Xie Yutong, Zhang Jianpeng, Xia Yong
National Engineering Laboratory for Integrated Aero-Space-Ground-Ocean Big Data Application Technology, School of Computer Science and Engineering, Northwestern Polytechnical University, Xi'an 710072, China.
National Engineering Laboratory for Integrated Aero-Space-Ground-Ocean Big Data Application Technology, School of Computer Science and Engineering, Northwestern Polytechnical University, Xi'an 710072, China; Research & Development Institute of Northwestern Polytechnical University in Shenzhen, Shenzhen 518057, China.
Med Image Anal. 2019 Oct;57:237-248. doi: 10.1016/j.media.2019.07.004. Epub 2019 Jul 10.
Classification of benign-malignant lung nodules on chest CT is the most critical step in the early detection of lung cancer and prolongation of patient survival. Despite their success in image classification, deep convolutional neural networks (DCNNs) always require a large number of labeled training data, which are not available for most medical image analysis applications due to the work required in image acquisition and particularly image annotation. In this paper, we propose a semi-supervised adversarial classification (SSAC) model that can be trained by using both labeled and unlabeled data for benign-malignant lung nodule classification. This model consists of an adversarial autoencoder-based unsupervised reconstruction network R, a supervised classification network C, and learnable transition layers that enable the adaption of the image representation ability learned by R to C. The SSAC model has been extended to the multi-view knowledge-based collaborative learning, aiming to employ three SSACs to characterize each nodule's overall appearance, heterogeneity in shape and texture, respectively, and to perform such characterization on nine planar views. The MK-SSAC model has been evaluated on the benchmark LIDC-IDRI dataset and achieves an accuracy of 92.53% and an AUC of 95.81%, which are superior to the performance of other lung nodule classification and semi-supervised learning approaches.
胸部CT上良性与恶性肺结节的分类是肺癌早期检测及延长患者生存期的关键步骤。尽管深度卷积神经网络(DCNN)在图像分类方面取得了成功,但它总是需要大量有标签的训练数据,由于图像采集尤其是图像标注所需的工作,这些数据在大多数医学图像分析应用中难以获取。在本文中,我们提出了一种半监督对抗分类(SSAC)模型,该模型可通过使用有标签和无标签数据进行良性与恶性肺结节分类训练。此模型由基于对抗自编码器的无监督重建网络R、监督分类网络C以及可学习的过渡层组成,这些过渡层能够使R学习到的图像表示能力适应C。SSAC模型已扩展到基于多视图知识的协同学习,旨在使用三个SSAC分别表征每个结节的整体外观、形状和纹理的异质性,并在九个平面视图上进行这种表征。MK - SSAC模型已在基准LIDC - IDRI数据集上进行评估,准确率达到92.53%,AUC为95.81%,优于其他肺结节分类和半监督学习方法的性能。