乳房x光检查中新的质量描述

I. Cheikhrouhou, K. Djemal, D. Sellami, H. Maaref, N. Derbel
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引用次数: 10

摘要

在这篇文章中,我们提出了一种新的质量描述,用于区分乳房x光检查中不同的质量形状。这种区分的目的是为了达到一个更好的乳房x线摄影分类率,以便放射科医生作为第二意见来最终决定乳房x线摄影图像的恶性概率。因此,我们使用了一个几何特征,即周长测量(P)和3个形态学特征,这些特征通过区分边缘形状和针状形状来关注质量边界。这些特征包括:轮廓导数变化(CDV)、骨架端点(SEP),并提出了一个新的特征Spiculation (SPICUL)。逐一评估其表现,然后将其收集到乳房x线摄影中分为4个BIRADS类别。在分类方面,我们使用具有高斯核的支持向量机(SVM)作为分类器,因为它具有更高的性能。我们的轮廓特征模型用于恶性肿瘤分类的准确率在两类模型(恶性和良性)的情况下为93%,在4类模型(BIRADS I,II,III和IV)中为85.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
New mass description in mammographies
In this article, we present a new mass description dedicated to differentiate between different mass shapes in mammography. This discrimination aims to reach a better mammography classification rate to be used by radiologists as a second opinion to make the final decision about the malignancy probability of radiographic breast images. Therefore, we used a geometrical feature which is perimeter measurement (P) and 3 morphological features which focus on mass borders by discriminating circumscribed from spiculated shapes. These features are: contour derivative variation (CDV), skeleton end points (SEP) and we propose a new one noted Spiculation (SPICUL). Their performance were evaluated one by one before collecting them for mammography classification into the 4 BIRADS categories. For classification, we used support vector machine (SVM) with Gaussian kernel as classifier for its higher performance. The accuracy of our model with contour features for classifying malignancies was 93% in the case of two class model (malignant and benign) and 85.7% in the 4 class model (BIRADS I,II,III and IV).
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