School of Computer Engineering and Science, Shanghai University, Shanghai, 200444, China; Inner Mongolia Key Laboratory of Pattern Recognition and Intelligent Image Processing, School of Information Engineering, Inner Mongolia University of Science and Technology, Baotou, 014010, China.
School of Computer Engineering and Science, Shanghai University, Shanghai, 200444, China; Inner Mongolia Key Laboratory of Pattern Recognition and Intelligent Image Processing, School of Information Engineering, Inner Mongolia University of Science and Technology, Baotou, 014010, China.
Comput Biol Med. 2018 Dec 1;103:220-231. doi: 10.1016/j.compbiomed.2018.10.011. Epub 2018 Oct 12.
A novel computer-aided detection (CAD) scheme for lung nodule detection using a 3D deep convolutional neural network combined with a multi-scale prediction strategy is proposed to assist radiologists by providing a second opinion on accurate lung nodule detection, which is a crucial step in early diagnosis of lung cancer.
A 3D deep convolutional neural network (CNN) with multi-scale prediction was used to detect lung nodules after the lungs were segmented from chest CT scans, with a comprehensive method utilized. Compared with a 2D CNN, a 3D CNN can utilize richer spatial 3D contextual information and generate more discriminative features after being trained with 3D samples to fully represent lung nodules. Furthermore, a multi-scale lung nodule prediction strategy, including multi-scale cube prediction and cube clustering, is also proposed to detect extremely small nodules.
The proposed method was evaluated on 888 thin-slice scans with 1186 nodules in the LUNA16 database. All results were obtained via 10-fold cross-validation. Three options of the proposed scheme are provided for selection according to the actual needs. The sensitivity of the proposed scheme with the primary option reached 87.94% and 92.93% at one and four false positives per scan, respectively. Meanwhile, the competition performance metric (CPM) score is very satisfying (0.7967).
The experimental results demonstrate the outstanding detection performance of the proposed nodule detection scheme. In addition, the proposed scheme can be extended to other medical image recognition fields.
提出了一种使用三维深度卷积神经网络(3D-DCNN)结合多尺度预测策略的新型计算机辅助肺结节检测 CAD 方案,旨在为放射科医生提供准确的肺结节检测的第二意见,这是肺癌早期诊断的关键步骤。
在对胸部 CT 扫描进行肺分割后,使用具有多尺度预测功能的 3D 深度卷积神经网络(3D-DCNN)来检测肺结节,采用了综合方法。与 2D-CNN 相比,3D-CNN 可以利用更丰富的空间 3D 上下文信息,并在使用 3D 样本进行训练后生成更具判别力的特征,从而充分表示肺结节。此外,还提出了一种多尺度肺结节预测策略,包括多尺度立方预测和立方聚类,以检测非常小的结节。
该方法在 LUNA16 数据库的 888 个薄层扫描和 1186 个结节上进行了评估。所有结果均通过 10 折交叉验证获得。根据实际需要,提供了该方案的三个选项供选择。所提出方案的主要选项的灵敏度在每个扫描一个和四个假阳性时分别达到 87.94%和 92.93%。同时,竞争性能指标(CPM)得分非常令人满意(0.7967)。
实验结果表明,所提出的结节检测方案具有出色的检测性能。此外,该方案可以扩展到其他医学图像识别领域。