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首页> 外文期刊>Medical Physics >A method to dynamically balance intensity modulated radiotherapy dose between organs-at-risk.
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A method to dynamically balance intensity modulated radiotherapy dose between organs-at-risk.

机译:一种在危险器官之间动态平衡调强放射治疗剂量的方法。

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摘要

The IMRT treatment planning process typically follows a path that is based on the manner in which the planner interactively adjusts the target and organ-at-risk (OAR) constraints and priorities. The time-intensive nature of this process restricts the planner from fully understanding the dose tradeoff between structures, making it unlikely that the resulting plan fully exploits the extent to which dose can be redistributed between anatomical structures. Multiobjective Pareto optimization has been used in the past to enable the planner to more thoroughly explore alternatives in dose trade-off by combining pre-generated Pareto optimal solutions in real time, thereby potentially tailoring a plan more exactly to requirements. However, generating the Pareto optimal solutions can be nonintuitive and computationally time intensive. The author presents an intuitive and fast non-Pareto approach for generating optimization sequences (prior to planning), which can then be rapidly combined by the planner in real time to yield a satisfactory plan. Each optimization sequence incrementally reduces dose to one OAR at a time, starting from the optimization solution where dose to all OARs are reduced with equal priority, until user-specified target coverage limits are violated. The sequences are computationally efficient to generate, since the optimization at each position along a sequence is initiated from the end result of the previous position in the sequence. The pre-generated optimization sequences require no user interaction. In real time, a planner can more or less instantaneously visualize a treatment plan by combining the dose distributions corresponding to user-selected positions along each of the optimization sequences (target coverage is intrinsically maintained in the combination). Interactively varying the selected positions along each of the sequences enables the planner to rapidly understand the nature of dose trade-off between structures and, thereby, arrive at a suitable plan in a short time. This methodology is demonstrated on a prostate cancer case and olfactory neuroblastoma case.
机译:IMRT治疗计划过程通常遵循一种路径,该路径基于计划者以交互方式调整目标和高危器官(OAR)约束条件和优先级的方式。该过程的时间密集性质限制了计划者完全了解结构之间的剂量折衷,从而使得最终的计划不太可能充分利用剂量可以在解剖结构之间重新分配的程度。过去曾使用多目标Pareto优化来使计划者通过实时组合预先生成的Pareto最优解决方案,从而更彻底地探索剂量折衷方案,从而有可能更准确地根据需求量身定制计划。但是,生成帕累托最优解可能是不直观的,并且计算时间密集。作者提出了一种直观且快速的非帕累托方法,用于生成优化序列(在计划之前),然后计划者可以将其实时快速组合以产生令人满意的计划。从最优化解决方案开始,每个优化序列一次将一个OAR的剂量逐步降低至一个OAR,直到所有OAR的剂量均以相同的优先级降低,直到违反用户指定的目标覆盖范围。由于从序列中先前位置的最终结果开始沿序列的每个位置进行优化,因此生成序列的计算效率很高。预先生成的优化序列不需要用户交互。实时地,计划者可以通过组合与沿每个优化序列的用户选择位置相对应的剂量分布,来或多或少地即时可视化治疗计划(目标覆盖率本质上保持在组合中)。沿着每个序列交互地改变选择的位置,使计划者能够快速了解​​结构之间剂量权衡的性质,从而在短时间内得出合适的计划。在前列腺癌病例和嗅觉神经母细胞瘤病例中证明了这种方法。

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