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Automatic segmentation of canine retinal OCT using adaptive gradient enhancement and region growing

机译:使用自适应梯度增强和区域增长自动分割犬视网膜OCT

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In recent years, several studies have shown that the canine retina model offers important insight for our understanding of human retinal diseases. Several therapies developed to treat blindness in such models have already moved onto human clinical trials, with more currently under development [1]. Optical coherence tomography (OCT) offers a high resolution imaging modality for performing in-vivo analysis of the retinal layers. However, existing algorithms for automatically segmenting and analyzing such data have been mostly focused on the human retina. As a result, canine retinal images are often still being analyzed using manual segmentations, which is a slow and laborious task. In this work, we propose a method for automatically segmenting 5 boundaries in canine retinal OCT. The algorithm employs the position relationships between different boundaries to adaptively enhance the gradient map. A region growing algorithm is then used on the enhanced gradient maps to find the five boundaries separately. The automatic segmentation was compared against manual segmentations showing an average absolute error of 5.82 ± 4.02 microns.
机译:近年来,一些研究表明,犬视网膜模型为我们对人类视网膜疾病的理解提供了重要的见识。在这种模型中开发出的几种治疗失明的疗法已经转移到人体临床试验中,目前正在开发中[1]。光学相干断层扫描(OCT)提供了高分辨率的成像方式,可以对视网膜层进行体内分析。然而,用于自动分割和分析此类数据的现有算法主要集中在人类视网膜上。结果,经常仍使用手动分割来分析犬的视网膜图像,这是一项缓慢而费力的任务。在这项工作中,我们提出了一种自动分割犬视网膜OCT中5个边界的方法。该算法利用不同边界之间的位置关系来自适应地增强梯度图。然后在增强的梯度图上使用区域增长算法来分别找到五个边界。将自动分割与手动分割进行了比较,结果显示平均绝对误差为5.82±4.02微米。

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