Department of Medical Physics, Memorial Sloan-Kettering Cancer Center, New York, USA.
Department of Radiation Oncology, Memorial Sloan-Kettering Cancer Center, New York, USA.
Radiother Oncol. 2022 Apr;169:57-63. doi: 10.1016/j.radonc.2022.02.013. Epub 2022 Feb 18.
To develop a novel deep learning algorithm of sequential analysis, Seq2Seq, for predicting weekly anatomical changes of lung tumor and esophagus during definitive radiotherapy, incorporate the potential tumor shrinkage into a predictive treatment planning paradigm, and improve the therapeutic ratio.
Seq2Seq starts with the primary tumor and esophagus observed on the planning CT to predict their geometric evolution during radiotherapy on a weekly basis, and subsequently updates the predictions with new snapshots acquired via weekly CBCTs. Seq2Seq is equipped with convolutional long short term memory to analyze the spatial-temporal changes of longitudinal images, trained and validated using a dataset including sixty patients. Predictive plans were optimized according to each weekly prediction and made ready for weekly deployment to mitigate the clinical burden of online weekly replanning.
Seq2Seq tracks structural changes well: DICE between predicted and actual weekly tumor and esophagus were (0.83 ± 0.10, 0.79 ± 0.14, 0.78 ± 0.12, 0.77 ± 0.12, 0.75 ± 0.12, 0.71 ± 0.17), and (0.72 ± 0.16, 0.73 ± 0.11, 0.75 ± 0.08, 0.74 ± 0.09, 0.72 ± 0.14, 0.71 ± 0.14), respectively, while the average Hausdorff distances were within 2 mm. Evaluating dose to the actual weekly tumor and esophagus, a 4.2 Gy reduction in esophagus mean dose while maintaining 60 Gy tumor coverage was achieved with the predictive weekly plans, compared to the plan optimized using the initial tumor and esophagus alone, primarily due to noticeable tumor shrinkage during radiotherapy.
It is feasible to predict the longitudinal changes of tumor and esophagus with the Seq2Seq, which could lead to improving the efficiency and effectiveness of lung adaptive radiotherapy.
开发一种新的深度学习序列分析算法 Seq2Seq,用于预测根治性放疗期间肺部肿瘤和食管的每周解剖变化,将潜在的肿瘤收缩纳入预测性治疗计划范式,提高治疗效果。
Seq2Seq 从计划 CT 上观察到的原发肿瘤和食管开始,预测它们在放疗过程中的每周几何变化,然后使用每周 CBCT 获得的新快照更新预测结果。Seq2Seq 配备了卷积长短时记忆,用于分析纵向图像的时空变化,使用包括 60 名患者的数据集进行训练和验证。根据每周的预测结果优化预测计划,并准备好每周部署,以减轻在线每周重新计划的临床负担。
Seq2Seq 能够很好地跟踪结构变化:预测和实际每周肿瘤和食管之间的 DICE 分别为(0.83±0.10,0.79±0.14,0.78±0.12,0.77±0.12,0.75±0.12,0.71±0.17)和(0.72±0.16,0.73±0.11,0.75±0.08,0.74±0.09,0.72±0.14,0.71±0.14),而平均 Hausdorff 距离均在 2mm 以内。评估实际每周肿瘤和食管的剂量,与仅使用初始肿瘤和食管优化的计划相比,预测性每周计划可使食管平均剂量降低 4.2Gy,同时保持 60Gy 肿瘤覆盖,主要是由于放疗过程中肿瘤明显收缩。
使用 Seq2Seq 预测肿瘤和食管的纵向变化是可行的,这可能会提高肺部自适应放疗的效率和效果。