Department of Radiation Oncology, Fujian Cancer Hospital & Fujian Medical University Cancer Hospital, Fuzhou, China.
Department of Radiation Oncology, Fujian Medical University Union Hospital, Fuzhou, China.
Radiat Oncol. 2020 Aug 3;15(1):188. doi: 10.1186/s13014-020-01626-z.
To investigate the feasibility of a knowledge-based automated intensity-modulated radiation therapy (IMRT) planning technique for locally advanced nasopharyngeal carcinoma (NPC) radiotherapy.
One hundred forty NPC patients treated with definitive radiation therapy with the step-and-shoot IMRT techniques were retrospectively selected and separated into a knowledge library (n = 115) and a test library (n = 25). For each patient in the knowledge library, the overlap volume histogram (OVH), target volume histogram (TVH) and dose objectives were extracted from the manually generated plan. 5-fold cross validation was performed to divide the patients in the knowledge library into 5 groups before validating one group by using the other 4 groups to train each neural network (NN) machine learning models. For patients in the test library, their OVH and TVH were then used by the trained models to predict a corresponding set of mean dose objectives, which were subsequently used to generate automated plans (APs) in Pinnacle planning system via an in-house developed automated scripting system. All APs were obtained after a single step of optimization. Manual plans (MPs) for the test patients were generated by an experienced medical physicist strictly following the established clinical protocols. The qualities of the APs and MPs were evaluated by an attending radiation oncologist. The dosimetric parameters for planning target volume (PTV) coverage and the organs-at-risk (OAR) sparing were also quantitatively measured and compared using Mann-Whitney U test and Bonferroni correction.
APs and MPs had the same rating for more than 80% of the patients (19 out of 25) in the test group. Both AP and MP achieved PTV coverage criteria for no less than 80% of the patients. For each OAR, the number of APs achieving its criterion was similar to that in the MPs. The AP approach improved planning efficiency by greatly reducing the planning duration to about 17% of the MP (9.85 ± 1.13 min vs. 57.10 ± 6.35 min).
A robust and effective knowledge-based IMRT treatment planning technique for locally advanced NPC is developed. Patient specific dose objectives can be predicted by trained NN models based on the individual's OVH and clinical TVH goals. The automated planning scripts can use these dose objectives to efficiently generate APs with largely shortened planning time. These APs had comparable dosimetric qualities when compared to our clinic's manual plans.
为了研究基于知识的自动调强放射治疗(IMRT)计划技术在局部晚期鼻咽癌(NPC)放疗中的可行性。
回顾性选择 140 例接受根治性放疗的 NPC 患者,采用步进式 IMRT 技术,分为知识库(n=115)和测试库(n=25)。从手动生成的计划中提取知识库中每位患者的重叠体积直方图(OVH)、目标体积直方图(TVH)和剂量目标。使用 5 折交叉验证将知识库中的患者分为 5 组,然后使用其余 4 组验证一组,以训练每个神经网络(NN)机器学习模型。对于测试库中的患者,使用训练后的模型来预测其 OVH 和 TVH,以获得一组相应的平均剂量目标,然后通过内部开发的自动化脚本系统在 Pinnacle 计划系统中生成自动计划(AP)。所有 AP 都是在单次优化后获得的。为了生成测试患者的自动计划,一位经验丰富的医学物理学家严格按照既定的临床方案生成手动计划(MP)。由一位主治放射肿瘤学家评估 AP 和 MP 的质量。使用 Mann-Whitney U 检验和 Bonferroni 校正定量测量和比较了计划靶区(PTV)覆盖和危及器官(OAR)保护的剂量学参数。
在测试组的 25 名患者中,有 19 名患者的 AP 和 MP 的评分超过 80%。AP 和 MP 都为至少 80%的患者实现了 PTV 覆盖标准。对于每个 OAR,AP 达到其标准的数量与 MP 相似。AP 方法通过大大减少计划时间(从 9.85±1.13 分钟减少到 57.10±6.35 分钟),提高了计划效率。
开发了一种用于局部晚期 NPC 的强大有效的基于知识的 IMRT 治疗计划技术。基于患者的 OVH 和临床 TVH 目标,训练后的 NN 模型可以预测患者特定的剂量目标。自动化计划脚本可以使用这些剂量目标来高效地生成计划时间大大缩短的 AP。与我们诊所的手动计划相比,这些 AP 的剂量学质量相当。