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An integrated framework for automatic clinical assessment of diabetic retinopathy grade using spectral domain OCT images

机译:使用光谱域OCT图像自动评估糖尿病性视网膜病变等级的综合框架

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Diabetic retinopathy (DR) is a progressive disease and its detection at an early stage is crucial for saving a patient's vision. In this paper, an enhanced computer-assisting diagnostic (CAD) system is developed for the discovery and grading of non-proliferative DR from optical coherence tomography (OCT) images. The proposed CAD system elaborates three sequential stages. Initially, 12 distinct retina layers are localized using our previously developed segmentation approach based on an integrated joint model that combines shape, intensity, and spatial information. Secondly, three features, namely the reflectivity, curvature, and thickness are quantitatively measured from the segmented layers. Finally, a two-stage deep fusion classification network (DFCN), trained by stacked non-negativity constraint autoencoder (SNCAE), is used first to classify the subject as normal or DR, then assess the grade of DR as either early stage or mild/moderate. Using "leave-one-subject-out" experiments on a dataset of 74 OCT images, the CAD system distinguished between normal and DR subjects with a 93% accuracy (sensitivity =91%, specificity =97%) and achieved a 98% correct classification between early stage and mild/moderate DR. These results confirm the proposed framework as a reliable non-invasive diagnostic tool.
机译:糖尿病性视网膜病(DR)是一种进行性疾病,其早期发现对于挽救患者的视力至关重要。本文中,开发了一种增强的计算机辅助诊断(CAD)系统,用于从光学相干断层扫描(OCT)图像中发现和分级非增殖性DR。所提出的CAD系统详细说明了三个连续的阶段。最初,使用我们先前开发的分割方法,基于结合形状,强度和空间信息的集成关节模型,对12个不同的视网膜层进行定位。其次,从分割的层中定量地测量了三个特征,即反射率,曲率和厚度。最后,由堆叠式非负性约束自动编码器(SNCAE)训练的两阶段深度融合分类网络(DFCN)首先用于将受试者分类为正常或DR,然后将DR的等级评估为早期或轻度/中等。使用74个OCT图像的数据集上的“留一对象”实验,CAD系统以93 \%的准确度(灵敏度= 91 \%,特异性= 97 \%)区分正常受试者和DR受试者,并实现了早期和轻度/中度DR之间有98%的正确分类。这些结果证实了所提出的框架是可靠的非侵入性诊断工具。

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