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Snakules for automatic classification of candidate spiculated mass locations on mammography

机译:在乳腺X线摄影术上自动对候选加味块位置进行分类的Snakules

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In this paper, we describe a novel approach for the automatic classification of candidate spiculated mass locations on mammography. Our approach is based on “Snakules” — an evidence-based active contour algorithm that we have recently developed for the annotation of spicules on mammography. We use snakules to extract features characteristic of spicules and spiculated masses, and use these features to classify whether a region of a mammogram contains a spiculated mass or not. The results from our initial classification experiment demonstrate the strong potential of snakules as an image analysis technique to extract features specific to spicules and spiculated masses, which can subsequently be used to distinguish true spiculated mass locations from non-lesion locations on a mammogram and improve the specificity of computer-aided detection (CADe) algorithms.
机译:在本文中,我们描述了一种在乳房X线照相术上自动对候选加味块位置进行自动分类的新方法。我们的方法基于“ Snakules”-一种基于证据的主动轮廓算法,我们最近针对乳房X线照相术中的针头注释开发了该算法。我们使用snakules来提取针状和针状团块的特征,并使用这些特征来对乳房X线照片的区域是否包含针状团块进行分类。我们最初分类实验的结果表明,作为一种图像分析技术,snakules具有强大的潜力,可以提取针状和针状肿块特有的特征,随后可以将其用于区分乳房X线照片上的真正的针状肿块位置与非病变部位,并改善针刺和针状肿块的位置。计算机辅助检测(CADe)算法的特异性。

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