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Automated Breast Cancer Detection in Digital Mammograms of Various Densities via Deep Learning

机译:通过深度学习自动化乳腺癌检测各种密度的数字乳腺照片

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摘要

Mammography plays an important role in screening breast cancer among females, and artificial intelligence has enabled the automated detection of diseases on medical images. This study aimed to develop a deep learning model detecting breast cancer in digital mammograms of various densities and to evaluate the model performance compared to previous studies. From 1501 subjects who underwent digital mammography between February 2007 and May 2015, craniocaudal and mediolateral view mammograms were included and concatenated for each breast, ultimately producing 3002 merged images. Two convolutional neural networks were trained to detect any malignant lesion on the merged images. The performances were tested using 301 merged images from 284 subjects and compared to a meta-analysis including 12 previous deep learning studies. The mean area under the receiver-operating characteristic curve (AUC) for detecting breast cancer in each merged mammogram was 0.952 ± 0.005 by DenseNet-169 and 0.954 ± 0.020 by EfficientNet-B5, respectively. The performance for malignancy detection decreased as breast density increased (density A, mean AUC = 0.984 vs. density D, mean AUC = 0.902 by DenseNet-169). When patients’ age was used as a covariate for malignancy detection, the performance showed little change (mean AUC, 0.953 ± 0.005). The mean sensitivity and specificity of the DenseNet-169 (87 and 88%, respectively) surpassed the mean values (81 and 82%, respectively) obtained in a meta-analysis. Deep learning would work efficiently in screening breast cancer in digital mammograms of various densities, which could be maximized in breasts with lower parenchyma density.
机译:乳房X光摄影起着筛选女性中乳腺癌的重要作用,人工智能已启用的医学图像的疾病自动检测。本研究旨在开发各种密度的数字乳房X线照片深深的学习模式检测乳腺癌和相比以前的研究,以评估模型的性能。从1501个科目谁接受2007年2月和2015年5月之间的数字化乳腺摄影,头尾和内外侧视图乳房X线照片被列入然后连接起来的每个乳房,最终产生3002个合并图像。两个卷积神经网络进行了培训,以检测在合并后的图像的任何恶性病变。演出用301个合并后的图像从284个科目测试和比较的荟萃分析包括12项以前的深度学习研究。在每个合并乳腺X线照片检测乳腺癌的受试者工作特征曲线(AUC)下的平均面积分别为0.952±0.005由DenseNet-169和0.954±0.020由EfficientNet-B5。恶性肿瘤的检测性能(由DenseNet-169密度A,平均AUC = 0.984与密度d,平均AUC = 0.902)减少作为乳房密度增加。当患者年龄被用作恶性肿瘤检测协变量,其性能几乎没有变化(平均AUC,0.953±0.005)。的DenseNet-169的平均灵敏度和特异性(87和88%,分别地)超过了荟萃分析所获得的平均值(分别为81和82%)。深度学习会在不同的密度,这可能与较低的实质密度乳房最大化的数字乳房X线照片筛查乳腺癌有效地工作。

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