IEEE Trans Med Imaging. 2019 Apr;38(4):991-1004. doi: 10.1109/TMI.2018.2876510. Epub 2018 Oct 17.
The accurate identification of malignant lung nodules on chest CT is critical for the early detection of lung cancer, which also offers patients the best chance of cure. Deep learning methods have recently been successfully introduced to computer vision problems, although substantial challenges remain in the detection of malignant nodules due to the lack of large training data sets. In this paper, we propose a multi-view knowledge-based collaborative (MV-KBC) deep model to separate malignant from benign nodules using limited chest CT data. Our model learns 3-D lung nodule characteristics by decomposing a 3-D nodule into nine fixed views. For each view, we construct a knowledge-based collaborative (KBC) submodel, where three types of image patches are designed to fine-tune three pre-trained ResNet-50 networks that characterize the nodules' overall appearance, voxel, and shape heterogeneity, respectively. We jointly use the nine KBC submodels to classify lung nodules with an adaptive weighting scheme learned during the error back propagation, which enables the MV-KBC model to be trained in an end-to-end manner. The penalty loss function is used for better reduction of the false negative rate with a minimal effect on the overall performance of the MV-KBC model. We tested our method on the benchmark LIDC-IDRI data set and compared it to the five state-of-the-art classification approaches. Our results show that the MV-KBC model achieved an accuracy of 91.60% for lung nodule classification with an AUC of 95.70%. These results are markedly superior to the state-of-the-art approaches.
胸部 CT 上恶性肺结节的准确识别对于肺癌的早期检测至关重要,这也为患者提供了最佳的治愈机会。深度学习方法最近已成功应用于计算机视觉问题,但由于缺乏大型训练数据集,恶性结节的检测仍存在很大的挑战。在本文中,我们提出了一种基于多视图知识协作(MV-KBC)的深度模型,使用有限的胸部 CT 数据来区分良恶性结节。我们的模型通过将三维结节分解为九个固定视图来学习三维肺结节特征。对于每个视图,我们构建一个基于知识的协作(KBC)子模型,其中设计了三种类型的图像补丁,分别用于微调三个预先训练的 ResNet-50 网络,这些网络分别用于描述结节的整体外观、体素和形状异质性。我们共同使用这九个 KBC 子模型来对肺结节进行分类,并在误差反向传播过程中学习自适应加权方案,从而使 MV-KBC 模型能够以端到端的方式进行训练。惩罚损失函数用于更好地降低假阴性率,同时对 MV-KBC 模型的整体性能影响最小。我们在基准 LIDC-IDRI 数据集上测试了我们的方法,并与五种最先进的分类方法进行了比较。我们的结果表明,MV-KBC 模型在肺结节分类方面的准确率为 91.60%,AUC 为 95.70%。这些结果明显优于最先进的方法。