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A novel deep learning architecture outperforming ‘off-the-shelf’ transfer learning and feature-based methods in the automated assessment of mammographic breast density

机译:新型的深度学习架构在乳房X线摄影乳房密度的自动评估中优于现成的迁移学习和基于特征的方法

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摘要

Potentially suspicious breast neoplasms could be masked by high tissue density, thus increasing the probability of a false-negative diagnosis. Furthermore, differentiating breast tissue type enables patient pre-screening stratification and risk assessment. In this study, we propose and evaluate advanced machine learning methodologies aiming at an objective and reliable method for breast density scoring from routine mammographic images. The proposed image analysis pipeline incorporates texture [Gabor filters and local binary pattern (LBP)] and gradient-based features [histogram of oriented gradients (HOG) as well as speeded-up robust features (SURF)]. Additionally, transfer learning approaches with ImageNet trained weights were also used for comparison, as well as a convolutional neural network (CNN). The proposed CNN model was fully trained on two open mammography datasets and was found to be the optimal performing methodology (AUC up to 87.3%). Thus, the findings of this study indicate that automated density scoring in mammograms can aid clinical diagnosis by introducing artificial intelligence-powered decision-support systems and contribute to the ‘democratization’ of healthcare by overcoming limitations, such as the geographic location of patients or the lack of expert radiologists.
机译:高密度的组织可以掩盖潜在的可疑乳腺肿瘤,因此增加了假阴性诊断的可能性。此外,区分乳腺组织类型可以对患者进行预筛查分层和风险评估。在这项研究中,我们提出并评估了先进的机器学习方法,旨在从常规的乳房X线照片上客观,可靠地对乳房密度进行评分。拟议中的图像分析管道包含纹理[Gabor滤波器和局部二进制模式(LBP)]和基于梯度的特征[定向梯度的直方图(HOG)以及加速的鲁棒特征(SURF)]。此外,还将具有ImageNet训练权重的转移学习方法以及卷积神经网络(CNN)用于比较。所提出的CNN模型在两个开放的乳腺X线照片数据集上进行了全面训练,被认为是最佳的执行方法(AUC高达87.3%)。因此,这项研究的结果表明,乳房X射线照片的自动密度评分可以通过引入人工智能驱动的决策支持系统来帮助临床诊断,并通过克服局限性(例如患者的地理位置或缺乏专业放射科医生。

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