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Automatic treatment plan re-optimization for adaptive radiotherapy guided with the initial plan DVHs

机译:在初始计划DVH的指导下,针对适应性放射治疗的自动治疗计划重新优化

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摘要

Adaptive radiation therapy (ART) can reduce normal tissue toxicity and/or improve tumor control through treatment adaptations based on the current patient anatomy. Developing an efficient and effective re-planning algorithm is an important step toward the clinical realization of ART. For the re-planning process, manual trial-and-error approach to fine-tune planning parameters is time-consuming and is usually considered unpractical, especially for online ART. It is desirable to automate this step to yield a plan of acceptable quality with minimal interventions. In ART, prior information in the original plan is available, such as dose-volume histogram (DVH), which can be employed to facilitate the automatic re-planning process. The goal of this work is to develop an automatic re-planning algorithm to generate a plan with similar, or possibly better, DVH curves compared with the clinically delivered original plan. Specifically, our algorithm iterates the following two loops. An inner loop is the traditional fluence map optimization, in which we optimize a quadratic objective function penalizing the deviation of the dose received by each voxel from its prescribed or threshold dose with a set of fixed voxel weighting factors. In outer loop, the voxel weighting factors in the objective function are adjusted according to the deviation of the current DVH curves from those in the original plan. The process is repeated until the DVH curves are acceptable or maximum iteration step is reached. The whole algorithm is implemented on GPU for high efficiency. The feasibility of our algorithm has been demonstrated with three head-and-neck cancer IMRT cases, each having an initial planning CT scan and another treatment CT scan acquired in the middle of treatment course. Compared with the DVH curves in the original plan, the DVH curves in the resulting plan using our algorithm with 30 iterations are better for almost all structures. The re-optimization process takes about 30 s using our in-house optimization engine.
机译:自适应放射疗法(ART)可以通过根据当前患者的解剖结构进行适应性治疗来降低正常组织毒性和/或改善肿瘤控制。开发有效且有效的重新计划算法是实现ART的重要一步。对于重新计划过程,手动尝试和尝试错误的方法来微调计划参数非常耗时,通常被认为不切实际,尤其是对于在线ART。期望使这一步骤自动化以产生具有最少干预的可接受质量的计划。在ART中,原始计划中的先验信息是可用的,例如剂量-体积直方图(DVH),可用于促进自动重新计划过程。这项工作的目的是开发一种自动重新计划算法,以生成与临床交付的原始计划相比具有相似或更佳DVH曲线的计划。具体来说,我们的算法会迭代以下两个循环。内循环是传统的注量图优化,其中我们优化了一个二次目标函数,用一组固定的体素权重因子来惩罚每个体素接收的剂量与其规定剂量或阈值剂量之间的偏差。在外循环中,根据当前DVH曲线与原始计划中的DVH曲线的偏差,调整目标函数中的体素权重因子。重复该过程,直到DVH曲线可接受或达到最大迭代步骤为止。整个算法在GPU上实现,效率高。我们的算法在3例头颈癌IMRT病例中得到了证明,每例病例均具有初始计划的CT扫描和在治疗过程中途获得的另一种治疗CT扫描。与原始计划中的DVH曲线相比,使用我们的算法经过30次迭代的结果计划中的DVH曲线几乎适用于所有结构。使用我们的内部优化引擎,重新优化过程大约需要30 s。

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