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首页> 外文期刊>Biomedical Optics Express >Accurate tissue interface segmentation via adversarial pre-segmentation of anterior segment OCT images
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Accurate tissue interface segmentation via adversarial pre-segmentation of anterior segment OCT images

机译:通过对抗性前段OCT图像的预先分割来准确进行组织界面分割

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Optical Coherence Tomography (OCT) is an imaging modality that has been widely adopted for visualizing corneal, retinal and limbal tissue structure with micron resolution. It can be used to diagnose pathological conditions of the eye, and for developing pre-operative surgical plans. In contrast to the posterior retina, imaging the anterior tissue structures, such as the limbus and cornea, results in B-scans that exhibit increased speckle noise patterns and imaging artifacts. These artifacts, such as shadowing and specularity, pose a challenge during the analysis of the acquired volumes as they substantially obfuscate the location of tissue interfaces. To deal with the artifacts and speckle noise patterns and accurately segment the shallowest tissue interface, we propose a cascaded neural network framework, which comprises of a conditional Generative Adversarial Network (cGAN) and a Tissue Interface Segmentation Network (TISN). The cGAN pre-segments OCT B-scans by removing undesired specular artifacts and speckle noise patterns just above the shallowest tissue interface, and the TISN combines the original OCT image with the pre-segmentation to segment the shallowest interface. We show the applicability of the cascaded framework to corneal datasets, demonstrate that it precisely segments the shallowest corneal interface, and also show its generalization capacity to limbal datasets. We also propose a hybrid framework, wherein the cGAN pre-segmentation is passed to a traditional image analysis-based segmentation algorithm, and describe the improved segmentation performance. To the best of our knowledge, this is the first approach to remove severe specular artifacts and speckle noise patterns (prior to the shallowest interface) that affects the interpretation of anterior segment OCT datasets, thereby resulting in the accurate segmentation of the shallowest tissue interface. To the best of our knowledge, this is the first work to show the potential of incorporating a cGAN into larger deep learning frameworks for improved corneal and limbal OCT image segmentation. Our cGAN design directly improves the visualization of corneal and limbal OCT images from OCT scanners, and improves the performance of current OCT segmentation algorithms.
机译:光学相干断层扫描(OCT)是一种成像方式,已广泛用于以微米分辨率可视化角膜,视网膜和角膜缘组织结构。它可以用于诊断眼睛的病理状况,以及制定术前手术计划。与后视网膜相反,对前组织结构(如角膜缘和角膜)进行成像会导致B扫描显示斑点噪声模式和成像伪影增加。这些伪影(例如阴影和镜面反射)在对采集到的体积进行分析时提出了挑战,因为它们会严重混淆组织界面的位置。为了处理伪影和斑点噪声模式并准确分割最浅的组织界面,我们提出了一个级联神经网络框架,该框架由条件生成对抗网络(cGAN)和组织界面分割网络(TISN)组成。 cGAN通过在最浅的组织界面上方去除不希望的镜面伪影和斑点噪声图案来对OCT B进行预分割,TISN将原始OCT图像与预分割相结合,以分割最浅的界面。我们展示了级联框架对角膜数据集的适用性,证明了它精确地分割了最浅的角膜界面,并且还显示了其对角膜缘数据集的泛化能力。我们还提出了一种混合框架,其中将cGAN预分段传递给基于图像分析的传统分段算法,并描述改进的分段性能。据我们所知,这是消除严重的镜面伪影和斑点噪声模式(在最浅的界面之前)的第一种方法,这会影响前节OCT数据集的解释,从而实现对最浅的组织界面的精确分割。据我们所知,这是首次展示将cGAN纳入更大的深度学习框架以改善角膜和角膜OCT图像分割的潜力的工作。我们的cGAN设计直接改善了来自OCT扫描仪的角膜和角膜OCT图像的可视化,并提高了当前OCT分割算法的性能。

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