IEEE J Biomed Health Inform. 2020 Dec;24(12):3408-3420. doi: 10.1109/JBHI.2020.3023144. Epub 2020 Dec 4.
The choroid provides oxygen and nourishment to the outer retina thus is related to the pathology of various ocular diseases. Optical coherence tomography (OCT) is advantageous in visualizing and quantifying the choroid in vivo. However, its application in the study of the choroid is still limited for two reasons. (1) The lower boundary of the choroid (choroid-sclera interface) in OCT is fuzzy, which makes the automatic segmentation difficult and inaccurate. (2) The visualization of the choroid is hindered by the vessel shadows from the superficial layers of the inner retina. In this paper, we propose to incorporate medical and imaging prior knowledge with deep learning to address these two problems. We propose a biomarker-infused global-to-local network (Bio-Net) for the choroid segmentation, which not only regularizes the segmentation via predicted choroid thickness, but also leverages a global-to-local segmentation strategy to provide global structure information and suppress overfitting. For eliminating the retinal vessel shadows, we propose a deep-learning pipeline, which firstly locate the shadows using their projection on the retinal pigment epithelium layer, then the contents of the choroidal vasculature at the shadow locations are predicted with an edge-to-texture generative adversarial inpainting network. The results show our method outperforms the existing methods on both tasks. We further apply the proposed method in a clinical prospective study for understanding the pathology of glaucoma, which demonstrates its capacity in detecting the structure and vascular changes of the choroid related to the elevation of intra-ocular pressure.
脉络膜为视网膜外层提供氧气和营养,因此与各种眼部疾病的病理有关。光学相干断层扫描(OCT)在活体中观察和量化脉络膜方面具有优势。然而,由于以下两个原因,其在脉络膜研究中的应用仍然受到限制。(1)OCT 中脉络膜的下边界(脉络膜-巩膜界面)较模糊,使得自动分割变得困难且不准确。(2)浅层视网膜内的血管阴影阻碍了脉络膜的可视化。在本文中,我们提出将医学和成像先验知识与深度学习相结合来解决这两个问题。我们提出了一种用于脉络膜分割的基于生物标志物的全局到局部网络(Bio-Net),该网络不仅通过预测的脉络膜厚度进行分割正则化,而且还利用全局到局部的分割策略提供全局结构信息并抑制过拟合。为了消除视网膜血管阴影,我们提出了一种深度学习管道,该管道首先使用它们在视网膜色素上皮层上的投影来定位阴影,然后使用边缘到纹理生成对抗性网络预测阴影位置处脉络膜血管的内容。结果表明,我们的方法在这两个任务上均优于现有的方法。我们进一步将所提出的方法应用于一项临床前瞻性研究中,以了解青光眼的病理,这表明它具有检测与眼内压升高相关的脉络膜结构和血管变化的能力。