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Modeling and uncertainty quantification of motion of lung tumors for image guided radiation therapy

机译:影像引导放射治疗的肺部肿瘤运动建模和不确定性量化

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Target localization is a key issue in the image guided radiation therapy procedures for treating tumors in thorax and abdomen. Breathing induced tumor motion necessitates larger margins during radiation therapy planning which may be harmful for healthy tissue surrounding the tumor. Large sampling time in data acquisition and latencies involved in real time imaging systems and tracking system pose a significant challenge to target localization. A framework based on pulmonary mechanics is developed to predict and precisely track the breathing induced motion of lung tumor to direct the tracking system to an estimated position instead of an observed one. A hybrid approach based on the correlation of real-time imagery data of internal markers and easy to measure external respiratory signals like flow readings etc, is proposed to support dynamic radiation therapy procedures. Issues related to reliability of proposed model predictions in the presence of parametric uncertainty are explored using Polynomial Chaos Expansion.
机译:目标定位是用于治疗胸部和腹部肿瘤的影像引导放射治疗程序中的关键问题。呼吸诱导的肿瘤运动需要在放射治疗计划期间留出更大的余量,这可能对肿瘤周围的健康组织有害。数据采集​​中的大量采样时间以及实时成像系统和跟踪系统中涉及的延迟对目标定位提出了重大挑战。开发了一种基于肺力学的框架,以预测和精确跟踪呼吸诱导的肺肿瘤运动,以将跟踪系统引导至估计位置,而不是所观察到的位置。为了支持动态放射治疗程序,提出了一种基于内部标记的实时图像数据的相关性和易于测量流量读数等外部呼吸信号的混合方法。使用多项式混沌展开探讨了与存在参数不确定性的拟议模型预测的可靠性有关的问题。

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