Anderson Parker, Xu Yihang, Bui Ricky, Cyriac Jonathan, Kaderka Robert, Bossart Elizabeth, Hanson Nathan, Dogan Nesrin
Radiation Oncology, University of Miami Miller School of Medicine, Miami, USA.
Radiation Oncology, University of Miami, Miami, USA.
Cureus. 2025 May 4;17(5):e83458. doi: 10.7759/cureus.83458. eCollection 2025 May.
Introduction In this work, we aimed to create and assess the performance of a knowledge-based planning (KBP) model for optimizing intensity-modulated proton therapy (IMPT) in the treatment of prostate cancer involving pelvic lymph nodes (LNs). Materials and methods Fifty patients previously treated with IMPT to the prostate/prostate bed, including LNs and optional gross tumor volume (GTV) boost, were used for the training of a KBP model. The model was iteratively refined by replanning a subset of 20 of these patients. For validation, 20 patients not included in the model training set were used. Treatment plans were optimized using the objective list predicted by the model. Plan quality was evaluated using dosimetric metrics for both target and organs at risk (OARs), and the results were compared with manually generated plans using paired t-tests (p < 0.05). Results Eighteen out of 20 plans generated by the model were deemed to be clinically acceptable without the need for additional adjustments. The plans produced by the model demonstrated comparable robustness in clinical target volume (CTV) coverage. Significant improvements in OAR sparing were achieved for the rectum (V40Gy = -4.26 ± 3.00%), bladder (V40Gy = -6.36 ± 4.34%), and penile bulb (Dmean = -1.61 ± 9.76 Gy) when using the KBP model, compared to the manual plans. Other significant differences include slightly higher doses to the cauda equina (D0.03cc = 3.44 ± 6.09 Gy) and the left femur (D0.03cc = 2.50 ± 3.69 Gy) when compared to manual plans. No statistically significant differences were found for other OARs. Conclusions This study demonstrated that the KBP model produced plans comparable to manually generated clinical plans, and these plans are clinically acceptable. The iterative tuning process improved the quality of plans generated by the KBP model.
引言 在本研究中,我们旨在创建并评估一种基于知识的计划(KBP)模型,用于优化调强质子治疗(IMPT)在涉及盆腔淋巴结(LNs)的前列腺癌治疗中的应用。材料与方法 五十例先前接受过前列腺/前列腺床IMPT治疗的患者,包括淋巴结及可选的大体肿瘤体积(GTV)加量,用于训练KBP模型。通过对其中20例患者的子集进行重新计划,对模型进行迭代优化。为进行验证,使用了未纳入模型训练集的20例患者。使用模型预测的目标列表优化治疗计划。使用针对靶区和危及器官(OARs)的剂量学指标评估计划质量,并使用配对t检验(p < 0.05)将结果与手动生成的计划进行比较。结果 模型生成的20个计划中有18个被认为在临床上可接受,无需额外调整。模型生成的计划在临床靶区体积(CTV)覆盖方面表现出相当的稳健性。与手动计划相比,使用KBP模型时,直肠(V40Gy = -4.26 ± 3.00%)、膀胱(V40Gy = -6.36 ± 4.34%)和阴茎球部(Dmean = -1.61 ± 9.76 Gy)在危及器官 sparing方面有显著改善。其他显著差异包括与手动计划相比,马尾神经(D0.03cc = 3.44 ± 6.09 Gy)和左股骨(D0.03cc = 2.50 ± 3.69 Gy)的剂量略高。其他OARs未发现统计学显著差异。结论 本研究表明,KBP模型生成的计划与手动生成的临床计划相当,且这些计划在临床上可接受。迭代调整过程提高了KBP模型生成计划的质量。