数字射线:利用风格转移生成式对抗网络增强白内障眼底图像,改善视网膜病变检测。

IF 3.7 2区 医学 Q1 OPHTHALMOLOGY
Lixue Liu, Jiaming Hong, Yuxuan Wu, Shaopeng Liu, Kai Wang, Mingyuan Li, Lanqin Zhao, Zhenzhen Liu, Longhui Li, Tingxin Cui, Ching-Kit Tsui, Fabao Xu, Weiling Hu, Dongyuan Yun, Xi Chen, Yuanjun Shang, Shaowei Bi, Xiaoyue Wei, Yunxi Lai, Duoru Lin, Zhe Fu, Yaru Deng, Kaimin Cai, Yi Xie, Zizheng Cao, Dongni Wang, Xulin Zhang, Meimei Dongye, Haotian Lin, Xiaohang Wu
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引用次数: 0

摘要

背景/目的:本研究旨在开发和评估基于术前和术后图像对的数字射线,使用风格转移生成式对抗网络(GANs)来增强白内障眼底图像,以改进视网膜病变检测:方法:为符合条件的白内障患者拍摄术前和术后彩色眼底照片(CFP)和超宽视野(UWF)图像。然后,采用原始的 CycleGAN 和改进的 CycleGAN(C2ycleGAN)框架生成图像,并使用 Frechet Inception Distance(FID)和 Kernel Inception Distance(KID)进行定量比较。此外,还使用了另一批白内障患者的 CFP 和 UWF 图像来测试模型的性能。不同的眼科医生小组对生成图像的质量、真实性和诊断效果进行了评估:结果:共有 959 对 CFP 和 1009 对 UWF 图像被纳入模型开发。FID和KID表明,C2ycleGAN生成的图像质量明显提高。根据眼科医生的平均评分,CFP 图像质量不佳的百分比从 32% 降至 18.8%,UWF 图像质量不佳的百分比从 18.7% 降至 14.7%。在生成的 CFP 和 UWF 图像中,只有 24.8% 和 13.8% 能被识别为合成图像。视网膜病变检测的准确率大幅提高,CFP 从 78% 提高到 91%,UWF 从 91% 提高到 93%。在视网膜病变亚型诊断方面,CFP 的准确率从 87%-94% 提高到 91%-100%,UWF 的准确率从 87%-95% 提高到 93%-97%:结论:数字射线可生成逼真的术后 CFP 和 UWF 图像,其质量和准确性均有所提高,可用于视网膜病变的整体检测和亚型诊断,尤其是 CFP。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Digital ray: enhancing cataractous fundus images using style transfer generative adversarial networks to improve retinopathy detection.

Background/aims: The aim of this study was to develop and evaluate digital ray, based on preoperative and postoperative image pairs using style transfer generative adversarial networks (GANs), to enhance cataractous fundus images for improved retinopathy detection.

Methods: For eligible cataract patients, preoperative and postoperative colour fundus photographs (CFP) and ultra-wide field (UWF) images were captured. Then, both the original CycleGAN and a modified CycleGAN (C2ycleGAN) framework were adopted for image generation and quantitatively compared using Frechet Inception Distance (FID) and Kernel Inception Distance (KID). Additionally, CFP and UWF images from another cataract cohort were used to test model performances. Different panels of ophthalmologists evaluated the quality, authenticity and diagnostic efficacy of the generated images.

Results: A total of 959 CFP and 1009 UWF image pairs were included in model development. FID and KID indicated that images generated by C2ycleGAN presented significantly improved quality. Based on ophthalmologists' average ratings, the percentages of inadequate-quality images decreased from 32% to 18.8% for CFP, and from 18.7% to 14.7% for UWF. Only 24.8% and 13.8% of generated CFP and UWF images could be recognised as synthetic. The accuracy of retinopathy detection significantly increased from 78% to 91% for CFP and from 91% to 93% for UWF. For retinopathy subtype diagnosis, the accuracies also increased from 87%-94% to 91%-100% for CFP and from 87%-95% to 93%-97% for UWF.

Conclusion: Digital ray could generate realistic postoperative CFP and UWF images with enhanced quality and accuracy for overall detection and subtype diagnosis of retinopathies, especially for CFP.\ TRIAL REGISTRATION NUMBER: This study was registered with ClinicalTrials.gov (NCT05491798).

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来源期刊
CiteScore
10.30
自引率
2.40%
发文量
213
审稿时长
3-6 weeks
期刊介绍: The British Journal of Ophthalmology (BJO) is an international peer-reviewed journal for ophthalmologists and visual science specialists. BJO publishes clinical investigations, clinical observations, and clinically relevant laboratory investigations related to ophthalmology. It also provides major reviews and also publishes manuscripts covering regional issues in a global context.
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