Department of Radiation Oncology and Winship Cancer Institute, Emory University, Atlanta, Georgia, USA.
Department of Radiation and Cellular Oncology, University of Chicago, Chicago, USA.
Med Phys. 2023 Sep;50(9):5518-5527. doi: 10.1002/mp.16377. Epub 2023 Mar 24.
The long acquisition time of CBCT discourages repeat verification imaging, therefore increasing treatment uncertainty. In this study, we present a fast volumetric imaging method for lung cancer radiation therapy using an orthogonal 2D kV/MV image pair.
The proposed model is a combination of 2D and 3D networks. The proposed model consists of five major parts: (1) kV and MV feature extractors are used to extract deep features from the perpendicular kV and MV projections. (2) The feature-matching step is used to re-align the feature maps to their projection angle in a Cartesian coordinate system. By using a residual module, the feature map can focus more on the difference between the estimated and ground truth images. (3) In addition, the feature map is downsized to include more global semantic information for the 3D estimation, which is useful to reduce inhomogeneity. By using convolution-based reweighting, the model is able to further increase the uniformity of image. (4) To reduce the blurry noise of generated 3D volume, the Laplacian latent space loss calculated via the feature map that is extracted via specifically-learned Gaussian kernel is used to supervise the network. (5) Finally, the 3D volume is derived from the trained model. We conducted a proof-of-concept study using 50 patients with lung cancer. An orthogonal kV/MV pair was generated by ray tracing through CT of each phase in a 4D CT scan. Orthogonal kV/MV pairs from nine respiratory phases were used to train this patient-specific model while the kV/MV pair of the remaining phase was held for model testing.
The results are based on simulation data and phantom results from a real Linac system. The mean absolute error (MAE) values achieved by our method were 57.5 HU and 77.4 HU within body and tumor region-of-interest (ROI), respectively. The mean achieved peak-signal-to-noise ratios (PSNR) were 27.6 dB and 19.2 dB within the body and tumor ROI, respectively. The achieved mean normalized cross correlation (NCC) values were 0.97 and 0.94 within the body and tumor ROI, respectively. A phantom study demonstrated that the proposed method can accurately re-position the phantom after shift. It is also shown that the proposed method using both kV and MV is superior to current method using kV or MV only in image quality.
These results demonstrate the feasibility and accuracy of our proposed fast volumetric imaging method from an orthogonal kV/MV pair, which provides a potential solution for daily treatment setup and verification of patients receiving radiation therapy for lung cancer.
由于锥形束 CT(CBCT)采集时间较长,因此不鼓励重复验证成像,从而增加了治疗的不确定性。在本研究中,我们提出了一种使用正交 2D kV/MV 图像对进行肺癌放射治疗的快速容积成像方法。
所提出的模型是二维和三维网络的组合。该模型由五个主要部分组成:(1)kV 和 MV 特征提取器用于从垂直 kV 和 MV 投影中提取深度特征。(2)特征匹配步骤用于将特征图重新调整到笛卡尔坐标系中的投影角度。通过使用残差模块,特征图可以更专注于估计图像和地面实况图像之间的差异。(3)此外,特征图被缩小以包含更多的全局语义信息,以便于减少不均匀性。通过使用基于卷积的重新加权,模型能够进一步提高图像的均匀性。(4)为了减少生成的 3D 体积的模糊噪声,通过使用专门学习的高斯核提取的特征图计算拉普拉斯潜在空间损失,以监督网络。(5)最后,从训练好的模型中导出 3D 体积。我们使用 50 名肺癌患者进行了概念验证研究。通过在 4D CT 扫描的每个相位的 CT 中进行射线追踪,生成正交 kV/MV 对。使用九个呼吸相位的正交 kV/MV 对来训练这个特定于患者的模型,而其余相位的 kV/MV 对则用于模型测试。
结果基于模拟数据和来自真实直线加速器系统的体模结果。我们的方法在体模和肿瘤感兴趣区域(ROI)中的平均绝对误差(MAE)值分别为 57.5 HU 和 77.4 HU。在体模和肿瘤 ROI 中实现的平均峰值信噪比(PSNR)分别为 27.6 dB 和 19.2 dB。在体模和肿瘤 ROI 中实现的平均归一化互相关(NCC)值分别为 0.97 和 0.94。体模研究表明,该方法可以在移位后准确重新定位体模。还表明,与仅使用 kV 或 MV 的当前方法相比,使用 kV 和 MV 的新方法在图像质量方面具有优势。
这些结果表明,我们提出的从正交 kV/MV 对快速容积成像方法具有可行性和准确性,为肺癌患者的日常治疗设置和验证提供了一种潜在的解决方案。