首页> 外文会议>International Conference on Medical Image Computing and Computer-Assisted Intervention(MICCAI 2004) pt.2; 20040926-29; Saint-Malo(FR) >Physics Based Contrast Marking and Inpainting Based Local Texture Comparison for Clustered Microcalcification Detection
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Physics Based Contrast Marking and Inpainting Based Local Texture Comparison for Clustered Microcalcification Detection

机译:基于物理的对比度标记和基于修补的局部纹理比较,用于聚类微钙化检测

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As important early signs of breast cancers, microcalcifica-tions (MCs) are still very difficult to be reliably detected by either radiologists or computer-aided diagnosis systems. In general, global, regional, and local properties of the mammogram should all be considered in the analysis process. In our effort, we incorporate the physical nature of the imaging process with the image analysis techniques to detect the clustered microcalcifications based on local contrast marking and self-repaired texture comparison. Suspicious areas are first obtained from a simplified X-ray imaging model where the MC contrast is a nonlinear function of local intensity. Following a removal and repair (R&R) procedure of the suspicious areas from their surrounding background textures, pre- and post- R&R local characteristic features of these areas are extracted and compared. A modified AdaBoost algorithm is then used to train the classifier for detecting individual microcalcification, followed by a clustering process to obtain the clustered MCs. Experiments on the MIAS database have shown promising results.
机译:作为乳腺癌的重要早期征兆,放射医师或计算机辅助诊断系统仍然很难可靠地检测出微钙化(MC)。通常,应在分析过程中考虑乳房X光照片的全局,区域和局部属性。在我们的努力中,我们将成像过程的物理性质与图像分析技术结合在一起,以基于局部对比标记和自修复纹理比较来检测聚簇的微钙化。首先从简化的X射线成像模型获得可疑区域,其中MC对比度是局部强度的非线性函数。从可疑区域的周围背景纹理中移除和修复(R&R)程序后,提取并比较这些区域的R&R前后的局部特征。然后,使用改进的AdaBoost算法训练分类器以检测单个微钙化,然后进行聚类过程以获得聚类的MC。 MIAS数据库上的实验已显示出令人鼓舞的结果。

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