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首页> 外文期刊>Medical Imaging, IEEE Transactions on >Three-Dimensional Analysis of Retinal Layer Texture: Identification of Fluid-Filled Regions in SD-OCT of the Macula
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Three-Dimensional Analysis of Retinal Layer Texture: Identification of Fluid-Filled Regions in SD-OCT of the Macula

机译:视网膜层纹理的三维分析:黄斑SD-OCT中充液区域的识别

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摘要

Optical coherence tomography (OCT) is becoming one of the most important modalities for the noninvasive assessment of retinal eye diseases. As the number of acquired OCT volumes increases, automating the OCT image analysis is becoming increasingly relevant. In this paper, a method for automated characterization of the normal macular appearance in spectral domain OCT (SD-OCT) volumes is reported together with a general approach for local retinal abnormality detection. Ten intraretinal layers are first automatically segmented and the 3-D image dataset flattened to remove motion-based artifacts. From the flattened OCT data, 23 features are extracted in each layer locally to characterize texture and thickness properties across the macula. The normal ranges of layer-specific feature variations have been derived from 13 SD-OCT volumes depicting normal retinas. Abnormalities are then detected by classifying the local differences between the normal appearance and the retinal measures in question. This approach was applied to determine footprints of fluid-filled regions—SEADs (Symptomatic Exudate-Associated Derangements)—in 78 SD-OCT volumes from 23 repeatedly imaged patients with choroidal neovascularization (CNV), intra-, and sub-retinal fluid and pigment epithelial detachment. The automated SEAD footprint detection method was validated against an independent standard obtained using an interactive 3-D SEAD segmentation approach. An area under the receiver-operating characteristic curve of $0.961 pm 0.012$ was obtained for the classification of vertical, cross-layer, macular columns. A study performed on 12 pairs of OCT volumes obtained from the same eye on the same day shows that the repeatability of the automated method is comparable to that of the human experts. This work demonstrates that useful 3-D textural information can be extracted from SD-OCT scans and—together with -n-nan anatomical atlas of normal retinas—can be used for clinically important applications.
机译:光学相干断层扫描(OCT)正成为非侵入性评估视网膜眼病的最重要方式之一。随着获取的OCT数量的增加,自动化OCT图像分析变得越来越重要。在本文中,报告了一种在频谱域OCT(SD-OCT)量中自动表征正常黄斑外观的方法,以及一种用于局部视网膜异常检测的通用方法。首先会自动分割十个视网膜内层,并对3-D图像数据集进行展平以去除基于运动的伪像。从平坦的OCT数据中,在每个图层中局部提取23个特征,以表征整个黄斑的纹理和厚度属性。特定于图层的特征变化的正常范围已从描述正常视网膜的13个SD-OCT体积中得出。然后,通过对正常外观和所讨论的视网膜测量之间的局部差异进行分类来检测异常。该方法适用于确定来自23例反复成像的脉络膜新生血管(CNV),视网膜内和视网膜下液和色素的患者的78个SD-OCT体积中的液体填充区域SEAD(有症状的渗出液相关排列)的足迹。上皮脱离。针对使用交互式3-D SEAD分割方法获得的独立标准,对自动SEAD足迹检测方法进行了验证。接收器工作特性曲线下的面积为0.961 pm 0.012 $,可用于对垂直,跨层,黄斑柱进行分类。对同一天从同一只眼睛获得的12对OCT体积进行的一项研究表明,自动化方法的可重复性与人类专家的可重复性相当。这项工作表明,可以从SD-OCT扫描中提取有用的3-D纹理信息,并与正常视网膜的-n-nan解剖图集一起用于临床上重要的应用。

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