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Deep learning and three-compartment breast imaging in breast cancer diagnosis

机译:深度学习和三室内乳腺成像在乳腺癌诊断中

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We investigated whether deep learning has potential to aid in the diagnosis of breast cancer when applied to mammograms and biologic tissue composition images derived from three-compartment (3CB) imaging. The dataset contained diagnostic mammograms and 3CB images (water, lipid, and protein content) of biopsy-sampled BIRADS 4 and 5 lesions in 195 patients. In 58 patients, the lesion manifested as a mass (13 malignant vs. 45 benign), in 87 as microcalcifications (19 vs. 68), and in 56 as (focal) asymmetry or architectural distortion (11 vs. 45). Six patients had both a mass and calcifications. For each mammogram and corresponding 3CB images, a 128x128 region of interest containing the lesion was selected by an expert radiologist and used directly as input to a deep learning method pre-trained on a very large independent set of non-medical images. We used a nested leave-one-out-by-case (patient) model selection and classification protocol. The area under the ROC curve (AUC) for the task of distinguishing between benign and malignant lesions was used as performance metric. For the cases with mammographic masses, the AUC increased from 0.83 (mammograms alone) to 0.89 (mammograms+3CB, p=.162). For the microcalcification and asymmetry/architectural distortion cases the AUC increased from 0.84 to 0.91 (p=.116) and from 0.61 to 0.87 (p=.006), respectively. Our results indicate great potential for the application of deep learning methods in the diagnosis of breast cancer and additional knowledge of the biologic tissue composition appeared to improve performance, especially for lesions mammographically manifesting as asymmetries or architectural distortions.
机译:我们调查了深度学习是否有助于在应用于乳房X光检查和生物组织成像的乳房X光检查和生物组织组成图像时有助于诊断乳腺癌。数据集在195名患者中包含了活检 - 取样的Birads 4和5病灶的诊断乳房X线照片和3CB图像(水,脂质和蛋白质含量)。在58例患者中,病变表现为质量(13个恶性与45磅),87例为微钙化(19 vs.68),56例(焦点)不对称或建筑扭曲(11与45)。六名患者既有质量和钙化。对于每个乳房X线照片和相应的3CB图像,通过专家放射科学专家选择128x128含有病变的感兴趣区域,并直接用作预先接受非常大的非医学图像的深度学习方法的输入。我们使用了嵌套的休假 - 逐个(患者)模型选择和分类协议。用于区分良性和恶性病变的任务的ROC曲线(AUC)的区域用作性能指标。对于乳腺素Xammographys的病例,AUC从0.83(单独乳腺照片)增加到0.89(乳腺照片+ 3cb,p = .162)。对于微钙化和不对称/建筑扭曲壳体,AUC分别从0.84增加到0.91%(p = .116)和0.61至0.87(p = .006)。我们的结果表明,在乳腺癌诊断中应用深度学习方法的巨大潜力,并且对生物组织组成的额外知识似乎改善了性能,特别是对于乳房X态乳房爆炸表现为不对称或建筑扭曲的情况。

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