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Application of the Minkowski-Functionals for Automated Pattern Classification of Breast Parenchyma Depicted by Digital Mammography

机译:Minkowski功能在数字乳房X线X X表中描绘的乳房实质自动模式分类的应用

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With an estimated life-time-risk of about 10%, breast cancer is the most common cancer among women in western societies. Extensive mammography-screening programs have been implemented for diagnosis of the disease at an early stage. Several algorithms for computer-aided detection (CAD) have been proposed to help radiologists manage the increasing number of mammographic image-data and identify new cases of cancer. However, a major issue with most CAD-solutions is the fact that performance strongly depends on the structure and density of the breast tissue. Prior information about the global tissue quality in a patient would be helpful for selecting the most effective CAD-approach in order to increase the sensitivity of lesion-detection. In our study, we propose an automated method for textural evaluation of digital mammograms using the Minkowski Functionals in 2D. 80 mammograms are consensus-classified by two experienced readers as fibrosis, involution/atrophy, or normal. For each case, the topology of graylevel distribution is evaluated within a retromamillary image-section of 512 × 512 pixels. In addition, we obtain parameters from the graylevel-histogram (20th percentile, median and mean graylevel intensity). As a result, correct classification of the mammograms based on the densitometic parameters is achieved in between 38 and 48%, whereas topological analysis increases the rate to 83%. The findings demonstrate the effectiveness of the proposed algorithm. Compared to features obtained from graylevel histograms and comparable studies, we draw the conclusion that the presented method performs equally good or better. Our future work will be focused on the characterization of the mammographic tissue according to the Breast Imaging Reporting and Data System (BI-RADS). Moreover, other databases will be tested for an in-depth evaluation of the efficiency of our proposal.
机译:估计寿命时间约为10%,乳腺癌是西方社会中最常见的癌症。已经在早期阶段实施了广泛的乳房X线摄影筛查计划以诊断疾病。已经提出了几种用于计算机辅助检测(CAD)的算法,以帮助放射科医师管理越来越多的乳房X线切图像数据并识别新癌症病例。然而,大多数CAD解决方案的主要问题是性能强烈取决于乳房组织的结构和密度。关于患者全球组织质量的现有信息对于选择最有效的CAD方法有所帮助,以提高病变检测的敏感性。在我们的研究中,我们提出了一种使用Minkowski功能在2D中的数字乳房X光检查的自动化方法。 80个乳房X线照片是由两名经验丰富的读者分类为纤维化,参与/萎缩或正常的共识。对于每种情况,在512×512像素的逆转图像部分内评估灰度分布的拓扑。此外,我们从GrayleVel-Tiotmogram(第20百分位,中值和均值的灰色强度)获得参数。结果,基于密度参数的乳房X线照片的正确分类在38至48%之间实现,而拓扑分析将速率增加到83%。研究结果证明了所提出的算法的有效性。与从GrayleVel直方图和可比性研究获得的特征相比,我们得出了所呈现的方法同样好或更好的结论。我们未来的工作将重点关注根据乳房成像报告和数据系统(BI-RAD)的乳房X光组织的表征。此外,将测试其他数据库,以便深入评估我们提案的效率。

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