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首页> 外文期刊>IEEE Transactions on Medical Imaging >A CAD system for the automatic detection of clustered microcalcifications in digitized mammogram films
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A CAD system for the automatic detection of clustered microcalcifications in digitized mammogram films

机译:自动检测数字化乳腺X光片中簇化的微钙化的CAD系统

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Clusters of microcalcifications in mammograms are an important early sign of breast cancer. This paper presents a computer-aided diagnosis (CAD) system for the automatic detection of clustered microcalcifications in digitized mammograms. The proposed system consists of two main steps. First, potential microcalcification pixels in the mammograms are segmented out by using mixed features consisting of wavelet features and gray level statistical features, and labeled into potential individual microcalcification objects by their spatial connectivity. Second, individual microcalcifications are detected by using a set of 31 features extracted from the potential individual microcalcification objects. The discriminatory power of these features is analyzed using general regression neural networks via sequential forward and sequential backward selection methods. The classifiers used in these two steps are both multilayer feedforward neural networks. The method is applied to a database of 40 mammograms (Nijmegen database) containing 105 clusters of microcalcifications. A free-response operating characteristics (FROC) curve is used to evaluate the performance. Results show that the proposed system gives quite satisfactory detection performance. In particular, a 90% mean true positive detection rate is achieved at the cost of 0.5 false positive per image when mixed features are used in the first step and 15 features selected by the sequential backward selection method are used in the second step. However, one must be cautious when interpreting the results, since the 20 training samples are also used in the testing step.
机译:乳房X光照片中的微钙化簇是乳腺癌的重要早期征兆。本文提出了一种计算机辅助诊断(CAD)系统,用于自动检测数字化X线照片中的簇状微钙化。拟议的系统包括两个主要步骤。首先,通过使用由小波特征和灰度统计特征组成的混合特征,将X线照片中的潜在微钙化像素进行分割,并通过它们的空间连通性将其标记为潜在的单个微钙化对象。其次,通过使用从潜在的单个微钙化对象中提取的31个特征集来检测单个微钙化。使用一般回归神经网络通过顺序向前和顺序向后选择方法来分析这些特征的区分能力。这两个步骤中使用的分类器都是多层前馈神经网络。将该方法应用于包含105个微钙化簇的40幅乳腺X线照片数据库(Nijmegen数据库)。自由响应运行特性(FROC)曲线用于评估性能。结果表明,所提出的系统具有相当令人满意的检测性能。特别地,当在第一步骤中使用混合特征并且在第二步骤中使用通过顺序后向选择方法选择的15个特征时,以每个图像0.5个假阳性的代价获得90%的平均真实阳性检测率。但是,在解释结果时一定要谨慎,因为在测试步骤中也使用了20个训练样本。

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