一种基于卷积神经网络的视网膜血管描绘监督方法

Qiaoliang Li, L. Xie, Qian Zhang, S. Qi, Ping Liang, Huisheng Zhang, Tianfu Wang
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引用次数: 11

摘要

视网膜血管圈定具有重要的临床应用价值,是目前研究的热点。在过去的几十年里,已经提出了几种方法。在这里,我们将提出一种新的有监督的视网膜血管分割方法。该方法旨在探索视网膜图像与其相应血管标签图之间的复杂关系。具体来说,为了建立描述视网膜图像到血管图直接转换的模型,我们引入了具有足够强的诱导能力的深度卷积神经网络(简称CNN)。为了构造整个船舶概率图,我们还设计了一种综合方法。我们的方法在DRIVE数据集上表现出比目前报道的最先进的方法在灵敏度(缩写为Se),特异性(缩写为Sp)和准确性(缩写为Acc)方面更好的性能。该方法在现有的眼科疾病计算机辅助诊断系统中具有很大的应用潜力。同时,该方法可为其他领域的分割提供一种新颖的通用计算框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A supervised method using convolutional neural networks for retinal vessel delineation
Retinal vessel delineation is a hot research topic owing to its importance in a lot of clinic application. Several methods have been proposed in the past decades. Here we will present a new supervised method for retinal vessel segmentation. The method is designed to explore the complex relationship between retinal images and their corresponding vessel label maps. Specifically, in order to build a model describing the direct transformation from retinal image to vessel map, we introduce a deep convolutional neural network (abbreviation as CNN), which has strong enough induction ability. For the purpose of constructing the whole vessel probability map, we also design a synthesis method. Our method shows better performance on DRIVE dataset than state-of-the-art of reported approaches in the light of sensitivity (abbreviation as Se), specificity (abbreviation as Sp) and accuracy (abbreviation as Acc). Our proposed method has great potential to be applied in existing computer-assisted diagnostic system of ophthalmologic diseases. Meanwhile, the method may offer a novel, general computing framework for segmentation in other fields.
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