Department of Radiation Oncology, Sun Yat-Sen University Cancer Center, Guangzhou, People's Republic of China.
State Key Laboratory of Oncology in South China, Collaborative Innovation Center for Cancer Medicine, Guangzhou, People's Republic of China.
Radiat Oncol. 2021 Mar 22;16(1):58. doi: 10.1186/s13014-021-01783-9.
To explore whether a highly refined dose volume histograms (DVH) prediction model can improve the accuracy and reliability of knowledge-based volumetric modulated arc therapy (VMAT) planning for cervical cancer.
The proposed model underwent repeated refining through progressive training until the training samples increased from initial 25 prior plans up to 100 cases. The estimated DVHs derived from the prediction models of different runs of training were compared in 35 new cervical cancer patients to analyze the effect of such an interactive plan and model evolution method. The reliability and efficiency of knowledge-based planning (KBP) using this highly refined model in improving the consistency and quality of the VMAT plans were also evaluated.
The prediction ability was reinforced with the increased number of refinements in terms of normal tissue sparing. With enhanced prediction accuracy, more than 60% of automatic plan-6 (AP-6) plans (22/35) can be directly approved for clinical treatment without any manual revision. The plan quality scores for clinically approved plans (CPs) and manual plans (MPs) were on average 89.02 ± 4.83 and 86.48 ± 3.92 (p < 0.001). Knowledge-based planning significantly reduced the D and V for kidney (L/R), the D, V, and V for bladder, rectum, and femoral head (L/R).
The proposed model evolution method provides a practical way for the KBP to enhance its prediction ability with minimal human intervene. This highly refined prediction model can better guide KBP in improving the consistency and quality of the VMAT plans.
探索高度精炼的剂量体积直方图(DVH)预测模型是否能提高基于知识的宫颈癌容积调强弧形治疗(VMAT)计划的准确性和可靠性。
该模型通过反复精炼来进行多次训练,直到训练样本从最初的 25 个增加到 100 个。在 35 名新的宫颈癌患者中比较了不同训练运行的预测模型得出的估计 DVH,以分析这种交互式计划和模型演化方法的效果。还评估了使用这种高度精炼的模型进行知识基计划(KBP)在提高 VMAT 计划的一致性和质量方面的可靠性和效率。
在保护正常组织方面,随着细化次数的增加,预测能力得到了增强。随着预测精度的提高,超过 60%的自动计划-6(AP-6)计划(22/35)可以直接批准用于临床治疗,无需任何手动修改。经临床批准的计划(CP)和手动计划(MP)的计划质量评分平均为 89.02±4.83 和 86.48±3.92(p<0.001)。知识基计划显著降低了肾脏(L/R)的 D 和 V、膀胱、直肠和股骨头(L/R)的 D、V 和 V。
所提出的模型演化方法为 KBP 提供了一种实用的方法,通过最小的人工干预来增强其预测能力。这种高度精炼的预测模型可以更好地指导 KBP 提高 VMAT 计划的一致性和质量。