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Computer aided detection of clusters of microcalcifications on full field digital mammograms.

机译:计算机辅助检测全场数字乳房X线照片上的微钙化簇。

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摘要

We are developing a computer-aided detection (CAD) system to identify microcalcification clusters (MCCs) automatically on full field digital mammograms (FFDMs). The CAD system includes six stages: preprocessing; image enhancement; segmentation of microcalcification candidates; false positive (FP) reduction for individual microcalcifications; regional clustering; and FP reduction for clustered microcalcifications. At the stage of FP reduction for individual microcalcifications, a truncated sum-of-squares error function was used to improve the efficiency and robustness of the training of an artificial neural network in our CAD system for FFDMs. At the stage of FP reduction for clustered microcalcifications, morphological features and features derived from the artificial neural network outputs were extracted from each cluster. Stepwise linear discriminant analysis (LDA) was used to select the features. An LDA classifier was then used to differentiate clustered microcalcifications from FPs. A data set of 96 cases with 192 images was collected at the University of Michigan. This data set contained 96 MCCs, of which 28 clusters were proven by biopsy to be malignant and 68 were proven to be benign. The data set was separated into two independent data sets for training and testing of the CAD system in a cross-validation scheme. When one data set was used to train and validate the convolution neural network (CNN) in our CAD system, the other data set was used to evaluate the detection performance. With the use of a truncated error metric, the training of CNN could be accelerated and the classification performance was improved. The CNN in combination with an LDA classifier could substantially reduce FPs with a small tradeoff in sensitivity. By using the free-response receiver operating characteristic methodology, it was found that our CAD system can achieve a cluster-based sensitivity of 70, 80, and 90 % at 0.21, 0.61, and 1.49 FPs/image, respectively. For case-based performance evaluation, a sensitivity of 70, 80,and 90 % can be achieved at 0.07, 0.17, and 0.65 FPs/image, respectively. We also used a data set of 216 mammograms negative for clustered microcalcifications to further estimate the FP rate of our CAD system. The corresponding FP rates were 0.15, 0.31, and 0.86 FPs/image for cluster-based detection when negative mammograms were used for estimation of FP rates.
机译:我们正在开发一种计算机辅助检测(CAD)系统,以在全场数字乳房X线照片(FFDM)上自动识别微钙化簇(MCC)。 CAD系统包括六个阶段:预处理;图像增强;细分微钙化候选者;个别微钙化的假阳性(FP)减少;区域集群;和FP减少以产生簇状微钙化。在针对单个微钙化的FP降低阶段,使用截短的平方和误差函数来提高我们FFDM的CAD系统中的人工神经网络训练的效率和鲁棒性。在聚类微钙化的FP还原阶段,从每个聚类中提取形态特征和源自人工神经网络输出的特征。逐步线性判别分析(LDA)用于选择特征。然后使用LDA分类器将聚簇的微钙化与FP区别开来。密歇根大学收集了96例病例数据,其中包含192张图像。该数据集包含96个MCC,其中28个经活检证实为恶性,68个为良性。数据集被分为两个独立的数据集,用于在交叉验证方案中训练和测试CAD系统。当一个数据集用于训练和验证我们的CAD系统中的卷积神经网络(CNN)时,另一数据集用于评估检测性能。通过使用截断错误度量,可以加快CNN的训练速度,并提高分类性能。将CNN与LDA分类器结合使用,可以在灵敏度方面进行小的折衷,从而大幅降低FP。通过使用自由响应接收器工作特性方法,发现我们的CAD系统在0.21、0.61和1.49 FPs /图像下可以分别实现基于群集的灵敏度,分别为70%,80%和90%。对于基于案例的性能评估,可以分别在0.07、0.17和0.65 FP /图像的情况下实现70%,80%和90%的灵敏度。我们还使用了216个乳房X线照片的数据集,用于聚类的微钙化,以进一步估计我们的CAD系统的FP率。当使用负的乳房X光照片估计FP率时,基于聚类的检测,相应的FP率为0.15、0.31和0.86 FPs /图像。

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