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Detecting and Classifying Linear Structures in Mammograms Using Random Forests

机译:使用随机森林对乳房X线照片中的线性结构进行检测和分类

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Detecting and classifying curvilinear structure is important in many image interpretation tasks. We focus on the challenging problem of detecting such structure in mammograms and deciding whether it is normal or abnormal. We adopt a discriminative learning approach based on a Dual-Tree Complex Wavelet representation and random forest classification. We present results of a quantitative comparison of our approach with three leading methods from the literature and with learning-based variants of those methods. We show that our new approach gives significantly better results than any of the other methods, achieving an area under the ROC curve A_z = 0.923 for curvilinear structure detection, and A_z = 0.761 for distinguishing between normal and abnormal structure (spicules). A detailed analysis suggests that some of the improvement is due to discriminative learning, and some due to the DT-CWT representation, which provides local phase information and good angular resolution.
机译:在许多图像解释任务中,检测和分类曲线结构很重要。我们专注于在乳房X线照片中检测这种结构并确定其是正常还是异常的挑战性问题。我们采用基于对偶树复小波表示和随机森林分类的​​判别学习方法。我们介绍了我们的方法与文献中的三种领先方法以及这些方法的基于学习的变体的定量比较结果。我们表明,我们的新方法比其他任何方法都能提供更好的结果,可实现ROC曲线下面积A_z = 0.923(用于曲线结构检测)和A_z = 0.761(用于区分正常结构和异常结构)。详细的分析表明,某些改进归因于判别式学习,而某些归因于DT-CWT表示,它提供了局部相位信息和良好的角度分辨率。

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