首页> 美国卫生研究院文献>Journal of Medical Imaging >Detecting mammographically occult cancer in women with dense breasts using deep convolutional neural network and Radon Cumulative Distribution Transform
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Detecting mammographically occult cancer in women with dense breasts using deep convolutional neural network and Radon Cumulative Distribution Transform

机译:使用深卷积神经网络和氡累积分配变换检测患有密集乳房的妇女的乳房X线

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摘要

We have applied the Radon Cumulative Distribution Transform (RCDT) as an image transformation to highlight the subtle difference between left and right mammograms to detect mammographically occult (MO) cancer in women with dense breasts and negative screening mammograms. We developed deep convolutional neural networks (CNNs) as classifiers for estimating the probability of having MO cancer. We acquired screening mammograms of 333 women (97 unilateral MO cancer) with dense breasts and at least two consecutive mammograms and used the immediate prior mammograms, which radiologists interpreted as negative. We used fivefold cross validation to divide our dataset into a training and independent test sets with ratios of 0.8:0.2. We set aside 10% of the training set as a validation set. We applied RCDT on the left and right mammograms of each view. We applied inverse Radon transform to represent the resulting RCDT images in the image domain. We then fine-tuned a VGG16 network pretrained on ImageNet using the resulting images per each view. The CNNs achieved mean areas under the receiver operating characteristic (AUC) curve of 0.73 (standard error, SE = 0.024) and 0.73 (SE = 0.04) for the craniocaudal and mediolateral oblique views, respectively. We combined the scores from two CNNs by training a logistic regression classifier and it achieved a mean AUC of 0.81 (SE = 0.032). In conclusion, we showed that inverse Radon-transformed RCDT images contain information useful for detecting MO cancers and that deep CNNs could learn such information.
机译:我们已经将氡累积分配变换(RCDT)作为图像转换,以突出左右乳房X线照片之间的微妙差异,以检测患有致密乳房和负筛选乳房X光检查的妇女中的乳腺癌神经爆炸(MO)癌症。我们开发了深度卷积神经网络(CNNS)作为用于估计莫癌的可能性的分类器。我们在密集的乳房和至少两个连续的乳房X线照片中获得了333名女性(97个单侧Mo癌)的筛选乳房X线照片,并使用了直接先前的乳房X光检查,该放射科医师被解释为消极。我们使用了五倍的交叉验证将我们的数据集分为培训和独立的测试集,比率为0.8:0.2。我们将10%的培训设置为验证集。我们在每个视图的左侧和右乳房X光线照片上应用RCDT。我们应用了逆Radon变换来表示图像域中的结果RCDT图像。然后,我们使用每个视图使用所得图像进行微调的VGG16网络以ImageNet预先训练。 CNNS在接收器操作特征(AUC)曲线下的平均区域分别为颅颌和MediolAteLal倾斜视图的0.73(标准误差,SE = 0.024)和0.73(SE = 0.04)。我们通过训练逻辑回归分类器来组合来自两个CNN的分数,并且它达到了0.81的平均AUC(SE = 0.032)。总之,我们表明,逆转录的RCDT图像包含可用于检测MO癌症的信息,并且深入的CNN可以学习此类信息。

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