Xu Yuan, Yan Hao, Ouyang Luo, Wang Jing, Zhou Linghong, Cervino Laura, Jiang Steve B, Jia Xun
Department of Radiation Oncology, University of Texas Southwestern Medical Center, Dallas, Texas 75235 and Department of Biomedical Engineering, Southern Medical University, Guangzhou, Guangdong 510515, China.
Department of Radiation Oncology, University of Texas Southwestern Medical Center, Dallas, Texas 75235.
Med Phys. 2015 May;42(5):2498-509. doi: 10.1118/1.4918577.
It is an intriguing problem to generate an instantaneous volumetric image based on the corresponding x-ray projection. The purpose of this study is to develop a new method to achieve this goal via a sparse learning approach.
To extract motion information hidden in projection images, the authors partitioned a projection image into small rectangular patches. The authors utilized a sparse learning method to automatically select patches that have a high correlation with principal component analysis (PCA) coefficients of a lung motion model. A model that maps the patch intensity to the PCA coefficients was built along with the patch selection process. Based on this model, a measured projection can be used to predict the PCA coefficients, which are then further used to generate a motion vector field and hence a volumetric image. The authors have also proposed an intensity baseline correction method based on the partitioned projection, in which the first and the second moments of pixel intensities at a patch in a simulated projection image are matched with those in a measured one via a linear transformation. The proposed method has been validated in both simulated data and real phantom data.
The algorithm is able to identify patches that contain relevant motion information such as the diaphragm region. It is found that an intensity baseline correction step is important to remove the systematic error in the motion prediction. For the simulation case, the sparse learning model reduced the prediction error for the first PCA coefficient to 5%, compared to the 10% error when sparse learning was not used, and the 95th percentile error for the predicted motion vector was reduced from 2.40 to 0.92 mm. In the phantom case with a regular tumor motion, the predicted tumor trajectory was successfully reconstructed with a 0.82 mm error for tumor center localization compared to a 1.66 mm error without using the sparse learning method. When the tumor motion was driven by a real patient breathing signal with irregular periods and amplitudes, the average tumor center error was 0.6 mm. The algorithm robustness with respect to sparsity level, patch size, and presence or absence of diaphragm, as well as computation time, has also been studied.
The authors have developed a new method that automatically identifies motion information from an x-ray projection, based on which a volumetric image is generated.
基于相应的X射线投影生成即时体积图像是一个有趣的问题。本研究的目的是通过稀疏学习方法开发一种新方法来实现这一目标。
为了提取隐藏在投影图像中的运动信息,作者将投影图像划分为小的矩形块。作者利用稀疏学习方法自动选择与肺运动模型的主成分分析(PCA)系数具有高度相关性的块。在块选择过程中构建了一个将块强度映射到PCA系数的模型。基于该模型,测量的投影可用于预测PCA系数,然后进一步用于生成运动矢量场,进而生成体积图像。作者还提出了一种基于划分投影的强度基线校正方法,其中通过线性变换将模拟投影图像中一个块处像素强度的一阶矩和二阶矩与测量投影图像中的一阶矩和二阶矩相匹配。所提出的方法已在模拟数据和真实体模数据中得到验证。
该算法能够识别包含相关运动信息的块,如膈肌区域。发现强度基线校正步骤对于消除运动预测中的系统误差很重要。对于模拟情况,稀疏学习模型将第一个PCA系数的预测误差降低到5%,而未使用稀疏学习时误差为10%,预测运动矢量的第95百分位数误差从2.40毫米降低到0.92毫米。在具有规则肿瘤运动的体模情况下,与未使用稀疏学习方法时1.66毫米的误差相比,成功重建了预测的肿瘤轨迹,肿瘤中心定位误差为0.82毫米。当肿瘤运动由具有不规则周期和幅度的真实患者呼吸信号驱动时,平均肿瘤中心误差为0.6毫米。还研究了该算法在稀疏度水平、块大小、膈肌的有无以及计算时间方面的鲁棒性。
作者开发了一种新方法,可从X射线投影中自动识别运动信息,并在此基础上生成体积图像。