Neylon J, Qi X, Sheng K, Staton R, Pukala J, Manon R, Low D A, Kupelian P, Santhanam A
Department of Radiation Oncology, University of California Los Angeles, 200 Medical Plaza, #B265, Los Angeles, California 90095.
Department of Radiation Oncology, M.D. Anderson Cancer Center, Orlando, 1440 South Orange Avenue, Orlando, Florida 32808.
Med Phys. 2015 Jan;42(1):232-43. doi: 10.1118/1.4903504.
Validating the usage of deformable image registration (dir) for daily patient positioning is critical for adaptive radiotherapy (RT) applications pertaining to head and neck (HN) radiotherapy. The authors present a methodology for generating biomechanically realistic ground-truth data for validating dir algorithms for HN anatomy by (a) developing a high-resolution deformable biomechanical HN model from a planning CT, (b) simulating deformations for a range of interfraction posture changes and physiological regression, and (c) generating subsequent CT images representing the deformed anatomy.
The biomechanical model was developed using HN kVCT datasets and the corresponding structure contours. The voxels inside a given 3D contour boundary were clustered using a graphics processing unit (GPU) based algorithm that accounted for inconsistencies and gaps in the boundary to form a volumetric structure. While the bony anatomy was modeled as rigid body, the muscle and soft tissue structures were modeled as mass-spring-damper models with elastic material properties that corresponded to the underlying contoured anatomies. Within a given muscle structure, the voxels were classified using a uniform grid and a normalized mass was assigned to each voxel based on its Hounsfield number. The soft tissue deformation for a given skeletal actuation was performed using an implicit Euler integration with each iteration split into two substeps: one for the muscle structures and the other for the remaining soft tissues. Posture changes were simulated by articulating the skeletal structure and enabling the soft structures to deform accordingly. Physiological changes representing tumor regression were simulated by reducing the target volume and enabling the surrounding soft structures to deform accordingly. Finally, the authors also discuss a new approach to generate kVCT images representing the deformed anatomy that accounts for gaps and antialiasing artifacts that may be caused by the biomechanical deformation process. Accuracy and stability of the model response were validated using ground-truth simulations representing soft tissue behavior under local and global deformations. Numerical accuracy of the HN deformations was analyzed by applying nonrigid skeletal transformations acquired from interfraction kVCT images to the model's skeletal structures and comparing the subsequent soft tissue deformations of the model with the clinical anatomy.
The GPU based framework enabled the model deformation to be performed at 60 frames/s, facilitating simulations of posture changes and physiological regressions at interactive speeds. The soft tissue response was accurate with a R(2) value of >0.98 when compared to ground-truth global and local force deformation analysis. The deformation of the HN anatomy by the model agreed with the clinically observed deformations with an average correlation coefficient of 0.956. For a clinically relevant range of posture and physiological changes, the model deformations stabilized with an uncertainty of less than 0.01 mm.
Documenting dose delivery for HN radiotherapy is essential accounting for posture and physiological changes. The biomechanical model discussed in this paper was able to deform in real-time, allowing interactive simulations and visualization of such changes. The model would allow patient specific validations of the dir method and has the potential to be a significant aid in adaptive radiotherapy techniques.
验证可变形图像配准(DIR)在日常患者定位中的应用对于头颈部(HN)放疗的自适应放疗(RT)应用至关重要。作者提出了一种生成生物力学逼真的地面真值数据的方法,用于通过以下方式验证HN解剖结构的DIR算法:(a)从计划CT开发高分辨率可变形生物力学HN模型,(b)模拟一系列分次间姿势变化和生理退缩的变形,以及(c)生成表示变形解剖结构的后续CT图像。
使用HN千伏CT数据集和相应的结构轮廓开发生物力学模型。使用基于图形处理单元(GPU)的算法对给定3D轮廓边界内的体素进行聚类,该算法考虑了边界中的不一致性和间隙,以形成体积结构。虽然骨解剖结构被建模为刚体,但肌肉和软组织结构被建模为具有与基础轮廓解剖结构相对应的弹性材料特性的质量-弹簧-阻尼器模型。在给定的肌肉结构内,使用均匀网格对体素进行分类,并根据其Hounsfield数为每个体素分配归一化质量。对于给定的骨骼驱动,软组织变形使用隐式欧拉积分进行,每次迭代分为两个子步骤:一个用于肌肉结构,另一个用于其余软组织。通过铰接骨骼结构并使软结构相应变形来模拟姿势变化。通过减小靶体积并使周围软结构相应变形来模拟代表肿瘤退缩的生理变化。最后,作者还讨论了一种生成表示变形解剖结构的千伏CT图像的新方法,该方法考虑了生物力学变形过程可能引起的间隙和抗混叠伪影。使用表示局部和全局变形下软组织行为的地面真值模拟验证了模型响应的准确性和稳定性。通过将从分次间千伏CT图像获取的非刚性骨骼变换应用于模型的骨骼结构,并将模型随后的软组织变形与临床解剖结构进行比较,分析了HN变形的数值准确性。
基于GPU的框架使模型变形能够以60帧/秒的速度进行,便于以交互速度模拟姿势变化和生理退缩。与地面真值全局和局部力变形分析相比,软组织响应准确,R(2)值>0.98。模型对HN解剖结构的变形与临床观察到的变形一致,平均相关系数为0.956。对于临床相关的姿势和生理变化范围,模型变形稳定,不确定性小于0.01毫米。
记录HN放疗的剂量传递对于考虑姿势和生理变化至关重要。本文讨论的生物力学模型能够实时变形,允许对这些变化进行交互式模拟和可视化。该模型将允许对DIR方法进行患者特异性验证,并有可能在自适应放疗技术中提供重要帮助。