Department of Radiation Oncology, Amsterdam UMC, University of Amsterdam, The Netherlands.
Department of Radiation Oncology, Amsterdam UMC, University of Amsterdam, The Netherlands.
Radiother Oncol. 2022 Jan;166:126-132. doi: 10.1016/j.radonc.2021.11.028. Epub 2021 Nov 30.
To create a library of plans (LoP) for gastric cancer adaptive radiotherapy, accurate predictions of shape changes due to filling variations are essential. The ability of two strategies (personalized and population-based) to predict stomach shape based on filling was evaluated for volunteer and patient data to explore the potential for use in a LoP.
For 19 healthy volunteers, stomachs were delineated on MRIs with empty (ES), half-full (HFS) and full stomach (FS). For the personalized strategy, a deformation vector field from HFS to corresponding ES was acquired and extrapolated to predict FS. For the population-based strategy, the average deformation vectors from HFS to FS of 18 volunteers were applied to the HFS of the remaining volunteer to predict FS (leave-one-out principle); thus, predictions were made for each volunteer. Reversed processes were performed to predict ES. To validate, for seven gastric cancer patients, the volunteer population-based model was applied to their pre-treatment CT to predict stomach shape on 2-3 repeat CTs. For all predictions, volume was made equal to true stomach volume.
FS predictions were satisfactory, with median Dice similarity coefficient (mDSC) of 0.91 (population-based) and 0.89 (personalized). ES predictions were poorer: mDSC = 0.82 for population-based; personalized strategy yielded unachievable volumes. Population-based shape predictions (both ES and FS) were comparable between patients (mDSC = 0.87) and volunteers (0.88).
The population-based model outperformed the personalized model and demonstrated its ability in predicting filling-dependent stomach shape changes and, therefore, its potential for use in a gastric cancer LoP.
为了创建胃癌自适应放疗计划库(LoP),准确预测由于填充变化引起的形状变化至关重要。本研究旨在评估两种策略(个性化和基于人群)基于填充预测胃形状的能力,为志愿者和患者数据探索其在 LoP 中的潜在用途。
对 19 名健康志愿者进行 MRI 检查,在空腹(ES)、半饱(HFS)和饱胃(FS)状态下勾画胃轮廓。对于个性化策略,从 HFS 到相应 ES 获取变形向量场,并外推以预测 FS。对于基于人群的策略,将 18 名志愿者从 HFS 到 FS 的平均变形向量应用于剩余志愿者的 HFS 以预测 FS(留一法原则);因此,对每个志愿者进行预测。进行逆向过程以预测 ES。为了验证,对 7 名胃癌患者,将志愿者人群模型应用于其治疗前 CT 以预测 2-3 次重复 CT 上的胃形状。对于所有预测,体积与真实胃体积相等。
FS 预测结果令人满意,基于人群的模型的平均 Dice 相似系数(mDSC)为 0.91,个性化模型为 0.89。ES 预测结果较差:基于人群的 mDSC 为 0.82;个性化策略产生了无法实现的体积。基于人群的形状预测(ES 和 FS)在患者(mDSC=0.87)和志愿者(0.88)之间具有可比性。
基于人群的模型优于个性化模型,证明了其预测与填充相关的胃形状变化的能力,因此其在胃癌 LoP 中的潜在用途。