...
首页> 外文期刊>Medical Physics >Technical Note: In silico In silico and experimental evaluation of two leaf‐fitting algorithms for MLC MLC tracking based on exposure error and plan complexity
【24h】

Technical Note: In silico In silico and experimental evaluation of two leaf‐fitting algorithms for MLC MLC tracking based on exposure error and plan complexity

机译:技术说明:基于曝光误差和规划复杂性的MLC MLC跟踪两种叶片拟合算法的Silico和实验评价

获取原文
获取原文并翻译 | 示例
           

摘要

Purpose Multileaf collimator ( MLC ) tracking is being clinically pioneered to continuously compensate for thoracic and pelvic motion during radiotherapy. The purpose of this work was to characterize the performance of two MLC leaf‐fitting algorithms, direct optimization and piecewise optimization, for real‐time motion compensation with different plan complexity and tumor trajectories. Methods To test the algorithms, both in silico and phantom experiments were performed. The phantom experiments were performed on a Trilogy Varian linac and a HexaMotion programmable motion platform. High and low modulation VMAT plans for lung and prostate cancer cases were used along with eight patient‐measured organ‐specific trajectories. For both MLC leaf‐fitting algorithms, the plans were run with their corresponding patient trajectories. To compare algorithms, the average exposure errors, i.e., the difference in shape between ideal and fitted MLC leaves by the algorithm, plan complexity and system latency of each experiment were calculated. Results Comparison of exposure errors for the in silico and phantom experiments showed minor differences between the two algorithms. The average exposure errors for in silico experiments with low/high plan complexity were 0.66/0.88?cm 2 for direct optimization and 0.66/0.88?cm 2 for piecewise optimization, respectively. The average exposure errors for the phantom experiments with low/high plan complexity were 0.73/1.02?cm 2 for direct and 0.73/1.02?cm 2 for piecewise optimization, respectively. The measured latency for the direct optimization was 226?±?10?ms and for the piecewise algorithm was 228?±?10?ms. In silico and phantom exposure errors quantified for each treatment plan demonstrated that the exposure errors from the high plan complexity (0.96?cm 2 mean, 2.88?cm 2 95% percentile) were all significantly different from the low plan complexity (0.70?cm 2 mean, 2.18?cm 2 95% percentile) ( P? ? 0.001, two‐tailed, Mann–Whitney statistical test). Conclusions The comparison between the two leaf‐fitting algorithms demonstrated no significant differences in exposure errors, neither in silico nor with phantom experiments. This study revealed that plan complexity impacts the overall exposure errors significantly more than the difference between the algorithms.
机译:目的是多叶准直器(MLC)跟踪在临床上开创,以在放射治疗期间连续补偿胸腔和盆腔运动。这项工作的目的是表征两种MLC叶拟合算法,直接优化和分段优化的性能,用于具有不同的计划复杂性和肿瘤轨迹的实时运动补偿。进行算法测试算法的方法,均进行硅和幻影实验。在三部曲的Varian LinaC和六氧辐射可编程运动平台上进行幻影实验。使用肺癌和前列腺癌病例的高低调制VMAT计划以及八个患者测量的器官特异性轨迹。对于MLC叶拟合算法,该计划与其相应的患者轨迹运行。为了比较算法,平均曝光误差,即理想和拟合的MLC叶片之间的形状差异,计算了每个实验的计划复杂性和系统等待时间。结果在硅和幻像实验中对曝光误差的比较显示了两种算法之间的微小差异。低/高计划复杂性的硅实验的平均曝光误差分别为0.66 /0.88Ωcm2,分别用于分段优化0.66 /0.88Ωcm2。具有低/高计划复杂性的幻影实验的平均曝光误差分别为0.73 /1.02Ωcm2,分别为分段优化0.73 /1.02Ωcm2。直接优化的测量延迟为226?±10?MS和分段算法为228?±10?MS。在针对每个治疗计划量化的硅和幻像曝光误差中,表明,从高计划复杂度(0.96Ωcm2的平均值,2.88Ωcm2 95%)的暴露误差均与低规划复杂度显着不同(0.70?cm 2平均值,2.18?cm 2 95%百分位数(p≤x≤0.001,双尾,Mann-whitney统计测试)。结论两种叶片拟合算法之间的比较显示出暴露误差没有显着差异,既不是硅藻也没有幻影实验。本研究表明,计划复杂性对整体曝光误差产生显着影响超过算法之间的差异。

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