Biophysics Department, GSI Helmholtzzentrum für Schwerionenforschung, Darmstadt, Germany.
Department of Electrical Engineering and Information Technology, Technische Universität Darmstadt, Darmstadt, Germany.
Phys Med Biol. 2024 Jul 19;69(15). doi: 10.1088/1361-6560/ad5bba.
Scanned particle therapy often requires complex treatment plans, robust optimization, as well as treatment adaptation. Plan optimization is especially complicated for heavy ions due to the variable relative biological effectiveness. We present a novel deep-learning model to select a subset of voxels in the planning process thus reducing the planning problem size for improved computational efficiency.Using only a subset of the voxels in target and organs at risk (OARs) we produced high-quality treatment plans, but heuristic selection strategies require manual input. We designed a deep-learning model based on-Net to obtain an optimal voxel sampling without relying on patient-specific user input. A cohort of 70 head and neck patients that received carbon ion therapy was used for model training (50), validation (10) and testing (10). For training, a total of 12 500 carbon ion plans were optimized, using a highly efficient artificial intelligence (AI) infrastructure implemented into a research treatment planning platform. A custom loss function increased sampling density in underdosed regions, while aiming to reduce the total number of voxels.On the test dataset, the number of voxels in the optimization could be reduced by 84.8% (median) at <1% median loss in plan quality. When the model was trained to reduce sampling in the target only while keeping all voxels in OARs, a median reduction up to 71.6% was achieved, with 0.5% loss in the plan quality. The optimization time was reduced by a factor of 7.5 for the total AI selection model and a factor of 3.7 for the model with only target selection.The novel deep-learning voxel sampling technique achieves a significant reduction in computational time with a negligible loss in the plan quality. The reduction in optimization time can be especially useful for future real-time adaptation strategies.
扫描粒子治疗通常需要复杂的治疗计划、强大的优化以及治疗适应。由于相对生物效应的可变性,重离子的计划优化尤其复杂。我们提出了一种新的深度学习模型,用于在规划过程中选择体素的子集,从而减少规划问题的大小,提高计算效率。
仅使用目标和危及器官 (OAR) 中的体素子集,我们生成了高质量的治疗计划,但启发式选择策略需要手动输入。我们设计了一种基于-Net 的深度学习模型,以获得无需依赖患者特定用户输入的最佳体素采样。使用接受碳离子治疗的 70 例头颈部患者的队列进行模型训练(50 例)、验证(10 例)和测试(10 例)。为了训练,总共优化了 12500 个碳离子计划,使用高效的人工智能 (AI) 基础设施实现到研究治疗计划平台中。自定义损失函数增加了在剂量不足区域的采样密度,同时旨在减少体素总数。
在测试数据集上,在计划质量损失小于 1%的情况下,优化中体素的数量可以减少 84.8%(中位数)。当模型被训练为仅在目标中减少采样而保持 OAR 中的所有体素时,可以达到中位数减少 71.6%,计划质量损失为 0.5%。总 AI 选择模型的优化时间减少了 7.5 倍,仅目标选择模型的优化时间减少了 3.7 倍。
新的深度学习体素采样技术在计划质量损失可忽略不计的情况下,显著减少了计算时间。优化时间的减少对于未来的实时适应策略尤其有用。