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A new method for breast micro-calcification detection and characterization using digital temporal subtraction of mammogram pairs

机译:利用乳房X线图对的乳房微钙化检测和表征的一种新方法

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Breast cancer is one of the most deadly malignancies worldwide and the second leading cause of death in women. Mammography, i.e. the screening for breast cancer with x-ray imaging, has significantly improved the prognosis of patients diagnosed with the disease. The evaluation of mammograms requires a panel of radiologists, but even well trained experts can err in their assessment. For this reason, Computer-Aided Detection (CAD) systems are becoming more prevalent. In this paper, we introduce a novel approach for breast Micro-Calcification (MC) diagnosis using temporal sequences of digital mammograms. The goal is to increase the MC detection accuracy by subtracting prior images. A new dataset, with precise marking of MC locations, was created specifically for this study. The proposed approach began with temporal subtraction of mammograms, after demon-based registration, which effectively removed unchanged regions and MCs (17.3% reduction in the number of MCs). The second step was the classification of the MCs as benign or suspicious using the subtracted images. A set of diverse features were selected for the classification. Four different classifiers were tested with leave-one-patient-out cross-validation. For comparison, the MC classification was also performed, using single mammograms, without temporal subtraction. The average accuracy of the classification of the MCs as benign or suspicious was 91.3% without and 99.2% with temporal subtraction using Support Vector Machines (statistically significant $mathbf{p}=0.026$). These results show that temporal subtraction could be a valuable addition to CAD systems to assist radiologists in effectively detecting breast MCs.
机译:乳腺癌是世界上最致命的恶性肿瘤,女性死亡的第二大原因之一。乳房X射线摄影,即筛选乳腺癌与x射线成像,已经显著改善诊断患有所述疾病的患者的预后。乳房X线照片的评估需要放射科医生组成的小组,但即使是训练有素的专家可以在他们的评估犯错。出于这个原因,计算机辅助检测(CAD)系统正变得越来越普遍。在本文中,我们使用数字乳腺X线照片的时间序列来介绍用于乳房微钙化(MC)诊断的新方法。我们的目标是通过减去先前图像,以增加MC检测精度。一个新的数据集,以精密MC位置的标记,是专门用于该研究创建。所提出的方法开始于乳房X线照片的时间减影,基于妖登记,从而有效地除去不变区域和MCS(MCS中的数量减少17.3%)之后。第二步是所述MCS为良性或可疑的使用减影图像的分类。选择一组不同的功能,为分类。四种不同的分类,用留一患者交叉验证测试。为了比较,也进行了MC分类,使用单乳房X线照片,不具有时间减法。所述MCS为良性或可疑的分类的平均准确是没有91.3%和99.2%与时间减影使用支持向量机(统计学显著 $ mathbf {P} = 0.026 $ )。这些结果表明,时间减可能是一个有价值的除了CAD系统,以帮助放射科医生在有效检测乳腺癌的MCS。

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