Glaucoma is one of the ophthalmic diseases that may cause blindness, for which early detection and treatment are very important. Fundus images and optical coherence tomography (OCT) images are both widely-used modalities in diagnosing glaucoma. However, existing glaucoma grading approaches mainly utilize a single modality, ignoring the complementary information between fundus and OCT. In this paper, we propose an efficient multi-modality supervised contrastive learning framework, named COROLLA, for glaucoma grading. Through layer segmentation as well as thickness calculation and projection, retinal thickness maps are extracted from the original OCT volumes and used as a replacing modality, resulting in more efficient calculations with less memory usage. Given the high structure and distribution similarities across medical image samples, we employ supervised contrastive learning to increase our models' discriminative power with better convergence. Moreover, feature-level fusion of paired fundus image and thickness map is conducted for enhanced diagnosis accuracy. On the GAMMA dataset, our COROLLA framework achieves overwhelming glaucoma grading performance compared to state-of-the-art methods.
翻译:青光眼是可能导致失明的眼科疾病之一,早期发现和治疗非常重要。Fundus图像和光学一致性断层摄影(OCT)图像在诊断青光眼时都是广泛使用的模式。然而,现有的青光眼分级方法主要使用单一模式,忽视了Fundus和OCT之间的补充信息。在本文中,我们建议为青光眼分级提供一个有效的多模式监督对比学习框架,名为COROLLA,用于光谱分级。通过层分层以及厚度计算和投影,从原OCT数量中提取视距厚度图,并用作替代模式,从而以较少记忆使用更有效的计算。鉴于医学图像样本在结构上和分布上的高度相似性,我们采用了监督对比性学习,以提高我们模型的区别性力量。此外,为了提高诊断准确性,还进行了配对基金图像和厚度图的地级混凝。在GAMA数据集上,我们的COROLLA框架实现了与州方法相比的压性光谱性水平。