INSERM UMR1101, LaTIM, CHU Morvan, Brest F-29200, France.
Med Phys. 2012 Jun;39(6):3386-95. doi: 10.1118/1.4718578.
Respiratory motion modeling of both tumor and surrounding tissues is a key element in minimizing errors and uncertainties in radiation therapy. Different continuous motion models have been previously developed. However, most of these models are based on the use of parameters such as amplitude and phase extracted from 1D external respiratory signal. A potentially reduced correlation between the internal structures (tumor and healthy organs) and the corresponding external surrogates obtained from such 1D respiratory signal is a limitation of these models. The objective of this work is to describe a continuous patient specific respiratory motion model, accounting for the irregular nature of respiratory signals, using patient external surface information as surrogate measures rather than a 1D respiratory signal.
Ten patients were used in this study having each one 4D CT series, a synchronized RPM signal and patient surfaces extracted from the 4D CT volumes using a threshold based segmentation algorithm. A patient specific model based on the use of principal component analysis was subsequently constructed. This model relates the internal motion described by deformation matrices and the external motion characterized by the amplitude and the phase of the respiratory signal in the case of the RPM or using specific regions of interest (ROI) in the case of the patients' external surface utilization. The capability of the different models considered to handle the irregular nature of respiration was assessed using two repeated 4D CT acquisitions (in two patients) and static CT images acquired at extreme respiration conditions (end of inspiration and expiration) for one patient.
Both quantitative and qualitative parameters covering local and global measures, including an expert observer study, were used to assess and compare the performance of the different motion estimation models considered. Results indicate that using surface information [correlation coefficient (CC): 0.998 ± 0.0006 and model error (ME): 1.35 ± 0.21 mm] is superior to the use of both motion phase and amplitude extracted from a 1D respiratory signal (CC and ME of 0.971 ± 0.02 and 1.64 ± 0.28 mm). The difference in performance was more substantial compared to the use of only one parameter (phase or amplitude) used in the motion model construction. Similarly, the patient surface based model was better in estimating the motion in the repeated 4D CT acquisitions and those CT images acquired at the full inspiration (FI) and the full expiration (FE). Once more, within this context the use of both amplitude and phase in the model building was substantially more robust than the use of phase or amplitude only.
The present study demonstrates the potential of using external patient surfaces for the construction of patient specific respiratory motion models. Such information can be obtained using different devices currently available. The use of external surface information led to the best performance in estimating internal structure motion. On the other hand, the use of both amplitude and phase parameters derived from an 1D respiration signal led to largely superior model performance relative to the use of only one of these two parameters in the model building process.
对肿瘤和周围组织的呼吸运动进行建模是减少放射治疗中误差和不确定性的关键因素。先前已经开发了不同的连续运动模型。然而,这些模型大多基于从一维外部呼吸信号中提取的幅度和相位等参数。从这种一维呼吸信号获得的内部结构(肿瘤和健康器官)与相应的外部替代物之间的相关性降低是这些模型的一个局限性。本工作的目的是描述一种连续的患者特定呼吸运动模型,该模型考虑了呼吸信号的不规则性,使用患者外部表面信息作为替代测量值,而不是一维呼吸信号。
本研究使用了 10 名患者,每位患者都有 4D CT 系列、同步 RPM 信号和使用基于阈值的分割算法从 4D CT 体积中提取的患者表面。随后构建了基于主成分分析的患者特定模型。该模型将内部运动描述为变形矩阵,将外部运动描述为 RPM 信号的幅度和相位(在 RPM 的情况下)或患者外部表面利用的特定感兴趣区域(ROI)的相位。使用两种重复的 4D CT 采集(在两名患者中)和一名患者的极端呼吸条件(吸气末和呼气末)获得的静态 CT 图像,评估和比较所考虑的不同运动估计模型处理呼吸不规则性的能力。
使用涵盖局部和全局度量的定量和定性参数,包括专家观察者研究,评估和比较了所考虑的不同运动估计模型的性能。结果表明,使用表面信息(相关系数[CC]:0.998±0.0006 和模型误差[ME]:1.35±0.21mm)优于从一维呼吸信号提取的运动相位和幅度(CC 和 ME 为 0.971±0.02 和 1.64±0.28mm)。与仅使用运动模型构建中使用的一个参数(相位或幅度)相比,性能差异更大。同样,基于患者表面的模型在估计重复 4D CT 采集和完全吸气(FI)和完全呼气(FE)时的运动方面表现更好。同样,在这种情况下,在模型构建中使用幅度和相位两者比仅使用相位或幅度更稳健。
本研究证明了使用外部患者表面构建患者特定呼吸运动模型的潜力。可以使用当前可用的不同设备获取此类信息。使用外部表面信息可实现对内部结构运动的最佳估计。另一方面,与仅在模型构建过程中使用这两个参数中的一个相比,使用从一维呼吸信号中提取的幅度和相位参数可大大提高模型性能。