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Developing a new case based computer-aided detection scheme and an adaptive cueing method to improve performance in detecting mammographic lesions

机译:开发一种基于新案例的计算机辅助检测方案和一种自适应提示方法以提高乳腺钼靶病变的检测性能

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摘要

The purpose of this study is to evaluate a new method to improve performance of computer-aided detection (CAD) schemes of screening mammograms with two approaches. In the first approach, we developed a new case based CAD scheme using a set of optimally selected global mammographic density, texture, spiculation, and structural similarity features computed from all four full-field digital mammography (FFDM) images of the craniocaudal (CC) and mediolateral oblique (MLO) views by using a modified fast and accurate sequential floating forward selection feature selection algorithm. Selected features were then applied to a “scoring fusion” artificial neural network (ANN) classification scheme to produce a final case based risk score. In the second approach, we combined the case based risk score with the conventional lesion based scores of a conventional lesion based CAD scheme using a new adaptive cueing method that is integrated with the case based risk scores. We evaluated our methods using a ten-fold cross-validation scheme on 924 cases (476 cancer and 448 recalled or negative), whereby each case had all four images from the CC and MLO views. The area under the receiver operating characteristic curve was AUC = 0.793±0.015 and the odds ratio monotonically increased from 1 to 37.21 as CAD-generated case based detection scores increased. Using the new adaptive cueing method, the region based and case based sensitivities of the conventional CAD scheme at a false positive rate of 0.71 per image increased by 2.4% and 0.8%, respectively. The study demonstrated that supplementary information can be derived by computing global mammographic density image features to improve CAD-cueing performance on the suspicious mammographic lesions.
机译:这项研究的目的是评估一种新方法,该方法可通过两种方法来提高筛查乳房X线照片的计算机辅助检测(CAD)方案的性能。在第一种方法中,我们开发了一种基于病例的新CAD方案,该方案使用了一组最佳选择的总体乳腺X线密度,纹理,针刺和结构相似性特征,这些特征是从颅尾(CC)的所有四个全场数字乳腺X线摄影(FFDM)图像计算得出的通过使用改进的快速,准确的顺序浮动前向选择特征选择算法,可以查看和后外侧斜(MLO)视图。然后将选定的特征应用于“评分融合”人工神经网络(ANN)分类方案,以生成基于最终案例的风险评分。在第二种方法中,我们使用一种新的自适应提示方法,将基于案例的风险评分与基于常规病变的CAD方案的基于常规病变的评分结合在一起,该方法与基于案例的风险评分集成在一起。我们对924例病例(476例癌症和448例被召回或阴性)进行了十倍交叉验证,评估了我们的方法,其中每例病例均具有CC和MLO观点的全部四张图像。接收器工作特性曲线下的面积为AUC = 0.793±0.015,并且随CAD生成的基于案例的检测分数增加,比值比从1单调增加到37.21。使用新的自适应提示方法,传统CAD方案在每幅图像误报率为0.71时,基于区域和基于案例的敏感度分别增加了2.4%和0.8%。该研究表明,可以通过计算总体乳房X线密度图像特征来获取补充信息,以改善可疑乳房X线病变的CAD提示性能。

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