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Superpixel pattern graphs for identifying breast mass ROIs in dense background - a preliminary study

机译:用于在密集背景下识别乳房肿块ROI的超像素模式图-初步研究

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Finding mamographic masses located in a dense breast tissue is a challenge even for an experienced radiologist. The difficulty comes from the similarity of intensity between the masses and the overlapped normal dense tissues. In this study, a novel method for classification of masses localized in dense background of breast is proposed. The method can identify meaningful superpixel patterns present in mammograms within mass-like regions. The topology of superpixel patterns, captured by using spatial connectivity graphs, revealed significant differences between cancerous and healthy areas of breasts. Four clinically recognizable features were extracted from the superpixel graphs and used for classification. The proposed approach was evaluated using ninety three dense ROIs selected from the publicly available Digital Database for Screening Mammography (DDSM). All 93 ROIs were localized in dense backgrounds of breasts. Among them, 41 contained malignant masses in dense backgrounds and 52 contained healthy dense breast tissues. The results indicate that the graph features generated from superpixel pattern graphs can produce very effective and efficient feature descriptors of breast masses localized in dense background. Using Fisher Linear Discriminant Analysis (LDA) classifier AUC score of 0.90 was achieved for the four dimensional feature vector.
机译:即使对于有经验的放射线医师来说,要找到位于致密的乳腺组织中的乳腺摄影物也是一个挑战。困难来自肿块和重叠的正常致密组织之间强度的相似性。在这项研究中,提出了一种新的方法来分类位于乳腺密集背景中的肿块。该方法可以识别在块状区域内的乳房X光照片中存在的有意义的超像素图案。通过使用空间连通性图捕获的超像素模式的拓扑结构揭示了乳房癌区域和健康区域之间的显着差异。从超像素图中提取了四个临床上可识别的特征并用于分类。使用从公开的乳腺X线筛查数字数据库(DDSM)中选择的93个密集ROI评估了所提出的方法。所有93个ROI均位于乳房的密集背景中。其中,41例在密集的背景中含有恶性肿块,52例含有健康的致密乳房组织。结果表明,从超像素模式图生成的图特征可以产生非常有效的高效乳腺肿块特征描述符,这些特征描述符位于密集背景中。使用费舍尔线性判别分析(LDA)分类器,该四维特征向量的AUC得分为0.90。

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