...
首页> 外文期刊>Radiotherapy and oncology: Journal of the European Society for Therapeutic Radiology and Oncology >Comparison of 12 deformable registration strategies in adaptive radiation therapy for the treatment of head and neck tumors.
【24h】

Comparison of 12 deformable registration strategies in adaptive radiation therapy for the treatment of head and neck tumors.

机译:比较12种可变形配准策略在适应性放射疗法中治疗头颈部肿瘤的能力。

获取原文
获取原文并翻译 | 示例
           

摘要

BACKGROUND AND PURPOSE: Weight loss, tumor shrinkage, and tissue edema induce substantial modification of patient's anatomy during head and neck (HN) radiotherapy (RT) or chemo-radiotherapy. These modifications may impact on the dose distribution to both target volumes (TVs) and organs at risk (OARs). Adaptive radiotherapy (ART) where patients are re-imaged and re-planned several times during the treatment is a possible strategy to improve treatment delivery. It however requires the use of specific deformable registration (DR) algorithms that requires proper validation on a clinical material. MATERIALS AND METHODS: Twelve voxel-based DR strategies were compared with a dataset of 5 patients imaged with computed tomography (CT) before and once during RT (on average after a mean dose of 36.8Gy): level-set (LS), level-set implemented in multi-resolution (LS(MR)), Demons' algorithm implemented in multi-resolution (D(MR)), D(MR) followed by LS (D(MR)-LS), fast free-form deformable registration via calculus of variations (F3CV) and F3CV followed by LS (F3CV-LS). The use of an edge-preserving denoising filter called "local M-smoothers" applied to the registered images and combined to all the aforesaid strategies was also tested (fLS, fLS(MR), fD(MR), fD(MR)-LS, fF3CV, fF3CV-LS). All these strategies were compared to a rigid registration based on mutual information (MI, fMI). Chronological and anti-chronological registrations were also studied. The various DR strategies were evaluated using a volume-based criterion (i.e. Dice similarity index, DSI) and a voxel-intensity criterion (i.e. correlation coefficient, CC) on a total of 18 different manually contoured volumes. RESULTS: For the DSI analysis, the best three strategies were D(MR), fD(MR)-LS, and fD(MR), with the median values of 0.86, 0.85 and 0.85, respectively; corresponding inter-quartile range (IQR) reached 9.6%, 10% and 10.2%. For the CC analysis, the best three strategies were fD(MR)-LS, D(MR)-LS and D(MR) with the median values of 0.97, 0.96 and 0.94, respectively; corresponding IQR reached 11%, 9% and 15%. Concerning the time-sequence analysis, the anti-chronological registration (all deformable strategies pooled) showed a better median DSI value (0.84 vs 0.83, p<0.001) and IQR (11.2% vs 12.4%). For CC, the anti-chronological registration (all deformable strategies pooled) had a slightly lower median value (0.91 vs 0.912, p<0.001) but a better IQR (16.4% vs 21%). CONCLUSIONS: The use of fD(MR)-LS is a good registration strategy for HN-ART as it is the best compromise in terms of median and IQR for both DSI and CC. Even though less robust in terms of CC, D(MR) is a good alternative. None of the time-sequence appears superior.
机译:背景与目的:体重减轻,肿瘤缩小和组织水肿会在头颈(HN)放射疗法(RT)或化学放射疗法中引起患者解剖结构的实质性改变。这些修改可能会影响剂量分布到目标体积(TV)和高危器官(OAR)。在治疗过程中对患者进行多次成像和重新计划的自适应放射治疗(ART)是改善治疗效果的一种可能策略。但是,它需要使用特定的可变形配准(DR)算法,该算法需要对临床材料进行适当的验证。材料与方法:将12种基于体素的DR策略与5位患者在RT之前和期间进行计算机断层扫描(CT)成像的数据集(平均平均剂量36.8Gy后)进行比较:水平设定(LS),水平集以多分辨率(LS(MR))实现,恶魔算法以多分辨率(D(MR)),D(MR)之后是LS(D(MR)-LS)实现,可快速自由变形通过变异演算(F3CV)和F3CV以及LS(F3CV-LS)进行配准。还测试了将用于边缘图像的保留边缘降噪滤波器“局部M-平滑”应用到已配准图像并结合到所有上述策略的使用(fLS,fLS(MR),fD(MR),fD(MR)-LS ,fF3CV,fF3CV-LS)。将所有这些策略与基于互信息(MI,fMI)的严格注册进行了比较。还按时间顺序和反时间顺序进行了注册。在总共18个不同的手动轮廓体积上,使用基于体积的标准(即骰子相似性指数DSI)和体素强度标准(即相关系数CC)对各种DR策略进行了评估。结果:对于DSI分析,最佳的三种策略是D(MR),fD(MR)-LS和fD(MR),中位数分别为0.86、0.85和0.85;相应的四分位数间距(IQR)达到9.6%,10%和10.2%。对于CC分析,最好的三种策略是fD(MR)-LS,D(MR)-LS和D(MR),中位数分别为0.97、0.96和0.94;相应的IQR达到11%,9%和15%。关于时间序列分析,反时间顺序配准(所有可变形策略汇总)显示出更好的DSI中值(0.84 vs 0.83,p <0.001)和IQR(11.2%vs 12.4%)。对于CC,反时间顺序注册(所有可变形策略汇总)的中位数略低(0.91对0.912,p <0.001),但IQR较好(16.4%对21%)。结论:fD(MR)-LS的使用是HN-ART的良好注册策略,因为它是DSI和CC的中位数和IQR的最佳折中方案。尽管就CC而言,鲁棒性较差,但D(MR)是一个不错的选择。时间序列似乎都没有优势。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号