Optical coherence tomography angiography (OCTA) can non-invasively image the eye's circulatory system. In order to reliably characterize the retinal vasculature, there is a need to automatically extract quantitative metrics from these images. The calculation of such biomarkers requires a precise semantic segmentation of the blood vessels. However, deep-learning-based methods for segmentation mostly rely on supervised training with voxel-level annotations, which are costly to obtain. In this work, we present a pipeline to synthesize large amounts of realistic OCTA images with intrinsically matching ground truth labels; thereby obviating the need for manual annotation of training data. Our proposed method is based on two novel components: 1) a physiology-based simulation that models the various retinal vascular plexuses and 2) a suite of physics-based image augmentations that emulate the OCTA image acquisition process including typical artifacts. In extensive benchmarking experiments, we demonstrate the utility of our synthetic data by successfully training retinal vessel segmentation algorithms. Encouraged by our method's competitive quantitative and superior qualitative performance, we believe that it constitutes a versatile tool to advance the quantitative analysis of OCTA images.
翻译:在这项工作中,我们展示了一条管道,将大量现实的OCTA图像与内在相匹配的地面真相标签结合起来,从而消除了人工说明培训数据的必要性。我们提议的方法基于两个新构件:1)基于生理的模拟,以模拟各种视线血管的双向用途和2)一套基于物理的图像增强装置,它与OCTA图像获取过程相仿,我们相信,我们的方法具有竞争性的定量和高级质量分析。