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Comparative and Behavioural Analysis of a Diffuse Paradigm for the Evaluation of Diabetic Macular Edema in OCT images

机译:OCT图像中糖尿病黄斑水肿评估弥漫范式的比较和行为分析

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Nowadays, Diabetic Macular Edema (DME) is one of the leading causes of blindness in developed countries, and its characterized by the presence of pathological fluid accumulations inside the retinal layers. Currently, the main way to detect these fluid accumulations (as well as their severity) is through the use of Optical Coherence Tomography (OCT) imaging. In particular, this ophthalmological image modality allows a precise non-invasive analysis of the morphology of the retina and its structures. Due to the complexity of attempting to successfully segment these fluid accumulations, an alternative paradigm for their detection has been recently proposed. This paradigm, based on a diffuse representation of the pathological regions, creates an intuitive representation of the pathological regions based on a confidence map. Currently, there are only two approaches for this paradigm: one based on a predefined library of texture and intensity features with established machine learning algorithms and other based on deep learning methods. Both approaches have proven to offer satisfactory results, but each one of them performs better in different scenarios. In this work, we perform a complete analysis and comparison on the behaviour and performance of both strategies in a clinical screening scenario to evaluate the suitability of both approaches for the clinical practice as well as their performance as computer vision strategies.
机译:如今,糖尿病黄斑水肿(DME)是发达国家失明的主要原因之一,其特征在于视网膜层内部的病理流体积累。目前,通过使用光学相干断层扫描(OCT)成像来检测这些流体累加(以及它们的严重程度)的主要方式。特别地,这种眼科图像模型允许对视网膜和结构的形态进行精确的非侵入性分析。由于尝试成功分割这些流体累积的复杂性,最近提出了其检测的替代范式。该范例基于病理区域的漫射表示,基于置信地图创造了病理区域的直观表示。目前,此范例只有两种方法:一个基于预定义的纹理和强度特征库,基于建立的机器学习算法和基于深度学习方法。这两种方法都证明了提供令人满意的结果,但它们中的每一个在不同的场景中表现更好。在这项工作中,我们对临床筛查方案中两种策略的行为和性能进行了完整的分析和比较,以评估两种方法对临床实践的适用性以及作为计算机视觉策略的表现。

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