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Combining Registration and Abnormality Detection in Mammography

机译:结合乳房X线照相术中的登记和异常检测

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Usually, image registration and abnormality detection (e.g. lesions) in mammography are solved separately, although the solutions of these problems are strongly dependent. In this paper, we introduce a Bayesian approach to simultaneously register images and detect abnormalities. The key idea is to assume that pixels can be divided into two classes: normal tissue and abnormalities. We define the registration constraints as a mixture of two distributions which describe statistically image gray-level variations for both pixel classes. These mixture distributions are weighted by a map giving probabilities of abnormalities to be present at each pixel position. Using the Maximum A Posteriori, we estimate the deformation and the abnormality map at the same time. We show some experiments which illustrate the performance of this method in comparison to some previous techniques.
机译:通常,单独解决乳房X线照相术中的图像配准和异常检测(例如病变),尽管这些问题的解决方案是强烈的依赖性​​的。在本文中,我们介绍了一种贝叶斯方法,同时注册图像并检测异常。关键的想法是假设像素可以分为两类:正常组织和异常。我们将注册约束定义为两个分布的混合,其描述了两个像素类的统计图像灰度级变化。这些混合分布由地图加权,赋予每个像素位置处于异常的概率。使用最大后验,我们同时估计变形和异常图。我们展示了一些实验,说明了与某些先前的技术相比的这种方法的性能。

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