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Statistical models for the detection of abnormalities in digital mammography

机译:用于检测数字乳房X线照相术的统计模型

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This paper introduces statistical methods for the detection of abnormalities in X-ray mammograms. Two types of abnormalities which may be encountered are microcalcification clusters and masses, both of which are possible indicators of breast cancer. Microcalcifications are small deposits of calcium in the breast, which are associated with a high incidence of breast cancer, whilst masses may indicate cancerous growth. While masses are typically of a size which will enable detection under current breast screening procedures, the small size of microcalcifications indicates that a computer assisted analysis is appropriate to enable detection at an early stage. The analysis presented here is evaluated using two sets of data. The first of these is a CIRS phantom image containing clusters of microcalcifications in a range of sizes, and the second is a set of digitized film mammograms depicting both masses and microcalcifications. The authors are indebted to Dr Matthew Freedman of the Georgetown University Medical Centre, Washington D.C. For both of these sets of data. Two approaches have been adopted for the analysis of this data. The first approach is based upon a method that was developed by the authors for the application of detecting objects in sidescan sonar images. Here, the authors add a pre-processing algorithm which suppresses the background variability whilst emphasising the abnormalities. A second method, developed specifically for this application, is based upon a Gibbs random field which is designed to model pixel interactions within the image.
机译:本文介绍了检测X射线乳房X线图异常的统计方法。可能遇到的两种异常是微碳化簇和质量,两者都是乳腺癌可能的指标。微钙化是乳腺癌中钙的小沉积物,其与乳腺癌的发病率有关,而群众可能表明癌症生长。虽然群众通常具有能够在当前乳房筛选程序下进行检测的尺寸,但小尺寸的微钙化指示计算机辅助分析适合于在早期启用检测。这里呈现的分析是使用两组数据进行评估的。其中第一项是包含微钙化簇的尺寸范围的CIRS模型图像,和第二个是一个组数字化乳房X线胶片描绘既群众和微钙化。作者感到不受乔治城大学医学中心的马修博士博士,华盛顿州华盛顿D.C。对于这两套数据。已经采用了两种方法来分析此数据。第一种方法是基于作者开发的方法,以应用检测侧臂声卡图像中的物体。这里,作者添加了一种预处理算法,其抑制了强调异常的背景变异性。专门用于该应用的第二种方法基于GIBBS随机字段,其被设计为模拟图像内的像素交互。

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