...
首页> 外文期刊>Acta oncologica. >Adaptive radiotherapy in locally advanced prostate cancer using a statistical deformable motion model
【24h】

Adaptive radiotherapy in locally advanced prostate cancer using a statistical deformable motion model

机译:使用统计可变形运动模型的局部晚期前列腺癌的适应性放疗

获取原文
获取原文并翻译 | 示例
           

摘要

Daily treatment plan selection from a plan library is a major adaptive radiotherapy strategy to account for individual internal anatomy variations. This strategy depends on the initial input images being representative for the variations observed later in the treatment course. Focusing on locally advanced prostate cancer, our aim was to evaluate if residual motion of the prostate (CTV-p) and the elective targets (CTV-sv, CTV-ln) can be prospectively accounted for with a statistical deformable model based on images acquired in the initial part of treatment. Methods. Thirteen patients with locally advanced prostate cancer, each with 9-10 repeat CT scans, were included. Displacement vectors fields (DVF) obtained from contour-based deformable registration of delineations in the repeat- and planning CT scans were used to create patient-specific statistical motion models using principal component analysis (PCA). For each patient and CTV, four PCA-models were created: one with all 9-10 DVF as input in addition to models with only four, five or six DVFs as input. Simulations of target shapes from each PCA-model were used to calculate iso-coverage levels, which were converted to contours. The levels were analyzed for sensitivity and precision. Results. A union of the simulated shapes was able to cover at least 97%, 97% and 95% of the volumes of the evaluated CTV shapes for PCA-models using six, five and four DVFs as input, respectively. There was a decrease in sensitivity with higher iso-coverage levels, with a sharper decline for greater target movements. Apart from having the steepest decline in sensitivity, CTV-sv also displayed the greatest influence on the number of geometries used in the PCA-model. Conclusions. PCA-based simulations of residual motion derived from four to six DVFs as input could account for the majority of the target shapes present during the latter part of the treatment. CTV-sv displayed the greatest range in both sensitivity and precision.
机译:从计划库中选择每日治疗计划是一种主要的适应性放射治疗策略,可解决个体内部解剖结构的变化。该策略取决于初始输入图像,这些图像代表了随后在治疗过程中观察到的变化。着眼于局部晚期前列腺癌,我们的目标是评估是否可以使用基于获取的图像的统计可变形模型来预先考虑前列腺的残余运动(CTV-p)和选择性目标(CTV-sv,CTV-ln)在治疗的最初阶段。方法。包括13例局部晚期前列腺癌患者,每例患者均进行9-10次重复CT扫描。从重复和计划CT扫描中轮廓的基于轮廓的可变形配准中获得的位移矢量字段(DVF)用于使用主成分分析(PCA)创建患者特定的统计运动模型。对于每个患者和CTV,创建了四个PCA模型:除了仅输入四个,五个或六个DVF的模型之外,还输入了所有9-10 DVF的一个。来自每个PCA模型的目标形状的模拟用于计算iso-coverage级别,并将其转换为轮廓。分析了这些水平的敏感性和精确度。结果。使用六个,五个和四个DVF作为输入,模拟形状的并集能够分别覆盖PCA模型所评估的CTV形状的体积的至少97%,97%和95%。同位素覆盖率较高时,灵敏度会降低,目标移动较大时,灵敏度会急剧下降。除了灵敏度下降幅度最大之外,CTV-sv还对PCA模型中使用的几何形状数量显示了最大的影响。结论基于PCA的从四到六个DVF作为输入得出的残余运动模拟可以说明在后期处理过程中存在的大多数目标形状。 CTV-sv在灵敏度和精度上均显示出最大范围。

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