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使用尺度自适应斑点分析和半监督学习进行微动脉瘤的自动检测。

Automated detection of microaneurysms using scale-adapted blob analysis and semi-supervised learning.

机构信息

Université de Bourgogne, Laboratoire Le2i UMR CNRS 6306, Le Creusot 71200, France.

Université de Bourgogne, Laboratoire Le2i UMR CNRS 6306, Le Creusot 71200, France.

出版信息

Comput Methods Programs Biomed. 2014 Apr;114(1):1-10. doi: 10.1016/j.cmpb.2013.12.009. Epub 2014 Jan 7.

DOI:10.1016/j.cmpb.2013.12.009
PMID:24529636
Abstract

Despite several attempts, automated detection of microaneurysm (MA) from digital fundus images still remains to be an open issue. This is due to the subtle nature of MAs against the surrounding tissues. In this paper, the microaneurysm detection problem is modeled as finding interest regions or blobs from an image and an automatic local-scale selection technique is presented. Several scale-adapted region descriptors are introduced to characterize these blob regions. A semi-supervised based learning approach, which requires few manually annotated learning examples, is also proposed to train a classifier which can detect true MAs. The developed system is built using only few manually labeled and a large number of unlabeled retinal color fundus images. The performance of the overall system is evaluated on Retinopathy Online Challenge (ROC) competition database. A competition performance measure (CPM) of 0.364 shows the competitiveness of the proposed system against state-of-the art techniques as well as the applicability of the proposed features to analyze fundus images.

摘要

尽管进行了多次尝试,但从数字眼底图像中自动检测微动脉瘤 (MA) 仍然是一个悬而未决的问题。这是由于 MA 与周围组织的细微性质所致。在本文中,将微动脉瘤检测问题建模为从图像中找到感兴趣的区域或斑点,并提出了一种自动局部尺度选择技术。引入了几种尺度自适应的区域描述符来描述这些斑点区域。还提出了一种基于半监督学习的方法,该方法仅需要少量手动标注的学习示例来训练可以检测真正 MA 的分类器。该系统仅使用少量手动标记和大量未标记的视网膜彩色眼底图像构建。在视网膜病变在线挑战赛 (ROC) 竞赛数据库上评估了整个系统的性能。竞争绩效指标 (CPM) 为 0.364,表明与最先进技术相比,所提出的系统具有竞争力,并且所提出的特征适用于分析眼底图像。

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