IEEE Trans Med Imaging. 2021 Mar;40(3):996-1006. doi: 10.1109/TMI.2020.3043495. Epub 2021 Mar 2.
Retinal fundus images are widely used for the clinical screening and diagnosis of eye diseases. However, fundus images captured by operators with various levels of experience have a large variation in quality. Low-quality fundus images increase uncertainty in clinical observation and lead to the risk of misdiagnosis. However, due to the special optical beam of fundus imaging and structure of the retina, natural image enhancement methods cannot be utilized directly to address this. In this article, we first analyze the ophthalmoscope imaging system and simulate a reliable degradation of major inferior-quality factors, including uneven illumination, image blurring, and artifacts. Then, based on the degradation model, a clinically oriented fundus enhancement network (cofe-Net) is proposed to suppress global degradation factors, while simultaneously preserving anatomical retinal structures and pathological characteristics for clinical observation and analysis. Experiments on both synthetic and real images demonstrate that our algorithm effectively corrects low-quality fundus images without losing retinal details. Moreover, we also show that the fundus correction method can benefit medical image analysis applications, e.g., retinal vessel segmentation and optic disc/cup detection.
眼底图像被广泛应用于眼部疾病的临床筛查和诊断。然而,由于不同经验水平的操作人员拍摄的眼底图像质量存在较大差异,低质量的眼底图像会增加临床观察的不确定性,并导致误诊的风险。但是,由于眼底成像的特殊光束和视网膜的结构,不能直接利用自然图像增强方法来解决这个问题。在本文中,我们首先分析了眼底镜成像系统,并模拟了主要低质量因素的可靠退化,包括光照不均匀、图像模糊和伪影。然后,基于退化模型,提出了一种面向临床的眼底增强网络(cofe-Net),用于抑制全局退化因素,同时保留用于临床观察和分析的解剖视网膜结构和病理特征。对合成图像和真实图像的实验表明,我们的算法可以有效地纠正低质量的眼底图像,而不会丢失视网膜细节。此外,我们还表明,眼底校正方法可以有益于医学图像分析应用,例如视网膜血管分割和视盘/杯检测。