Department of Radiation Oncology and Winship Cancer Institute, Emory University, Atlanta, GA, 30322, USA.
Department of Radiology and Imaging Sciences and Winship Cancer Institute, Emory University, Atlanta, GA, 30322, USA.
Med Phys. 2019 Sep;46(9):3998-4009. doi: 10.1002/mp.13656. Epub 2019 Jul 17.
The incorporation of cone-beam computed tomography (CBCT) has allowed for enhanced image-guided radiation therapy. While CBCT allows for daily 3D imaging, images suffer from severe artifacts, limiting the clinical potential of CBCT. In this work, a deep learning-based method for generating high quality corrected CBCT (CCBCT) images is proposed.
The proposed method integrates a residual block concept into a cycle-consistent adversarial network (cycle-GAN) framework, called res-cycle GAN, to learn a mapping between CBCT images and paired planning CT images. Compared with a GAN, a cycle-GAN includes an inverse transformation from CBCT to CT images, which constrains the model by forcing calculation of both a CCBCT and a synthetic CBCT. A fully convolution neural network with residual blocks is used in the generator to enable end-to-end CBCT-to-CT transformations. The proposed algorithm was evaluated using 24 sets of patient data in the brain and 20 sets of patient data in the pelvis. The mean absolute error (MAE), peak signal-to-noise ratio (PSNR), normalized cross-correlation (NCC) indices, and spatial non-uniformity (SNU) were used to quantify the correction accuracy of the proposed algorithm. The proposed method is compared to both a conventional scatter correction and another machine learning-based CBCT correction method.
Overall, the MAE, PSNR, NCC, and SNU were 13.0 HU, 37.5 dB, 0.99, and 0.05 in the brain, 16.1 HU, 30.7 dB, 0.98, and 0.09 in the pelvis for the proposed method, improvements of 45%, 16%, 1%, and 93% in the brain, and 71%, 38%, 2%, and 65% in the pelvis, over the CBCT image. The proposed method showed superior image quality as compared to the scatter correction method, reducing noise and artifact severity. The proposed method produced images with less noise and artifacts than the comparison machine learning-based method.
The authors have developed a novel deep learning-based method to generate high-quality corrected CBCT images. The proposed method increases onboard CBCT image quality, making it comparable to that of the planning CT. With further evaluation and clinical implementation, this method could lead to quantitative adaptive radiation therapy.
锥形束计算机断层扫描(CBCT)的应用实现了增强型图像引导放射治疗。虽然 CBCT 允许进行日常的 3D 成像,但图像存在严重伪影,限制了 CBCT 的临床应用潜力。本研究提出了一种基于深度学习的生成高质量校正 CBCT(CCBCT)图像的方法。
所提出的方法将残差块概念集成到循环一致性对抗网络(cycle-GAN)框架中,称为 res-cycle GAN,以学习 CBCT 图像和配对计划 CT 图像之间的映射。与 GAN 相比,cycle-GAN 包括从 CBCT 图像到 CT 图像的逆变换,通过迫使计算 CCBCT 和合成 CBCT 来约束模型。生成器中使用具有残差块的全卷积神经网络实现从 CBCT 到 CT 的端到端转换。该算法使用 24 组脑部患者数据和 20 组骨盆患者数据进行评估。采用平均绝对误差(MAE)、峰值信噪比(PSNR)、归一化互相关(NCC)指数和空间非均匀性(SNU)来量化该算法的校正精度。将该方法与传统散射校正和另一种基于机器学习的 CBCT 校正方法进行了比较。
总体而言,该方法在脑部的 MAE、PSNR、NCC 和 SNU 分别为 13.0 HU、37.5 dB、0.99 和 0.05,在骨盆的 MAE、PSNR、NCC 和 SNU 分别为 16.1 HU、30.7 dB、0.98 和 0.09,与 CBCT 图像相比,脑部分别提高了 45%、16%、1%和 93%,骨盆分别提高了 71%、38%、2%和 65%。与散射校正方法相比,该方法生成的图像质量更高,降低了噪声和伪影的严重程度。与比较的基于机器学习的方法相比,该方法生成的图像噪声和伪影更少。
作者开发了一种新的基于深度学习的方法来生成高质量的校正 CBCT 图像。该方法提高了机载 CBCT 图像质量,使其与计划 CT 相当。随着进一步的评估和临床应用,该方法可以实现定量自适应放射治疗。