合成模型Catintell-Syn和一个恢复模型Catintell-Res。Catintell-Syn使用具有完全无监督数据的GAN架构来生成具有逼真风格和纹理的成对白内障样图像,而不是传统的高斯退化算法。同时,Catintell-Res是一个图像恢复网络,它可以利用从合成白内障图像中学到的知识来提高真实白内障眼底图像的质量。大量实验表明,Catintell-Res在PSNR方面达到39.03,在SSIM方面达到0.9476,优于其他白内障图像恢复方法。此外,Catintell-Res从未配对的白内障图像中获得的通用恢复能力可以处理来自各种数据集的白内障图像。我们希望这些模型能够帮助眼科医生识别白内障患者的其他致盲眼病,并在未来激发更多的医学图像恢复方法。