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Optimal Retinal Cyst Segmentation from OCT Images

机译:OCT图像的最佳视网膜囊肿分割

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Accurate and reproducible segmentation of cysts and fluid-filled regions from retinal OCT images is an important step allowing quantification of the disease status, longitudinal disease progression, and response to therapy in wet-pathology retinal diseases. However, segmentation of fluid-filled regions from OCT images is a challenging task due to their inhomogeneous appearance, the unpredictability of their number, size and location, as well as the intensity profile similarity between such regions and certain healthy tissue types. While machine learning techniques can be beneficial for this task, they require large training datasets and are often over-fitted to the appearance models of specific scanner vendors. We propose a knowledge-based approach that leverages a carefully designed cost function and graph-based segmentation techniques to provide a vendor-independent solution to this problem. We illustrate the results of this approach on two publicly available datasets with a variety of scanner vendors and retinal disease status. Compared to a previous machine-learning based approach, the volume similarity error was dramatically reduced from 81.3 ± 56.4% to 22.2 ± 21.3% (paired t-test, p (《) 0.001).
机译:从视网膜OCT图像准确,可再现地分割囊肿和充满液体的区域是重要的步骤,可量化疾病状态,纵向疾病进展以及湿病理性视网膜疾病对治疗的反应。然而,由于OCT图像的外观不均匀,其数量,大小和位置的不可预测性以及这些区域与某些健康组织类型之间的强度分布相似性,从OCT图像中分割出充满液体的区域是一项艰巨的任务。虽然机器学习技术可以帮助完成此任务,但它们需要大量的训练数据集,并且通常过度适合特定扫描仪供应商的外观模型。我们提出了一种基于知识的方法,该方法利用经过精心设计的成本函数和基于图的细分技术来为该问题提供独立于供应商的解决方案。我们在具有各种扫描仪供应商和视网膜疾病状态的两个可公开获得的数据集上说明了该方法的结果。与以前的基于机器学习的方法相比,体积相似性误差从81.3±56.4%显着降低到22.2±21.3%(配对t检验,p(《)0.001)。

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