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乳腺钼靶片中可疑簇状微钙化的分割

Segmentation of suspicious clustered microcalcifications in mammograms.

作者信息

Gavrielides M A, Lo J Y, Vargas-Voracek R, Floyd C E

机构信息

Department of Biomedical Engineering, Duke University, Durham, North Carolina 27708, USA.

出版信息

Med Phys. 2000 Jan;27(1):13-22. doi: 10.1118/1.598852.

Abstract

We have developed a multistage computer-aided diagnosis (CAD) scheme for the automated segmentation of suspicious microcalcification clusters in digital mammograms. The scheme consisted of three main processing steps. First, the breast region was segmented and its high-frequency content was enhanced using unsharp masking. In the second step, individual microcalcifications were segmented using local histogram analysis on overlapping subimages. For this step, eight histogram features were extracted for each subimage and were used as input to a fuzzy rule-based classifier that identified subimages containing microcalcifications and assigned the appropriate thresholds to segment any microcalcifications within them. The final step clustered the segmented microcalcifications and extracted the following features for each cluster: the number of microcalcifications, the average distance between microcalcifications, and the average number of times pixels in the cluster were segmented in the second step. Fuzzy logic rules incorporating the cluster features were designed to remove nonsuspicious clusters, defined as those with typically benign characteristics. A database of 98 images, with 48 images containing one or more microcalcification clusters, provided training and testing sets to optimize the parameters and evaluate the CAD scheme, respectively. The results showed a true positive rate of 93.2% and an average of 0.73 false positive clusters per image. A comparison of our results with other reported segmentation results on the same database showed comparable sensitivity and at the same time an improved false positive rate. The performance of the CAD scheme is encouraging for its use as an automatic tool for efficient and accurate diagnosis of breast cancer.

摘要

我们开发了一种用于在数字乳腺钼靶片中自动分割可疑微钙化簇的多阶段计算机辅助诊断(CAD)方案。该方案包括三个主要处理步骤。首先,对乳腺区域进行分割,并使用非锐化掩蔽增强其高频内容。在第二步中,通过对重叠子图像进行局部直方图分析来分割单个微钙化。对于这一步,为每个子图像提取八个直方图特征,并将其用作基于模糊规则的分类器的输入,该分类器识别包含微钙化的子图像,并为分割其中的任何微钙化分配适当的阈值。最后一步对分割出的微钙化进行聚类,并为每个聚类提取以下特征:微钙化的数量、微钙化之间的平均距离以及在第二步中聚类像素被分割的平均次数。设计了包含聚类特征的模糊逻辑规则以去除定义为具有典型良性特征的非可疑聚类。一个包含98幅图像的数据库,其中48幅图像包含一个或多个微钙化簇,分别提供了训练集和测试集以优化参数和评估CAD方案。结果显示真阳性率为93.2%,平均每幅图像有0.73个假阳性聚类。将我们的结果与在同一数据库上其他报告的分割结果进行比较,显示出相当的灵敏度,同时假阳性率有所提高。该CAD方案的性能令人鼓舞,可作为一种高效准确诊断乳腺癌的自动工具。

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