Icon Cancer Centre, Wahroonga, Australia.
Centre of Medical and Radiation Physics, University of Wollongong, Wollongong, Australia.
Med Phys. 2021 Nov;48(11):7089-7098. doi: 10.1002/mp.15248. Epub 2021 Oct 11.
Cone-beam computed tomography (CBCT) is increasingly utilized in radiation therapy for image guidance and adaptive applications. While iterative reconstruction algorithms have been shown to outperform traditional filtered back-projection methods in improving image quality and reducing imaging dose, they cannot handle data truncation in the axial view, which frequently occurs in the full-fan partial-trajectory acquisition mode. This proof-of-concept study presents a novel approach on truncation artifact reduction by utilizing a priori preconditioned information as the initial input for the iterative algorithm.
Projections containing axial truncation were used for image reconstruction in extended axial field-of-view (AFOV) using the conjugate gradient least-squares (CGLS) algorithm. A priori information in the form of a planning fan-beam CT (FBCT) was repositioned in the expected CBCT imaging geometry, then further processed to dampen high-density features and convolved with a cubic Gaussian kernel to ensure differentiability for the gradient descent method. Anatomical and positional differences between the estimated and the actual imaging object were introduced to verify the efficacy of the proposed method.
Extending the reconstruction AFOV alone could partially reduce truncation artifact. Using a priori information directly resulted in ghosting artifact when there were anatomical and positional differences between the estimated and the actual imaging object. Using a priori preconditioned information was shown to effectively reduce truncation artifact and recover peripheral information.
Using a priori preconditioned information can effectively alleviate truncation artifact and assist recovery of peripheral information in iterative CBCT reconstruction.
锥形束计算机断层扫描(CBCT)越来越多地用于放射治疗中的图像引导和自适应应用。虽然迭代重建算法已经被证明可以通过提高图像质量和减少成像剂量来优于传统的滤波反投影方法,但它们无法处理轴向视图中的数据截断,这种情况在全扇形部分轨迹采集模式中经常发生。本概念验证研究提出了一种通过利用先验预处理信息作为迭代算法的初始输入来减少截断伪影的新方法。
使用共轭梯度最小二乘法(CGLS)算法,在扩展轴向视野(AFOV)中使用包含轴向截断的投影进行图像重建。以计划扇形束 CT(FBCT)的形式提供先验信息,重新定位到预期的 CBCT 成像几何形状中,然后进一步处理以衰减高密度特征,并与立方高斯核卷积以确保梯度下降方法的可微性。引入估计和实际成像物体之间的解剖和位置差异,以验证所提出方法的效果。
单独扩展重建 AFOV 可以部分减少截断伪影。当估计和实际成像物体之间存在解剖和位置差异时,直接使用先验信息会导致鬼影伪影。使用先验预处理信息被证明可以有效地减少截断伪影并恢复外围信息。
使用先验预处理信息可以有效地减轻截断伪影,并有助于在迭代 CBCT 重建中恢复外围信息。