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Retinal layer segmentation of macular OCT images using boundary classification

机译:使用边界分类的黄斑OCT图像视网膜层分割

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Optical coherence tomography (OCT) has proven to be an essential imaging modality for ophthalmology and is proving to be very important in neurology. OCT enables high resolution imaging of the retina, both at the optic nerve head and the macula. Macular retinal layer thicknesses provide useful diagnostic information and have been shown to correlate well with measures of disease severity in several diseases. Since manual segmentation of these layers is time consuming and prone to bias, automatic segmentation methods are critical for full utilization of this technology. In this work, we build a random forest classifier to segment eight retinal layers in macular cube images acquired by OCT. The random forest classifier learns the boundary pixels between layers, producing an accurate probability map for each boundary, which is then processed to finalize the boundaries. Using this algorithm, we can accurately segment the entire retina contained in the macular cube to an accuracy of at least 4.3 microns for any of the nine boundaries. Experiments were carried out on both healthy and multiple sclerosis subjects, with no difference in the accuracy of our algorithm found between the groups.
机译:光学相干断层扫描(OCT)已被证明是眼科必不可少的成像方法,并且在神经病学中被证明非常重要。 OCT能够在视神经头和黄斑处对视网膜进行高分辨率成像。黄斑视网膜层厚度提供有用的诊断信息,并已显示出与几种疾病中疾病严重程度的度量良好相关。由于这些层的手动分段非常耗时且容易产生偏差,因此自动分段方法对于充分利用该技术至关重要。在这项工作中,我们建立了一个随机森林分类器,以对OCT采集的黄斑立方体图像中的八个视网膜层进行分割。随机森林分类器学习各层之间的边界像素,为每个边界生成准确的概率图,然后对其进行处理以最终确定边界。使用此算法,对于九个边界中的任何一个,我们都可以准确地将包含在黄斑区中的整个视网膜分割为至少4.3微米的精度。实验针对健康和多发性硬化症受试者进行,两组之间我们算法的准确性没有差异。

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