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Knowledge-Based Radiation Therapy Database Optimization on Head and Neck Cancer.

机译:基于知识的头颈癌放射治疗数据库优化。

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摘要

Intensity modulated radiation therapy (IMRT) is commonly used to treat head and neck cancer but relies on the experience and skill of the treatment planner. Previous knowledge based radiation therapy (KBRT) used a database of 105 patient cases from Duke University Medical Center to derive the constraints and fluence map to be used as input into Eclipse. Because IMRT relies heavily on the treatment planner, a re-optimized database was created to further improve the current database and its results.;Each of the 105 patient cases was re-optimized to further lower the dose to organs at risk while keeping the planning target volume (PTV) homogeneity. Out of 105 patients, 41 had noticeable improvements and 64 had minimal or no difference. The previous versions of KBRT were used to find the matching patient based on geometry and to derive constraints that would be inputted into Eclipse for optimization. Two methods of KBRT were tested. The first method used a dose warping algorithm to compute constraints and the second method used constraints from the matching patient.;The results from the old database and re-optimized database that used the dose warping algorithm produced dose volume histograms with little to no differences. The results using constraints from matching patient showed improvements in ipsilateral parotid, larynx, oral cavity, and brainstem after re-optimization. Comparing method one and method two, there were no significant benefits of re-optimizing as the dose warping algorithm was able to produce similar results. The dose warping algorithm was significantly worse for contralateral parotid but significantly better for brainstem.
机译:调强放射疗法(IMRT)通常用于治疗头颈癌,但要依靠治疗计划者的经验和技能。以前基于知识的放射疗法(KBRT)使用杜克大学医学中心的105个患者病例数据库来导出约束条件和注量图,以用作Eclipse的输入。由于IMRT严重依赖治疗计划者,因此创建了一个重新优化的数据库以进一步改善当前数据库及其结果。; 105个患者病例中的每个病例都进行了优化,以进一步降低风险器官的剂量,同时保持规划目标体积(PTV)均匀性。在105例患者中,有41例有明显改善,而64例几乎没有差异。 KBRT的早期版本用于根据几何查找匹配的患者,并导出将输入到Eclipse中进行优化的约束。测试了KBRT的两种方法。第一种方法使用剂量扭曲算法来计算约束条件,第二种方法使用匹配患者的约束条件。;使用剂量扭曲算法的旧数据库和重新优化的数据库的结果产生的剂量体积直方图几乎没有差异。使用匹配患者的约束条件的结果显示,重新优化后,同侧腮腺,喉,口腔和脑干得到了改善。比较方法一和方法二,重新优化没有明显的好处,因为剂量扭曲算法能够产生相似的结果。对于对侧腮腺,剂量扭曲算法明显较差,但对脑干而言明显更好。

著录项

  • 作者

    Lee, Gen Joo.;

  • 作者单位

    Duke University.;

  • 授予单位 Duke University.;
  • 学科 Medical imaging.
  • 学位 M.S.
  • 年度 2015
  • 页码 51 p.
  • 总页数 51
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:52:26

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