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Arterioles and Venules Classification in Retinal Images Using Fully Convolutional Deep Neural Network

机译:使用完全卷积的深神经网络在视网膜图像中的动脉瘤和Visules分类

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The abnormalities in size, shape and other morphological attributes of retinal vasculature have been prospectively associated as a physio-marker and predictor of many microvascular, systemic and ophthalmic diseases. The progression of retinopathy has a very different evolution in venules and arterioles with some biomarkers associated with only one type of vessel. The robust classification of retinal vasculature into arteriole/venule (AV) is the first step in the development of automated system for analyzing the vasculature biomarker association with disease prognosis. This paper presents an encoder-decoder based fully convolutional deep neural network for pixel level classification of retinal vasculature into arterioles and venules. The feature learning and inference will be done directly from the image without the requiring the segmented vasculature as a preliminary step. The complex patterns are automatically learned from the retinal image without requiring the handcrafted features. The methodology is trained and evaluated on a subset of the images collection obtained from a population-based study in the UK (EPIC Norfolk), producing 93.5% detection rate. This proposed technique will be optimized further and may replace the AV classification module in the QUARTZ software which is developed earlier by our research group.
机译:视网膜脉管系统的大小,形状和其他形态学属性的异常已被前瞻性地作为许多微血管,全身和眼科疾病的物理标记和预测因子。视网膜病变的进展在Visules和动脉瘤中具有非常不同的演变,其中一些生物标志物只与一种类型的血管相关联。视网膜脉管系统进入血管/ venule(AV)的鲁棒分类是用于分析血管系统生物标志物与疾病预后的自动化系统的第一步。本文介绍了基于编码器解码器的全卷积深神经网络,用于视网膜脉管系统进入动脉瘤和静脉的像素水平分类。特征学习和推断将直接从图像完成,而不需要将分段的脉管系统视为初步步骤。复杂模式从视网膜图像自动学习,而不需要手工制作功能。该方法培训并评估从英国(EPIC NORFOLK)的基于人群的研究中获得的图像收集的子集,产生93.5%的检测率。该提出的技术将进一步优化,可以更换在我们的研究组早期开发的石英软件中的AV分类模块。

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