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A mammographic mass CAD system incorporating features from shape, fractal, and channelized Hotelling observer measurements: preliminary results

机译:结合了形状,分形和通道化Hotelling观察者测量特征的乳腺X线质量CAD系统:初步结果

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In this paper, we present preliminary results from a highly sensitive and specific CAD system for mammographic masses. For false positive reduction, the system incorporated features derived from shape, fractal, and channelized Hotelling observer (CHO) measurements. The database for this study consisted of 80 craniocaudal mammograms randomly extracted from USF's digital database for screening mammography. The database contained 49 mass findings (24 malignant, 25 benign). To detect initial mass candidates, a difference of Gaussians (DOG) filter was applied through normalized cross correlation. Suspicious regions were localized in the filtered images via multi-level thresholding. Features extracted from the regions included shape, fractal dimension, and the output from a Laguerre-Gauss (LG) CHO. Influential features were identified via feature selection techniques. The regions were classified with a linear classifier using leave-one-out training/testing. The DOG filter achieved a sensitivity of 88% (23/24 malignant, 20/25 benign). Using the selected features, the false positives per image dropped from ~20 to ~5 with no loss in sensitivity. This preliminary investigation of combining multi-level thresholded DOG-filtered images with shape, fractal, and LG-CHO features shows great promise as a mass detector. Future work will include the addition of more texture and mass-boundary descriptive features as well as further exploration of the LG-CHO.
机译:在本文中,我们介绍了针对乳房X线摄影肿块的高度敏感和特定的CAD系统的初步结果。对于误报减少,该系统合并了从形状,分形和通道化的Hotelling观测器(CHO)测量得出的特征。该研究的数据库由80头颅尾乳腺X线照片组成,这些图像是从USF的数字数据库中随机抽取的,用于筛查X线乳腺摄影。该数据库包含49个肿块发现(24个恶性,25个良性)。为了检测初始质量候选,通过归一化互相关应用了高斯(DOG)滤波器的差。可疑区域通过多级阈值处理定位在过滤后的图像中。从区域提取的特征包括形状,分形维数以及Laguerre-Gauss(LG)CHO的输出。通过特征选择技术来确定有影响力的特征。使用留一法训练/测试,使用线性分类器对区域进行分类。 DOG滤镜的灵敏度达到88%(恶性23/24,良性20/25)。使用所选功能,每幅图像的误报率从〜20下降到〜5,而灵敏度没有损失。初步研究将多级阈值DOG滤波图像与形状,分形和LG-CHO特征相结合,显示出作为质量检测器的广阔前景。未来的工作将包括增加更多的纹理和质量边界描述功能,以及对LG-CHO的进一步探索。

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