Liugang Gao, Kai Xie, Chunying Li, Zhengda Lu, Jianfeng Sui, Tao Lin, Xinye Ni, Jianrong Dai
Radiotherapy Department, Second People's Hospital of Changzhou, Nanjing Medical University, Changzhou, China.
Center for Medical Physics, Nanjing Medical University, Changzhou, China.
Front Oncol. 2020 Sep 8;10:1715. doi: 10.3389/fonc.2020.01715. eCollection 2020.
To generate virtual non-contrast (VNC) computed tomography (CT) from intravenous enhanced CT through convolutional neural networks (CNN) and compare calculated dose among enhanced CT, VNC, and real non-contrast scanning. 50 patients who accepted non-contrast and enhanced CT scanning before and after intravenous contrast agent injections were selected, and two sets of CT images were registered. A total of 40 and 10 groups were used as training and test datasets, respectively. The U-Net architecture was applied to learn the relationship between the enhanced and non-contrast CT. VNC images were generated in the test through the trained U-Net. The CT values of non-contrast, enhanced and VNC CT images were compared. The radiotherapy treatment plans for esophageal cancer were designed, and dose calculation was performed. Dose distributions in the three image sets were compared. The mean absolute error of CT values between enhanced and non-contrast CT reached 32.3 ± 2.6 HU, and that between VNC and non-contrast CT totaled 6.7 ± 1.3 HU. The average CT values in enhanced CT of great vessels, heart, lungs, liver, and spinal cord were all significantly higher than those of non-contrast CT ( < 0.05), with the differences reaching 97, 83, 42, 40, and 10 HU, respectively. The average CT values of the organs in VNC CT showed no significant differences from those in non-contrast CT. The relative dose differences of the enhanced and non-contrast CT were -1.2, -1.3, -2.1, and -1.5% in the comparison of mean doses of planned target volume, heart, great vessels, and lungs, respectively. The mean dose calculated by VNC CT showed no significant difference from that by non-contrast CT. The average γ passing rate (2%, 2 mm) of VNC CT image was significantly higher than that of enhanced CT image (0.996 vs. 0.973, < 0.05). Designing a treatment plan based on enhanced CT will enlarge the dose calculation uncertainty in radiotherapy. This paper proposed the generation of VNC CT images from enhanced CT images based on U-Net architecture. The dose calculated through VNC CT images was identical with that obtained through real non-contrast CT.
通过卷积神经网络(CNN)从静脉增强CT生成虚拟平扫(VNC)计算机断层扫描(CT),并比较增强CT、VNC和真实平扫扫描之间的计算剂量。选择50例在静脉注射造影剂前后接受平扫和增强CT扫描的患者,并对两组CT图像进行配准。分别将40组和10组用作训练和测试数据集。应用U-Net架构来学习增强CT和平扫CT之间的关系。在测试中通过训练好的U-Net生成VNC图像。比较平扫、增强和VNC CT图像的CT值。设计食管癌的放射治疗计划并进行剂量计算。比较三个图像集的剂量分布。增强CT和平扫CT之间CT值的平均绝对误差达到32.3±2.6 HU,VNC和平扫CT之间的平均绝对误差总计为6.7±1.3 HU。大血管、心脏、肺、肝脏和脊髓在增强CT中的平均CT值均显著高于平扫CT(<0.05),差异分别达到97、83、42、40和10 HU。VNC CT中各器官的平均CT值与平扫CT中的平均CT值无显著差异。在计划靶体积、心脏、大血管和肺的平均剂量比较中,增强CT和平扫CT的相对剂量差异分别为-1.2%、-1.3%、-2.1%和-1.5%。VNC CT计算的平均剂量与平扫CT计算的平均剂量无显著差异。VNC CT图像的平均γ通过率(2%,2 mm)显著高于增强CT图像(0.996对0.973,<0.05)。基于增强CT设计治疗计划会增加放射治疗中剂量计算的不确定性。本文提出基于U-Net架构从增强CT图像生成VNC CT图像。通过VNC CT图像计算的剂量与通过真实平扫CT获得的剂量相同。