Imae Toshikazu, Kaji Shizuo, Kida Satoshi, Matsuda Kanako, Takenaka Shigeharu, Aoki Atsushi, Nakamoto Takahiro, Ozaki Sho, Nawa Kanabu, Yamashita Hideomi, Nakagawa Keiichi, Abe Osamu
Department of Radiology, University of Tokyo Hospital.
Institute of Mathematics for Industry, Kyushu University.
Nihon Hoshasen Gijutsu Gakkai Zasshi. 2020;76(11):1173-1184. doi: 10.6009/jjrt.2020_JSRT_76.11.1173.
Volumetric modulated arc therapy (VMAT) can acquire projection images during rotational irradiation, and cone-beam computed tomography (CBCT) images during VMAT delivery can be reconstructed. The poor quality of CBCT images prevents accurate recognition of organ position during the treatment. The purpose of this study was to improve the image quality of CBCT during the treatment by cycle generative adversarial network (CycleGAN).
Twenty patients with clinically localized prostate cancer were treated with VMAT, and projection images for intra-treatment CBCT (iCBCT) were acquired. Synthesis of PCT (SynPCT) with improved image quality by CycleGAN requires only unpaired and unaligned iCBCT and planning CT (PCT) images for training. We performed visual and quantitative evaluation to compare iCBCT, SynPCT and PCT deformable image registration (DIR) to confirm the clinical usefulness.
We demonstrated suitable CycleGAN networks and hyperparameters for SynPCT. The image quality of SynPCT improved visually and quantitatively while preserving anatomical structures of the original iCBCT. The undesirable deformation of PCT was reduced when SynPCT was used as its reference instead of iCBCT.
We have performed image synthesis with preservation of organ position by CycleGAN for iCBCT and confirmed the clinical usefulness.
容积调强弧形治疗(VMAT)可在旋转照射过程中获取投影图像,并且可以重建VMAT治疗期间的锥形束计算机断层扫描(CBCT)图像。CBCT图像质量较差妨碍了治疗期间对器官位置的准确识别。本研究的目的是通过循环生成对抗网络(CycleGAN)提高治疗期间CBCT的图像质量。
20例临床局限性前列腺癌患者接受VMAT治疗,并获取治疗期间CBCT(iCBCT)的投影图像。通过CycleGAN提高图像质量的合成PCT(SynPCT)仅需要未配对和未对齐的iCBCT和计划CT(PCT)图像进行训练。我们进行了视觉和定量评估,以比较iCBCT、SynPCT和PCT可变形图像配准(DIR),以确认其临床实用性。
我们展示了适用于SynPCT的CycleGAN网络和超参数。SynPCT的图像质量在视觉和定量方面均有改善,同时保留了原始iCBCT的解剖结构。当使用SynPCT而非iCBCT作为参考时,PCT的不良变形减少。
我们通过CycleGAN对iCBCT进行了保留器官位置的图像合成,并证实了其临床实用性。