Department of Engineering and Applied Physics, University of Science and Technology of China, Anhui, China.
Hefei Ion Medical Center, The First Affiliated Hospital of USTC, Division of Life Sciences and Medicine, University of Science and Technology of China, Anhui, China.
Med Phys. 2022 Apr;49(4):2631-2641. doi: 10.1002/mp.15530. Epub 2022 Feb 25.
This study aims to develop a deep learning method that skips the time-consuming inverse optimization process for automatic generation of machine-deliverable intensity-modulated radiation therapy (IMRT) plans.
Ninety cervical cancer clinical IMRT plans were collected to train a two-stage convolution neural network, of which 66 plans were assigned for training, 11 for validation, and 13 for test. The neural network took patients' computed tomography (CT) anatomy as the input and predicted the fluence map for each radiation beam. The predicted fluence maps were then imported into a treatment planning system and converted to multileaf collimators motion sequences. The automatic plan was evaluated against its corresponding clinical plan, and its machine deliverability was validated by patient-specific IMRT quality assurance (QA).
There were no significant differences in dose parameters between automatic and clinical plans for all 13 test patients, indicating a good prediction of fluence maps and a decent quality of automatic plans. The average dice similarity coefficient of isodose volumes encompassed by 0%-100% isodose lines ranged from 0.94 to 1. In patient-specific IMRT QA, the mean gamma passing rate of automatic plans achieved 99.5% under 3%/3 mm criteria, and 97.3% under 2%/2 mm criteria, with a low dose threshold of 10%.
The proposed deep learning framework can produce machine-deliverable IMRT plans with quality similar to the clinical plans in the test set. It skips the inverse plan optimization process and provides an effective and efficient method to accelerate treatment planning process.
本研究旨在开发一种深度学习方法,以跳过耗时的逆向优化过程,实现自动生成机器可交付的强度调制放射治疗(IMRT)计划。
收集了 90 例宫颈癌临床 IMRT 计划,用于训练两阶段卷积神经网络,其中 66 例用于训练,11 例用于验证,13 例用于测试。该神经网络以患者的计算机断层扫描(CT)解剖结构作为输入,并预测每个射束的剂量分布。预测的剂量分布随后被导入治疗计划系统,并转换为多叶准直器运动序列。自动计划与相应的临床计划进行评估,并通过患者特定的 IMRT 质量保证(QA)验证其机器可交付性。
对于所有 13 例测试患者,自动计划和临床计划在剂量参数方面没有显著差异,这表明剂量分布预测良好,自动计划质量良好。0%-100%等剂量线包围的等剂量体积的平均骰子相似系数范围为 0.94 至 1。在患者特定的 IMRT QA 中,自动计划在 3%/3mm 标准下的平均伽马通过率为 99.5%,在 2%/2mm 标准下的通过率为 97.3%,剂量阈值为 10%。
所提出的深度学习框架可以生成与测试集中临床计划质量相似的机器可交付的 IMRT 计划。它跳过了逆向计划优化过程,为加速治疗计划过程提供了一种有效且高效的方法。