Li Nan, Carmona Ruben, Sirak Igor, Kasaova Linda, Followill David, Michalski Jeff, Bosch Walter, Straube William, Mell Loren K, Moore Kevin L
Department of Radiation Medicine and Applied Sciences, University of California San Diego, La Jolla, California.
Department of Oncology and Radiotherapy, University Hospital, Hradec Kralove, Czech Republic.
Int J Radiat Oncol Biol Phys. 2017 Jan 1;97(1):164-172. doi: 10.1016/j.ijrobp.2016.10.005. Epub 2016 Oct 13.
To demonstrate an efficient method for training and validation of a knowledge-based planning (KBP) system as a radiation therapy clinical trial plan quality-control system.
We analyzed 86 patients with stage IB through IVA cervical cancer treated with intensity modulated radiation therapy at 2 institutions according to the standards of the INTERTECC (International Evaluation of Radiotherapy Technology Effectiveness in Cervical Cancer, National Clinical Trials Network identifier: 01554397) protocol. The protocol used a planning target volume and 2 primary organs at risk: pelvic bone marrow (PBM) and bowel. Secondary organs at risk were rectum and bladder. Initial unfiltered dose-volume histogram (DVH) estimation models were trained using all 86 plans. Refined training sets were created by removing sub-optimal plans from the unfiltered sample, and DVH estimation models… and DVH estimation models were constructed by identifying 30 of 86 plans emphasizing PBM sparing (comparing protocol-specified dosimetric cutpoints V (percentage volume of PBM receiving at least 10 Gy dose) and V (percentage volume of PBM receiving at least 20 Gy dose) with unfiltered predictions) and another 30 of 86 plans emphasizing bowel sparing (comparing V (absolute volume of bowel receiving at least 40 Gy dose) and V (absolute volume of bowel receiving at least 45 Gy dose), 9 in common with the PBM set). To obtain deliverable KBP plans, refined models must inform patient-specific optimization objectives and/or priorities (an auto-planning "routine"). Four candidate routines emphasizing different tradeoffs were composed, and a script was developed to automatically re-plan multiple patients with each routine. After selection of the routine that best met protocol objectives in the 51-patient training sample (KBP), protocol-specific DVH metrics and normal tissue complication probability were compared for original versus KBP plans across the 35-patient validation set. Paired t tests were used to test differences between planning sets.
KBP plans outperformed manual planning across the validation set in all protocol-specific DVH cutpoints. The mean normal tissue complication probability for gastrointestinal toxicity was lower for KBP versus validation-set plans (48.7% vs 53.8%, P<.001). Similarly, the estimated mean white blood cell count nadir was higher (2.77 vs 2.49 k/mL, P<.001) with KBP plans, indicating lowered probability of hematologic toxicity.
This work demonstrates that a KBP system can be efficiently trained and refined for use in radiation therapy clinical trials with minimal effort. This patient-specific plan quality control resulted in improvements on protocol-specific dosimetric endpoints.
演示一种将基于知识的计划(KBP)系统作为放射治疗临床试验计划质量控制系统进行训练和验证的有效方法。
我们根据INTERTECC(国际宫颈癌放射治疗技术有效性评估,国家临床试验网络标识符:01554397)方案的标准,分析了在2家机构接受调强放射治疗的86例IB期至IVA期宫颈癌患者。该方案使用了计划靶体积和2个主要危及器官:盆腔骨髓(PBM)和肠道。次要危及器官为直肠和膀胱。使用所有86个计划训练初始未过滤的剂量体积直方图(DVH)估计模型。通过从未过滤样本中去除次优计划来创建优化训练集,并通过从86个计划中识别出30个强调PBM sparing的计划(将方案指定的剂量学切点V(接受至少10 Gy剂量的PBM体积百分比)和V(接受至少20 Gy剂量的PBM体积百分比)与未过滤预测值进行比较)以及另外30个强调肠道 sparing的计划(比较V(接受至少40 Gy剂量的肠道绝对体积)和V(接受至少45 Gy剂量的肠道绝对体积),其中9个与PBM组相同)来构建DVH估计模型。为了获得可交付的KBP计划,优化模型必须告知患者特定的优化目标和/或优先级(自动计划“常规”)。组成了4个强调不同权衡的候选常规,并开发了一个脚本以使用每个常规自动重新计划多个患者。在51例患者的训练样本(KBP)中选择最符合方案目标的常规后,比较了35例患者验证集中原始计划与KBP计划的方案特定DVH指标和正常组织并发症概率。使用配对t检验来测试计划集之间的差异。
在所有方案特定的DVH切点上,KBP计划在验证集中的表现均优于手动计划。KBP计划的胃肠道毒性的平均正常组织并发症概率低于验证集计划(48.7%对53.8%,P<.001)。同样,KBP计划的估计平均白细胞计数最低点更高(2.77对2.49 k/mL,P<.001),表明血液学毒性的概率降低。
这项工作表明,可以以最小的努力有效地训练和优化KBP系统以用于放射治疗临床试验。这种针对患者的计划质量控制导致方案特定剂量学终点得到改善。