Institute of Medical Technology and Intelligent Systems, Hamburg University of Technology, Hamburg, Germany.
Department of Radiation Oncology, Karl-Lennert-Krebscentrum Nord, University Medical Center Schleswig-Holstein, Campus Kiel, Kiel, Germany.
Med Phys. 2024 Jan;51(1):464-475. doi: 10.1002/mp.16804. Epub 2023 Oct 28.
Ideally, inverse planning for HDR brachytherapy (BT) should include the pose of the needles which define the trajectory of the source. This would be particularly interesting when considering the additional freedom and accuracy in needle pose which robotic needle placement enables. However, needle insertion typically leads to tissue deformation, resulting in uncertainty regarding the actual pose of the needles with respect to the tissue.
To efficiently address uncertainty during inverse planning for HDR BT in order to robustly optimize the pose of the needles before insertion, that is, to facilitate path planning for robotic needle placement.
We use a form of stochastic linear programming to model the inverse treatment planning problem. To account for uncertainty, we consider random tissue displacements at the needle tip to simulate tissue deformation. Conventionally for stochastic linear programming, each simulated deformation is reflected by an addition to the linear programming problem which increases problem size and computational complexity substantially and leads to impractical runtime. We propose two efficient approaches for stochastic linear programming. First, we consider averaging dose coefficients to reduce the problem size. Second, we study weighting of the slack variables of an adjusted linear problem to approximate the full stochastic linear program. We compare different approaches to optimize the needle configurations and evaluate their robustness with respect to different amounts of tissue deformation.
Our results illustrate that stochastic planning can improve the robustness of the treatment with respect to deformation. The proposed approaches approximating stochastic linear programming better conform to the tissue deformation compared to conventional linear programming. They show good correlation with the plans computed after deformation while reducing the runtime by two orders of magnitude compared to the complete stochastic linear program. Robust optimization of needle configurations takes on average 59.42 s. Skew needle configurations lead to mean coverage improvements compared to parallel needles from 0.39 to 2.94 percentage points, when 8 mm tissue deformation is considered. Considering tissue deformations from 4 to 10 mm during planning with weighted stochastic optimization and skew needles generally results in improved mean coverage from 1.77 to 4.21 percentage points.
We show that efficient stochastic optimization allows selecting needle configurations which are more robust with respect to potentially negative effects of target deformation and displacement on the achievable prescription dose coverage. The approach facilitates robust path planning for robotic needle placement.
理想情况下,调强近距离治疗(BT)的逆向计划应包括定义源轨迹的针的位置。当考虑到机器人针放置所带来的针位置的额外自由度和准确性时,这将是特别有趣的。然而,针插入通常会导致组织变形,导致实际针相对于组织的位置存在不确定性。
为了在 HDR BT 的逆向计划中有效地解决不确定性,以便在插入前稳健地优化针的位置,即促进机器人针放置的路径规划。
我们使用一种随机线性规划形式来建模逆向治疗计划问题。为了考虑不确定性,我们考虑在针尖处的随机组织位移来模拟组织变形。对于传统的随机线性规划,每个模拟变形都通过向线性规划问题添加一个项来反映,这会大大增加问题的大小和计算复杂性,并导致不切实际的运行时间。我们提出了两种用于随机线性规划的有效方法。首先,我们考虑平均剂量系数来减小问题的大小。其次,我们研究调整后的线性问题的松弛变量的加权,以近似完整的随机线性规划。我们比较了不同的方法来优化针配置,并评估了它们对不同程度的组织变形的稳健性。
我们的结果表明,随机规划可以提高治疗对变形的稳健性。与传统线性规划相比,所提出的方法更好地符合组织变形。它们与变形后计算的计划具有良好的相关性,同时与完整的随机线性规划相比,运行时间减少了两个数量级。针配置的稳健优化平均需要 59.42 秒。当考虑 8mm 组织变形时,与平行针相比,斜针配置导致平均覆盖率提高了 0.39 至 2.94 个百分点。在加权随机优化和斜针的规划中考虑 4 至 10mm 的组织变形通常会导致平均覆盖率从 1.77 到 4.21 个百分点的提高。
我们表明,有效的随机优化允许选择更能抵抗目标变形和位移对可实现处方剂量覆盖的潜在负面影响的针配置。该方法为机器人针放置的稳健路径规划提供了便利。