Zhong Zichun, Guo Xiaohu, Cai Yiqi, Yang Yin, Wang Jing, Jia Xun, Mao Weihua
University of Texas at Dallas, Richardson, TX 75080, USA; University of Texas Southwestern Medical Center, Dallas, TX 75235, USA.
University of Texas at Dallas, Richardson, TX 75080, USA.
Biomed Res Int. 2016;2016:4382854. doi: 10.1155/2016/4382854. Epub 2016 Feb 25.
By using prior information of planning CT images and feature-based nonuniform meshes, this paper demonstrates that volumetric images can be efficiently registered with a very small portion of 2D projection images of a Cone-Beam Computed Tomography (CBCT) scan. After a density field is computed based on the extracted feature edges from planning CT images, nonuniform tetrahedral meshes will be automatically generated to better characterize the image features according to the density field; that is, finer meshes are generated for features. The displacement vector fields (DVFs) are specified at the mesh vertices to drive the deformation of original CT images. Digitally reconstructed radiographs (DRRs) of the deformed anatomy are generated and compared with corresponding 2D projections. DVFs are optimized to minimize the objective function including differences between DRRs and projections and the regularity. To further accelerate the above 3D-2D registration, a procedure to obtain good initial deformations by deforming the volume surface to match 2D body boundary on projections has been developed. This complete method is evaluated quantitatively by using several digital phantoms and data from head and neck cancer patients. The feature-based nonuniform meshing method leads to better results than either uniform orthogonal grid or uniform tetrahedral meshes.
通过使用计划CT图像的先验信息和基于特征的非均匀网格,本文证明了体积图像可以与锥束计算机断层扫描(CBCT)扫描的非常小部分的二维投影图像有效地配准。基于从计划CT图像中提取的特征边缘计算密度场后,将自动生成非均匀四面体网格,以根据密度场更好地表征图像特征;也就是说,为特征生成更精细的网格。在网格顶点指定位移矢量场(DVF)以驱动原始CT图像的变形。生成变形解剖结构的数字重建射线照片(DRR)并与相应的二维投影进行比较。对DVF进行优化,以最小化目标函数,该目标函数包括DRR与投影之间的差异以及正则性。为了进一步加速上述三维-二维配准,已经开发了一种通过使体积表面变形以匹配投影上的二维身体边界来获得良好初始变形的程序。使用几个数字体模以及来自头颈癌患者的数据对这种完整方法进行了定量评估。基于特征的非均匀网格划分方法比均匀正交网格或均匀四面体网格产生更好的结果。