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Automatic segmentation of up to ten layer boundaries in SD-OCT images of the mouse retina with and without missing layers due to pathology

机译:自动分割老鼠视网膜的SD-OCT图像中多达十层的边界,无论是否存在由于病理造成的缺失

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Accurate quantification of retinal layer thicknesses in mice as seen on optical coherence tomography (OCT) is crucial for the study of numerous ocular and neurological diseases. However, manual segmentation is time-consuming and subjective. Previous attempts to automate this process were limited to high-quality scans from mice with no missing layers or visible pathology. This paper presents an automatic approach for segmenting retinal layers in spectral domain OCT images using sparsity based denoising, support vector machines, graph theory, and dynamic programming (S-GTDP). Results show that this method accurately segments all present retinal layer boundaries, which can range from seven to ten, in wild-type and rhodopsin knockout mice as compared to manual segmentation and has a more accurate performance as compared to the commercial automated Diver segmentation software.
机译:光学相干断层扫描(OCT)所见,对小鼠视网膜层厚度的准确定量对于研究多种眼科和神经科疾病至关重要。但是,手动分段既费时又主观。以前尝试使此过程自动化的尝试仅限于没有缺失层或可见病理的小鼠高质量扫描。本文提出了一种基于稀疏性降噪,支持向量机,图论和动态规划(S-GTDP)的光谱域OCT图像中视网膜层分割方法。结果表明,与手动分割相比,该方法可准确分割野生型和视紫红质基因敲除小鼠中所有当前存在的视网膜层边界,范围从7到10,并且与商用自动Diver分割软件相比,其性能更高。

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