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基于混合区域信息的无限边界主动轮廓模型在视网膜图像中的自动血管分割应用。

Automated Vessel Segmentation Using Infinite Perimeter Active Contour Model with Hybrid Region Information with Application to Retinal Images.

出版信息

IEEE Trans Med Imaging. 2015 Sep;34(9):1797-807. doi: 10.1109/TMI.2015.2409024. Epub 2015 Mar 5.

DOI:10.1109/TMI.2015.2409024
PMID:25769147
Abstract

Automated detection of blood vessel structures is becoming of crucial interest for better management of vascular disease. In this paper, we propose a new infinite active contour model that uses hybrid region information of the image to approach this problem. More specifically, an infinite perimeter regularizer, provided by using L(2) Lebesgue measure of the γ -neighborhood of boundaries, allows for better detection of small oscillatory (branching) structures than the traditional models based on the length of a feature's boundaries (i.e., H(1) Hausdorff measure). Moreover, for better general segmentation performance, the proposed model takes the advantage of using different types of region information, such as the combination of intensity information and local phase based enhancement map. The local phase based enhancement map is used for its superiority in preserving vessel edges while the given image intensity information will guarantee a correct feature's segmentation. We evaluate the performance of the proposed model by applying it to three public retinal image datasets (two datasets of color fundus photography and one fluorescein angiography dataset). The proposed model outperforms its competitors when compared with other widely used unsupervised and supervised methods. For example, the sensitivity (0.742), specificity (0.982) and accuracy (0.954) achieved on the DRIVE dataset are very close to those of the second observer's annotations.

摘要

自动检测血管结构对于更好地管理血管疾病变得至关重要。在本文中,我们提出了一种新的无限主动轮廓模型,该模型利用图像的混合区域信息来解决这个问题。更具体地说,一种无限边界正则化项,由边界的γ邻域的 L(2)Lebesgue 测度提供,允许比基于特征边界长度的传统模型(即 H(1)Hausdorff 测度)更好地检测小的振荡(分支)结构。此外,为了获得更好的整体分割性能,所提出的模型利用了不同类型的区域信息,例如强度信息和基于局部相位的增强图的组合。基于局部相位的增强图用于在保留血管边缘方面的优势,而给定的图像强度信息将保证正确的特征分割。我们通过将其应用于三个公共视网膜图像数据集(两个彩色眼底摄影数据集和一个荧光血管造影数据集)来评估所提出模型的性能。与其他广泛使用的无监督和监督方法相比,所提出的模型在性能上表现更优。例如,在 DRIVE 数据集上获得的灵敏度(0.742)、特异性(0.982)和准确性(0.954)非常接近第二位观察者的注释。

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