a State Key Laboratory of Oncology in South China , Collaborative Innovation Center for Cancer Medicine, Sun Yat-sen University Cancer Center , Guangzhou , China.
b School of Physics , Sun Yat-sen University , Guangzhou , China.
Acta Oncol. 2019 Feb;58(2):257-264. doi: 10.1080/0284186X.2018.1529421. Epub 2018 Nov 6.
In this study, a deep convolutional neural network (CNN)-based automatic segmentation technique was applied to multiple organs at risk (OARs) depicted in computed tomography (CT) images of lung cancer patients, and the results were compared with those generated through atlas-based automatic segmentation.
An encoder-decoder U-Net neural network was produced. The trained deep CNN performed the automatic segmentation of CT images for 36 cases of lung cancer. The Dice similarity coefficient (DSC), the mean surface distance (MSD) and the 95% Hausdorff distance (95% HD) were calculated, with manual segmentation results used as the standard, and were compared with the results obtained through atlas-based segmentation.
For the heart, lungs and liver, both the deep CNN-based and atlas-based techniques performed satisfactorily (average values: 0.87 < DSC < 0.95, 1.8 mm < MSD < 3.8 mm, 7.9 mm < 95% HD <11 mm). For the spinal cord and the oesophagus, the two methods had statistically significant differences. For the atlas-based technique, the average values were 0.54 < DSC < 0.71, 2.6 mm < MSD < 3.1 mm and 9.4 mm < 95% HD <12 mm. For the deep CNN-based technique, the average values were 0.71 < DSC < 0.79, 1.2 mm < MSD <2.2 mm and 4.0 mm < 95% HD < 7.9 mm.
Our results showed that automatic segmentation based on a deep convolutional neural network enabled us to complete automatic segmentation tasks rapidly. Deep convolutional neural networks can be satisfactorily adapted to segment OARs during radiation treatment planning for lung cancer patients.
本研究应用基于深度卷积神经网络(CNN)的自动分割技术对肺癌患者 CT 图像中的多个危及器官(OAR)进行自动分割,并与基于图谱的自动分割结果进行比较。
制作了一个编码器-解码器 U-Net 神经网络。经过训练的深度 CNN 对 36 例肺癌 CT 图像进行了自动分割。以手动分割结果为标准,计算 Dice 相似系数(DSC)、平均表面距离(MSD)和 95% Hausdorff 距离(95% HD),并与基于图谱的分割结果进行比较。
对于心脏、肺和肝,基于深度 CNN 和基于图谱的方法均表现良好(平均值:0.87<DSC<0.95,1.8mm<MSD<3.8mm,7.9mm<95% HD<11mm)。对于脊髓和食管,两种方法存在统计学差异。对于基于图谱的方法,平均值为 0.54<DSC<0.71,2.6mm<MSD<3.1mm,9.4mm<95% HD<12mm。对于基于深度 CNN 的方法,平均值为 0.71<DSC<0.79,1.2mm<MSD<2.2mm,4.0mm<95% HD<7.9mm。
本研究结果表明,基于深度卷积神经网络的自动分割能够快速完成自动分割任务。深度卷积神经网络可以很好地适应肺癌患者放射治疗计划中的 OAR 分割。