Deep Transfer Learning-Based Intelligent Diagnosis of Malignant Tumors on Mammography

Wei Ding, Jin‐Xi Zhang
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引用次数: 1

Abstract

In this paper, we propose a deep transfer learning-based intelligent diagnosis approach for malignant tumors on mammography. An image segmentation algorithm is developed to remove the background, noise, and other redundancy in the image, for improving the learning efficiency. Based on the GoogleNet after training, we apply the transfer learning technique to the processed image. In this way, the accuracy of the classification model is improved. The experiment results show that the accuracy of our image segmentation algorithm is 100%, using only one-third of the data in training; the accuracy of our training approach is with the highest and average accuracy of 83% and 70%, respectively, by 2 × 104 iterations; and the area under the receiver operating characteristic curve is 0.77. These results are superior to those obtained by the existing methods.
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基于深度迁移学习的恶性肿瘤乳腺x线影像智能诊断
本文提出了一种基于深度迁移学习的乳房x线摄影恶性肿瘤智能诊断方法。为了提高学习效率,提出了一种去除图像背景、噪声和其他冗余的图像分割算法。在训练后的GoogleNet的基础上,将迁移学习技术应用到处理后的图像中。这样可以提高分类模型的准确率。实验结果表明,我们的图像分割算法的准确率为100%,仅使用了训练数据的三分之一;经过2 × 104次迭代,我们的训练方法的准确率最高为83%,平均准确率为70%;接收机工作特性曲线下面积为0.77。这些结果优于现有方法所得到的结果。
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