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A Preliminary Study on Breast Cancer Risk Analysis Using Deep Neural Network

机译:运用深度神经网络进行乳腺癌风险分析的初步研究

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Deep learning is a powerful tool in computer vision areas, but it is most effective when applied to large training sets. However, large dataset are not always available for medical images. In this study we proposed a new method to use deep neural network for near-term breast cancer risk analysis. In our data base, we have 420 cases with two sequential mammogram screenings, and half of the cases were diagnosed as positive in the second screening and the other half remained negative. Instead of using human designed features, we designed a deep neural network (DNN) with four pairs of convolution neural network and one fully connected layer. Every breast image were divided into 100 ROIs with 52 by 52 pixels, and each ROI were trained with the DNN individually, and the final predictions of each case were based on the overall risk scores of all the 100 ROIs. And the ROI based area under the curve (AUC) is 0.6982, and the case based AUC is 0.7173 using our proposed scheme. The results showed our proposed scheme is promising to apply deep learning algorithms in predicting near-term breast cancer risk with limited data size.
机译:深度学习在计算机视觉领域是一种强大的工具,但将其应用于大型训练集时最有效。但是,大型数据集并不总是可用于医学图像。在这项研究中,我们提出了一种使用深度神经网络进行近期乳腺癌风险分析的新方法。在我们的数据库中,我们有420例患者接受了两次连续的乳房X线照片筛查,其中一半病例在第二次筛查中被诊断为阳性,另一半仍为阴性。我们没有使用人工设计的功能,而是设计了具有四对卷积神经网络和一个全连接层的深度神经网络(DNN)。将每个乳房图像分为52 x 52像素的100个ROI,并且每个ROI均通过DNN进行训练,每个案例的最终预测均基于所有100个ROI的总体风险评分。使用我们提出的方案,基于ROI的曲线下面积(AUC)为0.6982,基于案例的AUC为0.7173。结果表明,我们提出的方案有望在数据量有限的情况下将深度学习算法用于预测近期乳腺癌风险。

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