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Comparison of the automatic segmentation of multiple organs at risk in CT images of lung cancer between deep convolutional neural network-based and atlas-based techniques

机译:肺癌肺癌CT图像危险自动分割的比较基于地图的基于地图的肺癌CT图像

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Background: 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. Materials and methods: 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. Results: 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 <12mm. 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. Conclusion: 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.
机译:背景:在本研究中,将深卷积神经网络(CNN)的自动分割技术应用于肺癌患者的计算机断层扫描(CT)图像中所描绘的风险(OAR)的多器官,并将结果与​​产生的结果进行比较通过地图集为基础的自动分段。材料和方法:产生编码器解码器U-Net神经网络。训练的深CNN进行了36例肺癌CT图像的自动分割。骰子相似度系数(DSC),平均表面距离(MSD)和95%Hausdorff距离(95%HD),使用手动分段结果作为标准,并与通过基于阿特拉斯的分段获得的结果进行比较。结果:对于心脏,肺和肝,令人满意的基于CNN和肝脏的基于CNN和阿特拉斯的技术(平均值:0.87

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