Feature Extraction from Contours Shape for Tumor Analyzing in Mammographic Images

Atef Boujelben, A. Chaabani, Hedi Tmar, M. Abid
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引用次数: 16

Abstract

The cancer treatment is effective only if it is detected at an early stage. In this context, Mammography is the most efficient method for early detection. Due to the complexity of this last, the distinction of microcalcifications or opacities is very difficult. This paper deals with the problem of shape feature extraction in digital mammograms, particularly the boundary information. In fact, we evaluated the efficiency on boundary information possessed by mass region. We propose feature vector based in boundary analysis in ameliorating three points of view like RDM, convexity and angular features. We use the Digital Database for Screening Mammography “DDSM” for experiments. Some classifiers as Multilayer Perception “MLP” and k-Nearest Neighbours “kNN” are used to distinguish the pathological records from the healthy ones. Using “MLP” classifiers we obtained 94,2% as sensitivity (percentage of pathological ROIs correctly classified). The results in term of specificity (percentage of non-pathological ROIs correctly classified) grows around 97,9% using MLP classifier.
基于轮廓形状的特征提取用于乳房x线图像的肿瘤分析
只有在早期发现癌症,这种治疗方法才有效。在这种情况下,乳房x光检查是早期发现的最有效方法。由于后者的复杂性,区分微钙化或混浊是非常困难的。本文研究了数字乳房x线照片的形状特征提取问题,特别是图像的边界信息。实际上,我们评估了质量区域所拥有的边界信息的效率。在改进RDM、凸性和角度特征的基础上,提出了基于边界分析的特征向量。我们使用乳腺造影筛查数字数据库(DDSM)进行实验。使用多层感知(MLP)和k近邻(kNN)分类器来区分病理记录和健康记录。使用“MLP”分类器,我们获得了94.2%的灵敏度(病理roi正确分类的百分比)。使用MLP分类器,在特异性(正确分类的非病理性roi百分比)方面的结果增长了约97,9%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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