Department of Intervention Medicine, The Second Hospital of Shandong University, Jinan, Shandong, China.
School of Mathematics, Shandong University, Jinan, Shandong, China.
Med Phys. 2024 Jul;51(7):4567-4580. doi: 10.1002/mp.17249. Epub 2024 Jun 11.
While minimizing plan delivery time is beneficial for proton therapy in terms of motion management, patient comfort, and treatment throughput, it often poses a tradeoff with optimizing plan quality. A key component of plan delivery time is the energy switching time, which is approximately proportional to the number of energy layers, that is, the cardinality.
This work aims to develop a novel optimization method that can efficiently compute the pareto surface between plan quality and energy layer cardinality, for the planner to navigate through this quality-and-efficiency tradeoff and select the appropriate plan of a balanced tradeoff.
A new IMPT method CARD is proposed that (1) explicitly incorporates the minimization of energy layer cardinality as an optimization objective, and (2) automatically generates a set of plans sequentially with a descending order in number of energy layers. The energy layer cardinality is penalized through the l-norm regularization with an upper bound, and the upper bound is monotonically decreased to compute a series of treatment plans with gradually decreased energy layer cardinality on the quality-and-efficiency pareto surface. For any given treatment plan, the plan optimality is enforced using dose-volume planning objectives and the plan deliverability is imposed through minimum-monitor-unit (MMU) constraints, with optimization solution algorithm based on iterative convex relaxation.
The new method CARD was validated in comparison with the benchmark plan of all energy layers (P0), and a state-of-the-art method called MMSEL, using prostate, head-and-neck (HN), lung, pancreas, liver and brain cases. While labor-intensive and time-consuming manual parameter tuning was needed for MMSEL to generate plans of predefined energy layer cardinality, CARD automatically and efficiently computed all plans with sequentially decreasing predefined energy layer cardinality all at once. With the acceptable plan quality (i.e., no more than 110% of total optimization objective value from P0), CARD achieved the reduction of number of energy layers to 52% (from 77 to 40), 48% (from 135 to 65), 59% (from 85 to 50), 67% (from 52 to 35), 80% (from 50 to 40), and 30% (from 66 to 20), for prostate, HN, lung, pancreas, liver, and brain cases, respectively, compared to P0, with overall better plan quality than MMSEL. Moreover, due to the nonconvexity of the MMU constraint, CARD provided the similar or even smaller optimization objective than P0, at the same time with fewer number of energy layers, that is, 55 versus 77, 85 versus 135, 45 versus 52, and 25 versus 66 for prostate, HN, pancreas, and brain cases, respectively.
We have developed a novel optimization algorithm CARD that can efficiently and automatically compute a series of treatment plans of any given energy layer sequentially, which allows the planner to navigate through the plan-quality and energy-layer-cardinality tradeoff and select the appropriate plan of a balanced tradeoff.
在质子治疗中,虽然最小化计划交付时间有利于运动管理、患者舒适度和治疗吞吐量,但它通常会牺牲计划质量的优化。计划交付时间的一个关键组成部分是能量切换时间,它与能量层数量(即基数)大致成比例。
本研究旨在开发一种新的优化方法,可以有效地计算计划质量和能量层基数之间的帕累托表面,以便规划者在质量与效率的权衡中进行导航,并选择平衡权衡的适当计划。
提出了一种新的 IMPT 方法 CARD,该方法(1)明确将能量层基数的最小化作为优化目标,(2)自动按能量层数量降序顺序生成一组计划。通过 l-范数正则化对能量层基数进行惩罚,使用单调递减的上限来计算一系列治疗计划,这些计划在质量与效率的帕累托表面上逐渐减少能量层基数。对于任何给定的治疗计划,使用剂量-体积规划目标来强制实施计划最优性,并通过最小监视器单位 (MMU) 约束来强制实施计划可交付性,使用基于迭代凸松弛的优化求解算法。
新方法 CARD 与基准全能量层计划(P0)和一种名为 MMSEL 的最先进方法进行了比较,使用前列腺、头颈部(HN)、肺、胰腺、肝和脑病例进行了比较。虽然 MMSEL 生成预定能量层基数的计划需要费时费力的手动参数调整,但 CARD 可以自动高效地同时计算所有按顺序递减的预定能量层基数的计划。在可接受的计划质量(即不超过 P0 总优化目标值的 110%)下,CARD 实现了能量层数量的减少,前列腺、HN、肺、胰腺、肝和脑病例分别减少了 52%(从 77 减少到 40)、48%(从 135 减少到 65)、59%(从 85 减少到 50)、67%(从 52 减少到 35)、80%(从 50 减少到 40)和 30%(从 66 减少到 20),与 P0 相比,总体计划质量优于 MMSEL。此外,由于 MMU 约束的非凸性,CARD 提供的优化目标与 P0 相同或甚至更小,同时能量层数量更少,即前列腺、HN、胰腺和脑病例分别为 55 比 77、85 比 135、45 比 52 和 25 比 66。
我们开发了一种新的优化算法 CARD,可以有效地自动计算任何给定能量层的一系列治疗计划,这使规划者能够在计划质量和能量层基数之间进行权衡,并选择平衡权衡的适当计划。