Non-Invasive to Invasive: Enhancing FFA Synthesis from CFP with a Benchmark Dataset and a Novel Network
Hongqiu Wang, Zhaohu Xing, Weitong Wu, Yijun Yang, Qingqing Tang,, Meixia Zhang, Yanwu Xu, Lei Zhu

TL;DR
This paper introduces a novel diffusion-guided GAN and a multi-disease dataset to synthesize FFA images from CFP, improving non-invasive retinal imaging and diagnosis accuracy across multiple eye diseases.
Contribution
The work presents a new diffusion-guided generative model and a multi-disease paired dataset for FFA synthesis, advancing non-invasive retinal imaging technology.
Findings
Generated FFA images outperform state-of-the-art methods.
Synthetic FFA images improve diagnosis accuracy.
The dataset supports multi-disease ophthalmic research.
Abstract
Fundus imaging is a pivotal tool in ophthalmology, and different imaging modalities are characterized by their specific advantages. For example, Fundus Fluorescein Angiography (FFA) uniquely provides detailed insights into retinal vascular dynamics and pathology, surpassing Color Fundus Photographs (CFP) in detecting microvascular abnormalities and perfusion status. However, the conventional invasive FFA involves discomfort and risks due to fluorescein dye injection, and it is meaningful but challenging to synthesize FFA images from non-invasive CFP. Previous studies primarily focused on FFA synthesis in a single disease category. In this work, we explore FFA synthesis in multiple diseases by devising a Diffusion-guided generative adversarial network, which introduces an adaptive and dynamic diffusion forward process into the discriminator and adds a category-aware representation…
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Taxonomy
TopicsSoftware System Performance and Reliability
MethodsDiffusion · Focus
