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Automated 3-D Segmentation of Intraretinal Layers from Optic Nerve Head Optical Coherence Tomography Images

机译:从视神经头光学相干断层扫描图像中自动三维分段intraretinal层

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摘要

Optical coherence tomography (OCT), being a noninvasive imaging modality, has begun to find vast use in the diagnosis and management of ocular diseases such as glaucoma, where the retinal nerve fiber layer (RNFL) has been known to thin. Furthermore, the recent availability of considerably larger volumetric data with spectral-domain OCT has increased the need for new processing techniques. In this paper, we present an automated 3-D graph-theoretic approach for the segmentation of 7 surfaces (6 layers) of the retina from 3-D spectral-domain OCT images centered on the optic nerve head (ONH). The multiple surfaces are detected simultaneously through the computation of a minimum-cost closed set in a vertex-weighted graph constructed using edge/regional information, and subject to a priori determined varying surface interaction and smoothness constraints. The method also addresses the challenges posed by the presence of the large blood vessels and the optic disc. The algorithm was compared to the average manual tracings of two observers on a total of 15 volumetric scans, and the border positioning error was found to be 7.25 ± 1.08 pm and 8.94 ± 3.76 μm for the normal and glaucomatous eyes, respectively. The RNFL thickness was also computed for 26 normal and 70 glaucomatous scans where the glaucomatous eyes showed a significant thinning (p < 0.01, mean thickness 73.7 ± 32.7 μm in normal eyes versus 60.4 ± 25.2 μm in glaucomatous eyes).
机译:光学相干断层扫描(OCT),是一种非侵入性的成像模态,已经开始寻找在眼疾病如青光眼,其中所述视网膜神经纤维层(RNFL)已被公知的薄的诊断和管理广阔的用途。此外,最近用谱域OCT大得多的体积数据的可用性增加了对新的处理技术的需要。在本文中,我们提出了的视网膜的7面(6层)由3- d谱域的分割的OCT图像的视神经乳头(ONH)为中心的自动3-d图论的方法。的多个表面被同时检测通过最低成本的计算在一个顶点加权图闭集使用边缘/区域的信息,并受的先验确定的变化的表面相互作用和平滑度约束构造。该方法还解决了由大血管的存在和视盘所带来的挑战。该算法相比于总共15个体积扫描两个观察者的平均手动描记,并且发现边界定位误差为7.25±1.08时和8.94±3.76微米的正常和青光眼,分别。的RNFL厚度也计算了26次正常和70青光眼扫描,其中青光眼呈显著变薄(P <0.01,平均厚度73.7±32.7微米的正常的眼睛与在青光眼患者60.4±25.2微米)。

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