On Digital Mammogram Segmentation and Microcalcification Detection Using Multiresolution Wavelet Analysis

C.H. Chen , G.G. Lee
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引用次数: 89

Abstract

In this paper a multiresolution wavelet analysis (MWA) and nonstationary Gaussian Markov random field (GMRF) technique is introduced for the detection of microcalcifications with high accuracy. The hierarchical multiresolution wavelet information in conjunction with the contextual information of the images extracted from GMRF provides an efficient technique for microcalcification detection. A Bayesian learning paradigm realized via the expectation maximization (EM) algorithm was also introduced for edge detection or segmentation of mass regions recorded on the mammograms. The strength of the technique is in the effective utilization of the rich contextural information in the images considered. The effectiveness of the approach has been tested with a number of mammographic images for which the microcalcification detection algorithm achieved a sensitivity (true positive rate) of 94% and specificity (true negative rate) of 88%. Considerably good results were also obtained for the segmentation algorithm. In addition, the results for both the detected microcalcifications and the segmented mass regions were superimposed for an interesting case under the methods introduced.

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基于多分辨率小波分析的数字乳房x线图像分割与微钙化检测
本文采用多分辨率小波分析(MWA)和非平稳高斯马尔可夫随机场(GMRF)技术对微钙化进行了高精度检测。分层多分辨率小波信息结合从GMRF中提取的图像的上下文信息,为微钙化检测提供了一种有效的技术。通过期望最大化(EM)算法实现的贝叶斯学习范式也被引入到乳房x光片记录的质量区域的边缘检测或分割中。该技术的优势在于有效地利用了所考虑图像中丰富的上下文信息。该方法的有效性已通过许多乳房x线摄影图像进行了测试,其中微钙化检测算法的灵敏度(真阳性率)为94%,特异性(真阴性率)为88%。该分割算法也取得了相当不错的效果。此外,根据所介绍的方法,对一个有趣的案例进行了微钙化检测和块状区域分割的结果叠加。
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