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A Hybrid Deep Learning Approach to Predict Malignancy of Breast Lesions Using Mammograms

机译:混合深度学习方法,可使用乳腺X线照片预测乳腺癌的恶性程度

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Applying deep learning technology to medical imaging informatics field has been recently attracting extensive research interest. However, the limited medical image dataset size often reduces performance and robustness of the deep learning based computer-aided detection and/or diagnosis (CAD) schemes. In attempt to address this technical challenge, this study aims to develop and evaluate a new hybrid deep learning based CAD approach to predict likelihood of a breast lesion detected on mammogram being malignant. In this approach, a deep Convolutional Neural Network (CNN) was firstly pre-trained using the ImageNet dataset and serve as a feature extractor. A pseudo-color Region of Interest (ROI) method was used to generate ROIs with RGB channels from the mammographic images as the input to the pre-trained deep network. The transferred CNN features from different layers of the CNN were then obtained and a linear support vector machine (SVM) was trained for the prediction task. By applying to a dataset involving 301 suspicious breast lesions and using a leave-one-case-out validation method, the areas under the ROC curves (AUC) = 0.762 and 0.792 using the traditional CAD scheme and the proposed deep learning based CAD scheme, respectively. An ensemble classifier that combines the classification scores generated by the two schemes yielded an improved AUC value of 0.813. The study results demonstrated feasibility and potentially improved performance of applying a new hybrid deep learning approach to develop CAD scheme using a relatively small dataset of medical images.
机译:将深度学习技术应用于医学影像信息学领域最近引起了广泛的研究兴趣。但是,有限的医学图像数据集大小通常会降低基于深度学习的计算机辅助检测和/或诊断(CAD)方案的性能和鲁棒性。为了解决这一技术难题,本研究旨在开发和评估一种新的基于混合深度学习的基于CAD的方法,以预测在乳房X线照片上检测到的乳腺病变为恶性的可能性。在这种方法中,首先使用ImageNet数据集对深度卷积神经网络(CNN)进行了预训练,并将其用作特征提取器。伪彩色感兴趣区域(ROI)方法用于从乳腺摄影图像生成具有RGB通道的ROI,作为对预先训练的深层网络的输入。然后,获得了来自CNN不同层的已转移CNN特征,并为预测任务训练了线性支持向量机(SVM)。通过应用到包含301个可疑乳腺病变的数据集并使用留一法验证方法,使用传统的CAD方案和建议的基于深度学习的CAD方案,ROC曲线下的面积(AUC)分别为0.762和0.792,分别。结合了两种方案生成的分类得分的集成分类器产生的改进的AUC值为0.813。研究结果证明了使用新的混合深度学习方法开发CAD方案的可行性和潜在的性能提高,该方案使用相对较小的医学图像数据集。

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