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Automated segmentation by pixel classification of retinal layers in ophthalmic OCT images

机译:通过眼科OCT图像中视网膜层的像素分类自动分割

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摘要

Current OCT devices provide three-dimensional (3D) in-vivo images of the human retina. The resulting very large data sets are difficult to manually assess. Automated segmentation is required to automatically process the data and produce images that are clinically useful and easy to interpret. In this paper, we present a method to segment the retinal layers in these images. Instead of using complex heuristics to define each layer, simple features are defined and machine learning classifiers are trained based on manually labeled examples. When applied to new data, these classifiers produce labels for every pixel. After regularization of the 3D labeled volume to produce a surface, this results in consistent, three-dimensionally segmented layers that match known retinal morphology. Six labels were defined, corresponding to the following layers: Vitreous, retinal nerve fiber layer (RNFL), ganglion cell layer & inner plexiform layer, inner nuclear layer & outer plexiform layer, photoreceptors & retinal pigment epithelium and choroid. For both normal and glaucomatous eyes that were imaged with a Spectralis (Heidelberg Engineering) OCT system, the five resulting interfaces were compared between automatic and manual segmentation. RMS errors for the top and bottom of the retina were between 4 and 6 μm, while the errors for intra-retinal interfaces were between 6 and 15 μm. The resulting total retinal thickness maps corresponded with known retinal morphology. RNFL thickness maps were compared to GDx (Carl Zeiss Meditec) thickness maps. Both maps were mostly consistent but local defects were better visualized in OCT-derived thickness maps.
机译:当前的OCT设备提供人视网膜的三维(3D)体内图像。产生的非常大的数据集很难手动评估。需要自动分割以自动处理数据并产生临床上有用且易于解释的图像。在本文中,我们提出了一种在这些图像中分割视网膜层的方法。代替使用复杂的启发式方法来定义每个层,而是定义了简单的功能,并基于手动标记的示例训练了机器学习分类器。当应用于新数据时,这些分类器为每个像素生成标签。在对3D标记的体积进行正则化以生成表面后,这会导致与已知的视网膜形态相匹配的一致的三维分割层。定义了六个标记,分别对应以下几层:玻璃体,视网膜神经纤维层(RNFL),神经节细胞层和内部丛状层,内部核层和外部丛状层,感光细胞和视网膜色素上皮和脉络膜。对于使用Spectralis(海德堡工程公司)OCT系统成像的正常眼和青光眼,在自动分割和手动分割之间比较了五个结果界面。视网膜顶部和底部的RMS误差在4至6μm之间,而视网膜内界面的误差在6至15μm之间。所得的总视网膜厚度图与已知的视网膜形态相对应。将RNFL厚度图与GDx(卡尔·蔡司Meditec)厚度图进行了比较。两种图大多数都是一致的,但是在OCT得出的厚度图中可以更好地显示局部缺陷。

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