Changchun University of Science and Technology, School of Computer Science and Technology, Changchun, People's Republic of China.
Changchun University of Science and Technology, School of Electronic and Information Engineering, Changchun, People's Republic of China.
Phys Med Biol. 2023 Aug 3;68(16). doi: 10.1088/1361-6560/ace7ab.
. In this study, we propose a model called DEPMSCNet (a multiscale self-calibration network) that has a high sensitivity and low false positive rate for detecting pulmonary nodules.. First, at the feature extraction stage, we propose to use the REPSA-MSC module instead of the traditional convolutional neural network. The module extracts multiscale information from the feature map based on the image pyramid strategy while introducing adaptive convolutional branches to detect contextual information at each position of the multiscale, thereby expanding the receptive field and improving sensitivity. At the same time, multiple branches are adaptively weighted by channel attention, and the weights of different branches are adjusted to better generate pixel-level attention. Secondly, the proposed DSAM (dual-path spatial attention module) operates at the information fusion stage. This module fully exploits the rich spatial information of CT scans, obtains receptive field information from two branches, combines low-level feature map information with high-level semantic information, and enhances location-related information to effectively improve specificity. Thirdly, the focal loss function is used to solve the problem of positive and negative sample imbalance.. The proposed model has been evaluated on the public lung nodule analysis (LUNA16) challenge dataset. The technique outperforms the most recent state-of-the-art detection algorithms in terms of sensitivity and specificity, obtaining a sensitivity of 0.988 and a competitive performance metric (CPM) of 0.963.. Ablation experiments show that the two modules proposed in this paper effectively reduce false positives and improve sensitivity. This model effectively reduces the number of false positive nodules that doctors see on CT scans.
. 在这项研究中,我们提出了一种名为 DEPMSCNet(多尺度自校准网络)的模型,该模型在检测肺结节方面具有高灵敏度和低假阳性率。. 首先,在特征提取阶段,我们提出使用 REPSA-MSC 模块代替传统的卷积神经网络。该模块基于图像金字塔策略从特征图中提取多尺度信息,同时引入自适应卷积分支来检测多尺度中每个位置的上下文信息,从而扩大感受野并提高灵敏度。同时,通过通道注意力自适应地对多个分支进行加权,并调整不同分支的权重,以更好地生成像素级别的注意力。其次,所提出的 DSAM(双路径空间注意模块)在信息融合阶段发挥作用。该模块充分利用 CT 扫描的丰富空间信息,从两个分支中获取感受野信息,将低层次特征图信息与高层次语义信息相结合,并增强与位置相关的信息,从而有效地提高特异性。第三,使用焦点损失函数来解决正负样本不平衡的问题。所提出的模型已在公共肺结节分析(LUNA16)挑战赛数据集上进行了评估。在灵敏度和特异性方面,该技术优于最新的最先进的检测算法,获得了 0.988 的灵敏度和具有竞争力的性能指标(CPM)0.963。. 消融实验表明,本文提出的两个模块有效地减少了假阳性并提高了灵敏度。该模型有效地减少了医生在 CT 扫描上看到的假阳性结节数量。