KTH Royal Institute of Technology, Department of Biomedical Engineering and Health Systems, SE-14157 Huddinge, Sweden; Karolinska Institutet, Department of Oncology-Pathology, Karolinska Universitetssjukhuset, Solna, SE-17176 Stockholm, Sweden.
Karolinska University Hospital, Imaging and Function, Radiology Department, Solna, SE-17176 Stockholm, Sweden.
Phys Med. 2021 Mar;83:146-153. doi: 10.1016/j.ejmp.2021.03.013. Epub 2021 Mar 25.
Low-Dose Computed Tomography (LDCT) is the most common imaging modality for lung cancer diagnosis. The presence of nodules in the scans does not necessarily portend lung cancer, as there is an intricate relationship between nodule characteristics and lung cancer. Therefore, benign-malignant pulmonary nodule classification at early detection is a crucial step to improve diagnosis and prolong patient survival. The aim of this study is to propose a method for predicting nodule malignancy based on deep abstract features.
To efficiently capture both intra-nodule heterogeneities and contextual information of the pulmonary nodules, a dual pathway model was developed to integrate the intra-nodule characteristics with contextual attributes. The proposed approach was implemented with both supervised and unsupervised learning schemes. A random forest model was added as a second component on top of the networks to generate the classification results. The discrimination power of the model was evaluated by calculating the Area Under the Receiver Operating Characteristic Curve (AUROC) metric.
Experiments on 1297 manually segmented nodules show that the integration of context and target supervised deep features have a great potential for accurate prediction, resulting in a discrimination power of 0.936 in terms of AUROC, which outperformed the classification performance of the Kaggle 2017 challenge winner.
Empirical results demonstrate that integrating nodule target and context images into a unified network improves the discrimination power, outperforming the conventional single pathway convolutional neural networks.
低剂量计算机断层扫描(LDCT)是肺癌诊断中最常用的成像方式。扫描中出现结节并不一定预示着肺癌,因为结节特征与肺癌之间存在着复杂的关系。因此,在早期检测时对良恶性肺结节进行分类是提高诊断准确性和延长患者生存时间的关键步骤。本研究旨在提出一种基于深度抽象特征预测结节恶性程度的方法。
为了有效地捕捉结节内的异质性和肺结节的上下文信息,我们开发了一种双通道模型,将结节内特征与上下文属性相结合。该方法采用有监督和无监督学习方案进行实现。在网络之上添加随机森林模型作为第二个组件来生成分类结果。通过计算接收者操作特征曲线下的面积(AUROC)来评估模型的判别能力。
对 1297 个手动分割的结节进行的实验表明,上下文和目标监督深度特征的融合对于准确预测具有很大的潜力,在 AUROC 方面的判别能力达到 0.936,优于 Kaggle 2017 挑战赛冠军的分类性能。
实验结果表明,将结节目标和上下文图像集成到一个统一的网络中可以提高判别能力,优于传统的单路径卷积神经网络。