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Linear regression analysis of 2D projection image data of 6 degrees-of-freedom transformed 3D image sets for stereotactic radiation therapy

机译:用于立体定向放射治疗的6自由度变换3D图像集的2D投影图像数据的线性回归分析

摘要

Patient positioning is crucial to accurate dose delivery during radiation therapy to ensure the proper localization of dose to the target tumor volume. In patient positioning for stereotactic radiation therapy treatment, classical image registration methods are computationally costly and imprecise. We developed an automatic, fast, and robust 2D-3D registration method to improve accuracy and speed of identifying 6 degrees-of-freedom (DoF) transformations during patient positioning for stereotactic radiotherapy by creating a model of characteristic shape distributions to determine the linear relationship between two real-time orthogonal 2D projection images and the 3D volume image. We defined a preprocessed sparse base set of shape distributions that characterize 2D digitally reconstructed radiograph (DRR) images from a range of independent transformations of the volume. The algorithm calculates the 6-DoF transformation of the patient based upon two orthogonal real-time 2D images by correlating the images against the base set The algorithm has positioning accuracy to at least 1 pixel, equivalent to 0.5098 mm accuracy given this image resolution. The shape distribution of each 2D image is created in MATLAB in an average of 0.017 s. The online algorithm allows for rapid and accurate position matching of the images, providing the transformation needed to align the patient on average in 0.5276 s. The shape distribution algorithm affords speed, robustness, and accuracy of patient positioning during stereotactic radiotherapy treatment for small-order 6-DoF transformations as compared with existing techniques for the quantification of patient setup where both linear and rotational deviations occur. This algorithm also indicates the potential for rapid, high precision patient positioning from the interpolation and extrapolation of the linear relationships based upon shape distributions. Key words: shape distribution, image registration, patient positioning, radiation therapy
机译:患者定位对于放射治疗期间准确的剂量输送至关重要,以确保剂量正确定位到目标肿瘤体积。在用于立体定向放射疗法治疗的患者定位中,传统的图像配准方法在计算上昂贵且不精确。我们开发了一种自动,快速且强大的2D-3D配准方法,通过创建特征形状分布模型来确定线性关系,从而提高了立体定位放疗患者定位过程中识别6个自由度(DoF)转换的准确性和速度。在两个实时正交2D投影图像和3D体积图像之间切换。我们定义了经过预处理的形状分布的稀疏基础集,这些特征可以根据体积的独立变换范围来表征2D数字重建射线照相(DRR)图像。该算法通过将两个图像与基本集相关联,基于两个正交的实时2D图像来计算患者的6自由度变换。该算法的定位精度至少为1像素,在此图像分辨率下,其定位精度为0.5098 mm。在MATLAB中平均以0.017 s的速度创建每个2D图像的形状分布。在线算法可实现图像的快速准确的位置匹配,从而提供平均在0.5276 s内对齐患者所需的变换。与用于量化发生线性和旋转偏差的现有患者量化技术相比,形状分布算法可在立体定向放射治疗期间针对小量6自由度变换提供速度,鲁棒性和准确的患者定位。该算法还根据基于形状分布的线性关系的内插和外推来指示快速,高精度的患者定位的潜力。关键词:形状分布,图像配准,患者定位,放射治疗

著录项

  • 作者

    Lin Christie;

  • 作者单位
  • 年度 2012
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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