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Deep learning networks find unique mammographic differences in previous negative mammograms between interval and screen-detected cancers: a case-case study

机译:深度学习网络在间隔和屏幕检测的癌症之间找到了先前的负乳房X线照片的独特乳房X线:一个案例研究

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To determine if mammographic features from deep learning networks can be applied in breast cancer to identify groups at interval invasive cancer risk due to masking beyond using traditional breast density measures. Full-field digital screening mammograms acquired in our clinics between 2006 and 2015 were reviewed. Transfer learning of a deep learning network with weights initialized from ImageNet was performed to classify mammograms that were followed by an invasive interval or screen-detected cancer within 12?months of the mammogram. Hyperparameter optimization was performed and the network was visualized through saliency maps. Prediction loss and accuracy were calculated using this deep learning network. Receiver operating characteristic (ROC) curves and area under the curve (AUC) values were generated with the outcome of interval cancer using the deep learning network and compared to predictions from conditional logistic regression with errors quantified through contingency tables. Pre-cancer mammograms of 182 interval and 173 screen-detected cancers were split into training/test cases at an 80/20 ratio. Using Breast Imaging-Reporting and Data System (BI-RADS) density alone, the ability to correctly classify interval cancers was moderate (AUC?=?0.65). The optimized deep learning model achieved an AUC of 0.82. Contingency table analysis showed the network was correctly classifying 75.2% of the mammograms and that incorrect classifications were slightly more common for the interval cancer mammograms. Saliency maps of each cancer case found that local information could highly drive classification of cases more than global image information. Pre-cancerous mammograms contain imaging information beyond breast density that can be identified with deep learning networks to predict the probability of breast cancer detection.
机译:为了确定深度学习网络的乳腺素特征是否可以在乳腺癌中应用,以掩蔽超出使用传统的乳房密度措施的掩蔽而在间隔侵入性癌症风险下鉴定群体。 2006年至2015年间在我们的诊所中获得的全场数字筛选乳房X XMM照片被审查。进行从想象集初始化的重量的深度学习网络的转移学习,以分类乳房X光检查,然后在乳房X线照片的12个月内进行侵入性间隔或筛选的癌症。执行封路数据计优化,通过显着图,网络可视化。使用该深度学习网络计算预测损失和准确性。通过使用深度学习网络的间隔癌的结果生成接收器操作特性(ROC)曲线和区域,并使用深度学习网络的结果,与通过应急表量化的条件逻辑回归的预测相比。 182个间隔的癌前乳房X线照片和173个筛选的癌症以80/20的比例分成训练/测试病例。单独使用乳房成像报告和数据系统(Bi-RADS)密度,正确分类间隔癌的能力是适度的(AUC?= 0.65)。优化的深度学习模式实现了0.82的AUC。应急表分析显示,网络正确分类了75.2%的乳房X线照片,并且对于间隔癌乳房X光检查略有常见的不正确的分类。每个癌症案例的显着图发现,本地信息可以高于全局图像信息的情况高度驱动的案例。癌前乳房X光检查包含超出乳房密度的成像信息,可以用深学习网络识别以预测乳腺癌检测的可能性。

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