Bioinformatics Core, Cancer Institute of New Jersey, University of Medicine and Dentistry of New Jersey, 195 Little Albany Street, New Brunswick, New Jersey 08901, USA.
Med Phys. 2010 Jan;37(1):197-210. doi: 10.1118/1.3271389.
High-speed nonrigid registration between the planning CT and the treatment CBCT data is critical for real time image guided radiotherapy (IGRT) to improve the dose distribution and to reduce the toxicity to adjacent organs. The authors propose a new fully automatic 3D registration framework that integrates object-based global and seed constraints with the grayscale-based "demons" algorithm.
Clinical objects were segmented on the planning CT images and were utilized as meshless deformable models during the nonrigid registration process. The meshless models reinforced a global constraint in addition to the grayscale difference between CT and CBCT in order to maintain the shape and the volume of geometrically complex 3D objects during the registration. To expedite the registration process, the framework was stratified into hierarchies, and the authors used a frequency domain formulation to diffuse the displacement between the reference and the target in each hierarchy. Also during the registration of pelvis images, they replaced the air region inside the rectum with estimated pixel values from the surrounding rectal wall and introduced an additional seed constraint to robustly track and match the seeds implanted into the prostate. The proposed registration framework and algorithm were evaluated on 15 real prostate cancer patients. For each patient, prostate gland, seminal vesicle, bladder, and rectum were first segmented by a radiation oncologist on planning CT images for radiotherapy planning purpose. The same radiation oncologist also manually delineated the tumor volumes and critical anatomical structures in the corresponding CBCT images acquired at treatment. These delineated structures on the CBCT were only used as the ground truth for the quantitative validation, while structures on the planning CT were used both as the input to the registration method and the ground truth in validation. By registering the planning CT to the CBCT, a displacement map was generated. Segmented volumes in the CT images deformed using the displacement field were compared against the manual segmentations in the CBCT images to quantitatively measure the convergence of the shape and the volume. Other image features were also used to evaluate the overall performance of the registration.
The algorithm was able to complete the segmentation and registration process within 1 min, and the superimposed clinical objects achieved a volumetric similarity measure of over 90% between the reference and the registered data. Validation results also showed that the proposed registration could accurately trace the deformation inside the target volume with average errors of less than 1 mm. The method had a solid performance in registering the simulated images with up to 20 Hounsfield unit white noise added. Also, the side by side comparison with the original demons algorithm demonstrated its improved registration performance over the local pixel-based registration approaches.
Given the strength and efficiency of the algorithm, the proposed method has significant clinical potential to accelerate and to improve the CBCT delineation and targets tracking in online IGRT applications.
规划 CT 与治疗 CBCT 数据之间的高速非刚性配准对于实时图像引导放射治疗(IGRT)至关重要,可改善剂量分布并降低对相邻器官的毒性。作者提出了一种新的完全自动的 3D 配准框架,该框架将基于对象的全局和种子约束与基于灰度的“恶魔”算法集成在一起。
在规划 CT 图像上对临床对象进行分割,并在非刚性配准过程中将其用作无网格变形模型。无网格模型除了在 CT 和 CBCT 之间的灰度差异之外,还增强了全局约束,以在配准过程中保持几何形状复杂的 3D 对象的形状和体积。为了加快配准过程,该框架分层进行,作者使用频域公式在每个层次上扩散参考和目标之间的位移。此外,在骨盆图像的配准过程中,他们用来自直肠壁周围的估计像素值替换直肠内的空气区域,并引入了附加的种子约束,以稳健地跟踪和匹配植入前列腺的种子。在 15 名真实的前列腺癌患者中评估了所提出的配准框架和算法。对于每个患者,放射肿瘤学家首先在规划 CT 图像上为放射治疗计划目的对前列腺,精囊,膀胱和直肠进行分割。同一位放射肿瘤学家还手动描绘了在治疗时获得的相应 CBCT 图像中的肿瘤体积和关键解剖结构。CBCT 上的这些描绘结构仅用于定量验证的真实情况,而规划 CT 上的结构既用作配准方法的输入,也用作验证中的真实情况。通过将规划 CT 配准到 CBCT,可以生成位移图。使用位移场变形的 CT 图像中的分割体积与 CBCT 图像中的手动分割进行比较,以定量测量形状和体积的收敛性。还使用其他图像特征来评估配准的整体性能。
该算法能够在 1 分钟内完成分割和配准过程,并且参考和配准数据之间的叠加临床对象达到了超过 90%的体积相似性度量。验证结果还表明,该配准方法可以准确地跟踪目标体积内的变形,平均误差小于 1 毫米。该方法在模拟图像中的表现非常出色,最多可添加 20 个亨氏单位的白噪声。此外,与原始恶魔算法的并排比较表明,它在基于局部像素的配准方法方面具有更好的配准性能。
鉴于该算法的强大功能和效率,该方法具有很大的临床潜力,可以加快在线 IGRT 应用中 CBCT 描绘和靶区跟踪的速度并提高其精度。