Gradient Vector Flow Field and Mass Region Extraction in Digital Mammograms

F. Zou, Yufeng Zheng, Zhengdong Zhou, K. Agyepong
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引用次数: 31

Abstract

Mass detection is one of the main computer-aided mammographic breast cancer detection techniques. Precisely selecting the regions that contain masses is an important step in mass segmentation using mammographic computer-aided detection. In this paper, an algorithm for extracting mass regions in digital mammograms is proposed, in which we use adaptive histogram equalization to enhance mammograms, use a gradient vector flow field to generate region boundaries, select N candidate locations according to the means and the standard deviations of intensities of the points with top brightness, use these points and the region boundaries to generate the convex hulls of the regions as the mass regions. 161 down-sampled mammogram images from the Digital Database for Screening Mammography project were test, and a detection rate of 82.6% is obtained. The experimental results indicated that the method is efficient and robust.
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数字乳房x线照片中梯度矢量流场和质量区域提取
肿块检测是计算机辅助乳房x线摄影检测乳腺癌的主要技术之一。精确选择包含肿块的区域是使用乳腺x线摄影计算机辅助检测进行肿块分割的重要步骤。本文提出了一种数字乳房x光片质量区域提取算法,该算法利用自适应直方图均衡化对乳房x光片进行增强,利用梯度矢量流场生成区域边界,根据亮度最高的点的强度均值和标准差选择N个候选位置,利用这些点和区域边界生成区域的凸包作为质量区域。对筛查项目数字数据库中的161张下采样乳房x线照片进行检测,检出率为82.6%。实验结果表明,该方法具有较好的鲁棒性和有效性。
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