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Can knowledge-based DVH predictions be used for automated, individualized quality assurance of radiotherapy treatment plans?

机译:可以将基于知识的DVH预测用于放射治疗计划的自动化,个性化质量保证吗?

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Treatment plan quality assurance (QA) is important for clinical studies and for institutions aiming to generate near-optimal individualized treatment plans. However, determining how good a given plan is for that particular patient (individualized patient/plan QA, in contrast to running through a checklist of generic QA parameters applied to all patients) is difficult, time consuming and operator-dependent. We therefore evaluated the potential of RapidPlan, a commercial knowledge-based planning solution, to automate this process, by predicting achievable OAR doses for individual patients based on a model library consisting of historical plans with a range of organ-at-risk (OAR) to planning target volume (PTV) geometries and dosimetries. A 90-plan RapidPlan model, generated using previously created automatic interactively optimized (AIO) plans, was used to predict achievable OAR dose-volume histograms (DVHs) for the parotid glands, submandibular glands, individual swallowing muscles and oral cavities of 20 head and neck cancer (HNC) patients using a volumetric modulated (RapidArc) simultaneous integrated boost technique. Predicted mean OAR doses were compared with mean doses achieved when RapidPlan was used to make a new plan. Differences between the achieved and predicted DVH-lines were analyzed. Finally, RapidPlan predictions were used to evaluate achieved OAR sparing of AIO and manual interactively optimized plans. For all OARs, strong linear correlations (R2?=?0.94–0.99) were found between predicted and achieved mean doses. RapidPlan generally overestimated the amount of achievable sparing for OARs with a large degree of OAR-PTV overlap. RapidPlan QA using predicted doses alone identified that for 50 % (10/20) of the manually optimized plans, sparing of the composite salivary glands, oral cavity or composite swallowing muscles could be improved by at least 3 Gy, 5 Gy or 7 Gy, respectively, while this was the case for 20 % (4/20) AIO plans. These predicted gains were validated by replanning the identified patients using RapidPlan. Strong correlations between predicted and achieved mean doses indicate that RapidPlan could accurately predict achievable mean doses. This shows the feasibility of using RapidPlan DVH prediction alone for automated individualized head and neck plan QA. This has applications in individual centers and clinical trials.
机译:治疗计划质量保证(QA)对于临床研究以及旨在生成接近最佳的个性化治疗计划的机构而言非常重要。但是,要确定给定计划对于该特定患者的质量(个性化患者/计划QA,而不是遍历适用于所有患者的通用QA参数清单)是困难,耗时且取决于操作员的。因此,我们通过基于模型库预测了单个患者可实现的OAR剂量,从而评估了基于商业知识的计划解决方案RapidPlan自动化该过程的潜力,该模型库包含具有各种器官风险(OAR)的历史计划规划目标体积(PTV)的几何形状和剂量。使用先前创建的自动交互式优化(AIO)计划生成的90计划RapidPlan模型用于预测腮腺,下颌下腺,单个吞咽肌肉和20个头颅和口腔的OAR剂量体积直方图(DVH)颈部肿瘤(HNC)患者使用体积调制(RapidArc)同时集成增强技术。将预测的平均OAR剂量与使用RapidPlan制定新计划时获得的平均剂量进行比较。分析了已实现和预测的DVH线之间的差异。最后,RapidPlan预测用于评估AIO的OAR备用量以及手动交互优化的计划。对于所有OAR,在预测的和达到的平均剂量之间均存在强线性相关性(R2?=?0.94-0.99)。 RapidPlan通常会高估OAR与PTV重叠程度很大的OAR的备用量。仅使用预测剂量进行的RapidPlan质量检查就可以确定,对于50%(10/20)的手动优化计划,复合唾液腺,口腔或复合吞咽肌肉的备用量至少可以提高3 Gy,5 Gy或7 Gy,分别是20%(4/20)AIO计划的情况。通过使用RapidPlan重新计划已识别的患者,可以验证这些预测的收益。预计和达到的平均剂量之间的强相关性表明,RapidPlan可以准确预测可达到的平均剂量。这表明单独使用RapidPlan DVH预测进行自动化个性化头颈计划质量检查的可行性。这在个别中心和临床试验中都有应用。

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