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首页> 外文期刊>Medical Physics >Methods for improving limited field-of-view radiotherapy reconstructions using imperfect a priori images.
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Methods for improving limited field-of-view radiotherapy reconstructions using imperfect a priori images.

机译:使用不完善的先验图像改善有限视野放疗重建的方法。

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摘要

There are many benefits to having an online CT imaging system for radiotherapy, as it helps identify changes in the patient's position and anatomy between the time of planning and treatment. However, many current online CT systems suffer from a limited field-of-view (LFOV) in that collected data do not encompass the patient's complete cross section. Reconstruction of these data sets can quantitatively distort the image values and introduce artifacts. This work explores the use of planning CT data as a priori information for improving these reconstructions. Methods are presented to incorporate this data by aligning the LFOV with the planning images and then merging the data sets in sinogram space. One alignment option is explicit fusion, producing fusion-aligned reprojection (FAR) images. For cases where explicit fusion is not viable, FAR can be implemented using the implicit fusion of normal setup error, referred to as normal-error-aligned reprojection (NEAR). These methods are evaluated for multiday patient images showing both internal and skin-surface anatomical variation. The iterative use of NEAR and FAR is also investigated, as are applications of NEAR and FAR to dose calculations and the compensation of LFOV online MVCT images with kVCT planning images. Results indicate that NEAR and FAR can utilize planning CT data as imperfect a priori information to reduce artifacts and quantitatively improve images. These benefits can also increase the accuracy of dose calculations and be used for augmenting CT images (e.g., MVCT) acquired at different energies than the planning CT.
机译:拥有用于放射治疗的在线CT成像系统有很多好处,因为它有助于识别计划和治疗之间的患者位置和解剖结构的变化。但是,当前许多在线CT系统的视野有限(LFOV),因为所收集的数据并未涵盖患者的完整横截面。这些数据集的重建会在数量上扭曲图像值并引入伪影。这项工作探索了如何使用计划CT数据作为先验信息来改善这些重建。通过将LFOV与计划图像对齐,然后将数据集合并到正弦图空间中,提出了合并这些数据的方法。一种对齐选项是显式融合,可生成融合对齐的重投影(FAR)图像。对于显式融合不可行的情况,可以使用正常设置错误的隐式融合(称为正常错误对齐重投影(NEAR))来实现FAR。对这些方法进行了评估,以获取显示内部和皮肤表面解剖变化的多日患者图像。还研究了NEAR和FAR的迭代使用,以及NEAR和FAR在剂量计算以及用kVCT规划图像补偿LFOV在线MVCT图像中的应用。结果表明,NEAR和FAR可以利用计划的CT数据作为不完善的先验信息来减少伪像并定量改善图像。这些益处还可以提高剂量计算的准确性,并且可以用于增强以与计划的CT不同的能量获取的CT图像(例如MVCT)。

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