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Automated intraretinal segmentation of SD-OCT images in normal and age-related macular degeneration eyes

机译:正常和年龄相关性黄斑变性眼中SD-OCT图像的自动视网膜内分割

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摘要

This work introduces and evaluates an automated intra-retinal segmentation method for spectral-domain optical coherence (SD-OCT) retinal images. While quantitative assessment of retinal features in SD-OCT data is important, manual segmentation is extremely time-consuming and subjective. We address challenges that have hindered prior automated methods, including poor performance with diseased retinas relative to healthy retinas, and data smoothing that obscures image features such as small retinal drusen. Our novel segmentation approach is based on the iterative adaptation of a weighted median process, wherein a three-dimensional weighting function is defined according to image intensity and gradient properties, and a set of smoothness constraints and pre-defined rules are considered. We compared the segmentation results for 9 segmented outlines associated with intra-retinal boundaries to those drawn by hand by two retinal specialists and to those produced by an independent state-of-the-art automated software tool in a set of 42 clinical images (from 14 patients). These images were obtained with a Zeiss Cirrus SD-OCT system, including healthy, early or intermediate AMD, and advanced AMD eyes. As a qualitative evaluation of accuracy, a highly experienced third independent reader blindly rated the quality of the outlines produced by each method. The accuracy and image detail of our method was superior in healthy and early or intermediate AMD eyes (98.15% and 97.78% of results not needing substantial editing) to the automated method we compared against. While the performance was not as good in advanced AMD (68.89%), it was still better than the manual outlines or the comparison method (which failed in such cases). We also tested our method’s performance on images acquired with a different SD-OCT manufacturer, collected from a large publicly available data set (114 healthy and 255 AMD eyes), and compared the data quantitatively to reference standard markings of the internal limiting membrane and inner boundary of retinal pigment epithelium, producing a mean unsigned positioning error of 6.04 ± 7.83µm (mean under 2 pixels). Our automated method should be applicable to data from different OCT manufacturers and offers detailed layer segmentations in healthy and AMD eyes.
机译:这项工作介绍和评估光谱域光学相干(SD-OCT)视网膜图像的自动视网膜内分割方法。尽管对SD-OCT数据中的视网膜特征进行定量评估很重要,但是手动分割非常耗时且主观。我们解决了阻碍先前自动化方法的挑战,包括相对于健康的视网膜,病变视网膜的性能较差,以及使图像特征(如小视网膜玻璃膜疣)模糊的数据平滑处理。我们新颖的分割方法基于加权中值过程的迭代适应,其中根据图像强度和梯度属性定义了三维加权函数,并考虑了一组平滑度约束和预定义规则。我们比较了9个与视网膜内边界相关的分割轮廓的分割结果,由两个视网膜专家手工绘制的分割结果以及由一套独立的最新自动化软件工具在42个临床图像集中生成的分割结果(来自14例)。这些图像是使用Zeiss Cirrus SD-OCT系统获得的,包括健康的,早期或中期的AMD以及高级的AMD眼睛。作为对准确性的定性评估,经验丰富的第三位独立阅读器盲目评估了每种方法生成的轮廓的质量。与我们所比较的自动化方法相比,在健康,早期或中级AMD眼睛中,我们方法的准确性和图像细节要好(98.15%和97.78%的结果不需要大量编辑)。尽管在先进的AMD中性能不佳(68.89%),但仍优于手册概述或比较方法(在这种情况下失败)。我们还测试了该方法在不同SD-OCT制造商获取的图像上的性能,这些图像是从大量可公开获得的数据集(114眼健康和255眼AMD眼睛)中收集的,并将数据与内部限制膜和内部视网膜色素上皮的边界,平均无符号定位误差为6.04±7.83µm(平均2个像素以下)。我们的自动化方法应适用于来自不同OCT制造商的数据,并在健康和AMD眼中提供详细的图层细分。

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