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On detecting abnormalities in digital mammography

机译:检测数字乳房X线X X型异常

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Breast cancer is the most common cancer in many countries all over the world. Early detection of cancer, in either diagnosis or screening programs, decreases the mortality rates. Computer Aided Detection (CAD) is software that aids radiologists in detecting abnormalities in medical images. In this article we present our approach in detecting abnormalities in mammograms using digital mammography. Each mammogram in our dataset is manually processed — using software specially developed for that purpose — by a radiologist to mark and label different types of abnormalities. Once marked, processing henceforth is applied using computer algorithms. The majority of existing detection techniques relies on image processing (IP) to extract Regions of Interests (ROI) then extract features from those ROIs to be the input of a statistical learning machine (classifier). Detection, in this approach, is basically done at the IP phase; while the ultimate role of classifiers is to reduce the number of False Positives (FP) detected in the IP phase. In contrast, processing algorithms and classifiers, in pixel-based approach, work directly at the pixel level. We demonstrate the performance of some methods belonging to this approach and suggest an assessment metric in terms of the Mann Whitney statistic.
机译:乳腺癌是世界各国许多国家最常见的癌症。在诊断或筛查计划中,癌症的早期发现降低了死亡率。计算机辅助检测(CAD)是辅助放射科医师检测医学图像异常的软件。在本文中,我们介绍了我们在使用数字乳房X光检查的检测乳房X光检查中的方法。我们的数据集中的每个乳房X线照片都是手动处理 - 使用专门为此目的开发的软件 - 通过放射学家标记和标记不同类型的异常。一旦标记,请使用计算机算法应用HechingForth。大多数现有的检测技术依赖于图像处理(IP)以提取利益区域(ROI),然后从那些ROI中提取特征,以成为统计学习机(分类器)的输入。在这种方法中,检测基本上在IP阶段完成;虽然分类器的最终作用是减少IP阶段中检测到的误报(FP)的数量。相反,处理算法和分类器,以基于像素的方法,直接在像素级工作。我们展示了某些方法属于这种方法的性能,并在曼恩惠特尼统计方面提出评估度量。

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