School of Network Engineering, Zhoukou Normal University, Zhoukou, 466001, China.
College of Public Health, Zhengzhou University, Zhengzhou, 450001, China.
Sci Rep. 2023 Jul 13;13(1):11322. doi: 10.1038/s41598-023-38350-z.
Computed tomography (CT) scans have been shown to be an effective way of improving diagnostic efficacy and reducing lung cancer mortality. However, distinguishing benign from malignant nodules in CT imaging remains challenging. This study aims to develop a multiple-scale residual network (MResNet) to automatically and precisely extract the general feature of lung nodules, and classify lung nodules based on deep learning. The MResNet aggregates the advantages of residual units and pyramid pooling module (PPM) to learn key features and extract the general feature for lung nodule classification. Specially, the MResNet uses the ResNet as a backbone network to learn contextual information and discriminate feature representation. Meanwhile, the PPM is used to fuse features under four different scales, including the coarse scale and the fine-grained scale to obtain more general lung features of the CT image. MResNet had an accuracy of 99.12%, a sensitivity of 98.64%, a specificity of 97.87%, a positive predictive value (PPV) of 99.92%, and a negative predictive value (NPV) of 97.87% in the training set. Additionally, its area under the receiver operating characteristic curve (AUC) was 0.9998 (0.99976-0.99991). MResNet's accuracy, sensitivity, specificity, PPV, NPV, and AUC in the testing set were 85.23%, 92.79%, 72.89%, 84.56%, 86.34%, and 0.9275 (0.91662-0.93833), respectively. The developed MResNet performed exceptionally well in estimating the malignancy risk of pulmonary nodules found on CT. The model has the potential to provide reliable and reproducible malignancy risk scores for clinicians and radiologists, thereby optimizing lung cancer screening management.
计算机断层扫描(CT)已被证明是提高诊断效果和降低肺癌死亡率的有效方法。然而,在 CT 成像中区分良性和恶性结节仍然具有挑战性。本研究旨在开发一种多尺度残差网络(MResNet),以便自动、准确地提取肺结节的一般特征,并基于深度学习对肺结节进行分类。MResNet 结合了残差单元和金字塔池化模块(PPM)的优势,用于学习关键特征并提取用于肺结节分类的一般特征。具体来说,MResNet 使用 ResNet 作为骨干网络来学习上下文信息并区分特征表示。同时,PPM 用于融合四个不同尺度下的特征,包括粗尺度和细粒度尺度,以获得 CT 图像的更多一般肺特征。在训练集中,MResNet 的准确率为 99.12%,敏感度为 98.64%,特异性为 97.87%,阳性预测值(PPV)为 99.92%,阴性预测值(NPV)为 97.87%。此外,其在接收器操作特征曲线(ROC)下的面积(AUC)为 0.9998(0.99976-0.99991)。在测试集中,MResNet 的准确率、敏感度、特异性、PPV、NPV 和 AUC 分别为 85.23%、92.79%、72.89%、84.56%、86.34%和 0.9275(0.91662-0.93833)。所开发的 MResNet 在估计 CT 上发现的肺结节的恶性风险方面表现出色。该模型有可能为临床医生和放射科医生提供可靠和可重复的恶性风险评分,从而优化肺癌筛查管理。