首页> 外文会议>Image Processing pt.1; Progress in Biomedical Optics and Imaging; vol.7 no.30 >Two-view information fusion for improvement of computer-aided detection (CAD) of breast masses on mammograms
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Two-view information fusion for improvement of computer-aided detection (CAD) of breast masses on mammograms

机译:两视图信息融合,可改善乳房X光照片上的乳腺肿块的计算机辅助检测(CAD)

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We are developing a two-view information fusion method to improve the performance of our CAD system for mass detection. Mass candidates on each mammogram were first detected with our single-view CAD system. Potential object pairs on the two-view mammograms were then identified by using the distance between the object and the nipple. Morphological features, Hessian feature, correlation coefficients between the two paired objects and texture features were used as input to train a similarity classifier that estimated a similarity scores for each pair. Finally, a linear discriminant analysis (LDA) classifier was used to fuse the score from the single-view CAD system and the similarity score. A data set of 475 patients containing 972 mammograms with 475 biopsy-proven masses was used to train and test the CAD system. All cases contained the CC view and the MLO or LM view. We randomly divided the data set into two independent sets of 243 cases and 232 cases. The training and testing were performed using the 2-fold cross validation method. The detection performance of the CAD system was assessed by free response receiver operating characteristic (FROC) analysis. The average test FROC curve was obtained from averaging the FP rates at the same sensitivity along the two corresponding test FROC curves from the 2-fold cross validation. At the case-based sensitivities of 90%, 85% and 80% on the test set, the single-view CAD system achieved an FP rate of 2.0, 1.5, and 1.2 FPs/image, respectively. With the two-view fusion system, the FP rates were reduced to 1.7, 1.3, and 1.0 FPs/image, respectively, at the corresponding sensitivities. The improvement was found to be statistically significant (p<0.05) by the AFROC method. Our results indicate that the two-view fusion scheme can improve the performance of mass detection on mammograms.
机译:我们正在开发一种两视图信息融合方法,以改善用于大量检测的CAD系统的性能。首先使用我们的单视图CAD系统检测每个乳房X线照片上的质量候选物。然后,通过使用对象和乳头之间的距离来识别两视图乳房X线照片上的潜在对象对。形态特征,Hessian特征,两个配对对象之间的相关系数以及纹理特征被用作训练相似性分类器的输入,该相似性分类器估计每对相似度得分。最后,使用线性判别分析(LDA)分类器融合单视图CAD系统中的得分和相似性得分。 475名患者的数据集包含972例乳房X线照片和475例活检证实的肿块,用于训练和测试CAD系统。所有案例均包含CC视图以及MLO或LM视图。我们将数据集随机分为两组,分别为243例和232例。使用2倍交叉验证方法进行训练和测试。通过自由响应接收器工作特性(FROC)分析评估了CAD系统的检测性能。平均测试FROC曲线是从2倍交叉验证中沿着两条相应的测试FROC曲线以相同的灵敏度对FP速率求平均值而获得的。在测试集上,基于案例的敏感度分别为90%,85%和80%时,单视图CAD系统的FP率分别为2.0、1.5和1.2 FP /图像。使用双视图融合系统,在相应的敏感度下,FP率分别降低到1.7、1.3和1.0 FP /图像。通过AFROC方法发现该改善具有统计学意义(p <0.05)。我们的结果表明,两视图融合方案可以提高乳房X线照片上质量检测的性能。

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