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A Bayesian approach to real-time 3D tumor localization via monoscopic x-ray imaging during treatment delivery

机译:贝叶斯方法在治疗过程中通过单视X射线成像实时3D肿瘤定位

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摘要

>Purpose: Monoscopic x-ray imaging with on-board kV devices is an attractive approach for real-time image guidance in modern radiation therapy such as VMAT or IMRT, but it falls short in providing reliable information along the direction of imaging x-ray. By effectively taking consideration of projection data at prior times and/or angles through a Bayesian formalism, the authors develop an algorithm for real-time and full 3D tumor localization with a single x-ray imager during treatment delivery.>Methods: First, a prior probability density function is constructed using the 2D tumor locations on the projection images acquired during patient setup. Whenever an x-ray image is acquired during the treatment delivery, the corresponding 2D tumor location on the imager is used to update the likelihood function. The unresolved third dimension is obtained by maximizing the posterior probability distribution. The algorithm can also be used in a retrospective fashion when all the projection images during the treatment delivery are used for 3D localization purposes. The algorithm does not involve complex optimization of any model parameter and therefore can be used in a “plug-and-play” fashion. The authors validated the algorithm using (1) simulated 3D linear and elliptic motion and (2) 3D tumor motion trajectories of a lung and a pancreas patient reproduced by a physical phantom. Continuous kV images were acquired over a full gantry rotation with the Varian TrueBeam on-board imaging system. Three scenarios were considered: fluoroscopic setup, cone beam CT setup, and retrospective analysis.>Results: For the simulation study, the RMS 3D localization error is 1.2 and 2.4 mm for the linear and elliptic motions, respectively. For the phantom experiments, the 3D localization error is < 1 mm on average and < 1.5 mm at 95th percentile in the lung and pancreas cases for all three scenarios. The difference in 3D localization error for different scenarios is small and is not statistically significant.>Conclusions: The proposed algorithm eliminates the need for any population based model parameters in monoscopic image guided radiotherapy and allows accurate and real-time 3D tumor localization on current standard LINACs with a single x-ray imager.
机译:>目的:车载kV设备的单视X射线成像是在现代放射疗法(例如VMAT或IMRT)中进行实时图像引导的一种有吸引力的方法,但它在沿X射线提供可靠信息方面存在不足X射线成像的方向。通过贝叶斯形式主义有效地考虑了先前时间和/或角度的投影数据,作者开发了一种在治疗过程中使用单个X射线成像仪实时和完整3D肿瘤定位的算法。>方法:< / strong>首先,使用在患者设置过程中获取的投影图像上的2D肿瘤位置构造先验概率密度函数。在治疗过程中只要获取X射线图像,就会使用成像仪上相应的2D肿瘤位置来更新似然函数。通过最大化后验概率分布获得未解决的三维。当治疗递送期间的所有投影图像都用于3D定位时,该算法也可以追溯使用。该算法不涉及任何模型参数的复杂优化,因此可以“即插即用”方式使用。作者使用(1)模拟的3D线性和椭圆运动以及(2)肺部和胰腺患者的3D肿瘤运动轨迹(由物理体模复制)验证了该算法。使用Varian TrueBeam 车载成像系统在整个机架旋转过程中获得连续的kV图像。考虑了以下三种情况:荧光透视设置,锥束CT设置和回顾性分析。>结果:对于模拟研究,线性和椭圆运动的RMS 3D定位误差分别为1.2和2.4 mm。对于幻像实验,在所有这三种情况下,肺和胰腺病例的3D定位误差平均为<1 mm,在第95个百分位数处<1.5 mm。不同情况下3D定位误差的差异很小,并且在统计上并不显着。>结论:该算法消除了单视场图像引导放射治疗中任何基于人群的模型参数的需求,并允许准确,实时使用单个X射线成像仪在当前标准LINAC上进行3D肿瘤定位。

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