School of Computer Science and Technology, Huazhong University of Science and Technology, Wuhan, 430074, China.
Laboratory for Machine Vision and Security Research, Kennesaw State University, Kennesaw, GA, USA.
J Digit Imaging. 2020 Oct;33(5):1242-1256. doi: 10.1007/s10278-020-00372-8.
Classification of benign and malignant in lung nodules using chest CT images is a key step in the diagnosis of early-stage lung cancer, as well as an effective way to improve the patients' survival rate. However, due to the diversity of lung nodules and the visual similarity of lung nodules to their surrounding tissues, it is difficult to construct a robust classification model with conventional deep learning-based diagnostic methods. To address this problem, we propose a multi-model ensemble learning architecture based on 3D convolutional neural network (MMEL-3DCNN). This approach incorporates three key ideas: (1) Constructed multi-model network architecture can be well adapted to the heterogeneity of lung nodules. (2) The input that concatenated of the intensity image corresponding to the nodule mask, the original image, and the enhanced image corresponding to which can help training model to extract advanced feature with more discriminative capacity. (3) Select the corresponding model to different nodule size dynamically for prediction, which can improve the generalization ability of the model effectively. In addition, ensemble learning is applied in this paper to further improve the robustness of the nodule classification model. The proposed method has been experimentally verified on the public dataset, LIDC-IDRI. The experimental results show that the proposed MMEL-3DCNN architecture can obtain satisfactory classification results.
使用胸部 CT 图像对肺结节进行良恶性分类是早期肺癌诊断的关键步骤,也是提高患者生存率的有效方法。然而,由于肺结节的多样性和肺结节与其周围组织的视觉相似性,使用传统的基于深度学习的诊断方法构建稳健的分类模型具有一定难度。针对这一问题,我们提出了一种基于三维卷积神经网络(3DCNN)的多模型集成学习架构(MMEL-3DCNN)。该方法融合了三个关键思想:(1)构建的多模型网络架构能够很好地适应肺结节的异质性。(2)将对应于结节掩码的强度图像、原始图像和增强图像的拼接输入,可以帮助训练模型提取更具判别能力的高级特征。(3)动态地为不同大小的结节选择相应的模型进行预测,从而有效提高模型的泛化能力。此外,本文还应用集成学习来进一步提高结节分类模型的稳健性。该方法在公共数据集 LIDC-IDRI 上进行了实验验证。实验结果表明,所提出的 MMEL-3DCNN 架构可以获得令人满意的分类结果。