Baotou Medical College, Inner Mongolia University of Science and Technology, Baotou, China.
PLoS One. 2020 Aug 26;15(8):e0235672. doi: 10.1371/journal.pone.0235672. eCollection 2020.
A new computer-aided detection scheme is proposed, the 3D U-Net convolutional neural network, based on multiscale features of transfer learning to automatically detect pulmonary nodules from the thoracic region containing background and noise. The test results can be used as reference information for doctors to assist in the detection of early lung cancer. The proposed scheme is composed of three major steps: First, the pulmonary parenchyma area is segmented by various methods. Then, the 3D U-Net convolutional neural network model with a multiscale feature structure is built. The network model structure is subsequently fine-tuned by the transfer learning method based on weight, and the optimal parameters are selected in the network model. Finally, datasets are extracted to train the fine-tuned 3D U-Net network model to detect pulmonary nodules. The five-fold cross-validation method is used to obtain the experimental results for the LUNA16 and TIANCHI17 datasets. The experimental results show that the scheme not only has obvious advantages in the detection of medium and large-sized nodules but also has an accuracy rate of more than 70% for the detection of small-sized nodules. The scheme provides automatic and accurate detection of pulmonary nodules that reduces the overfitting rate and training time and improves the efficiency of the algorithm. It can assist doctors in the diagnosis of lung cancer and can be extended to other medical image detection and recognition fields.
提出了一种新的基于多尺度特征迁移学习的计算机辅助检测方案——3D U-Net 卷积神经网络,用于自动从包含背景和噪声的胸部区域检测肺结节。测试结果可以作为医生的参考信息,辅助早期肺癌的检测。所提出的方案由三个主要步骤组成:首先,通过各种方法对肺实质区域进行分割。然后,构建具有多尺度特征结构的 3D U-Net 卷积神经网络模型。接下来,通过基于权重的迁移学习方法对网络模型结构进行微调,并在网络模型中选择最优参数。最后,提取数据集对微调后的 3D U-Net 网络模型进行训练,以检测肺结节。使用五折交叉验证方法对 LUNA16 和 TIANCHI17 数据集进行实验。实验结果表明,该方案不仅在检测中、大型结节方面具有明显优势,而且对小型结节的检测准确率也超过 70%。该方案提供了肺结节的自动和准确检测,降低了过拟合率和训练时间,提高了算法的效率。它可以辅助医生进行肺癌的诊断,并可扩展到其他医学图像检测和识别领域。