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

被引:125
|
作者
Vermeer, K. A. [1 ]
van der Schoot, J. [1 ,2 ]
Lemij, H. G. [2 ]
de Boer, J. F. [1 ,3 ,4 ]
机构
[1] Rotterdam Eye Hosp, Rotterdam Ophthalm Inst, NL-3000 LM Rotterdam, Netherlands
[2] Rotterdam Eye Hosp, Glaucoma Serv, NL-3000 LM Rotterdam, Netherlands
[3] Vrije Univ Amsterdam, Dept Phys & Astron, NL-1081 HV Amsterdam, Netherlands
[4] Vrije Univ Amsterdam, LaserLaB Amsterdam, NL-1081 HV Amsterdam, Netherlands
来源
BIOMEDICAL OPTICS EXPRESS | 2011年 / 2卷 / 06期
关键词
OPTICAL COHERENCE TOMOGRAPHY; BIREFRINGENCE; THICKNESS;
D O I
10.1364/BOE.2.001743
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
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 mu m, while the errors for intra-retinal interfaces were between 6 and 15 mu m. 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. (C) 2011 Optical Society of America
引用
收藏
页码:1743 / 1756
页数:14
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