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A block matehing-based registration algorithm for localization of locally advanced lung tumors

机译:基于块矩阵的配准算法来定位局部晚期肺肿瘤

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Purpose: To implement and evaluate a block matching-based registration (BMR) algorithm for locally advanced lung tumor localization during image-guided radiotherapy. Methods: Small (1 cm3), nonoverlapping image subvolumes ("blocks") were automatically identified on the planning image to cover the tumor surface using a measure of the local intensity gradient. Blocks were independently and automatically registered to the on-treatment image using a rigid transform. To improve speed and robustness, registrations were performed iteratively from coarse to fine image resolution. At each resolution, all block displacements having a near-maximum similarity score were stored. From this list, a single displacement vector for each block was iteratively selected which maximized the consistency of displacement vectors across immediately neighboring blocks. These selected displacements were regularized using a median filter before proceeding to registrations at finer image resolutions. After evaluating all image resolutions, the global rigid transform of the on-treatment image was computed using a Procrustes analysis, providing the couch shift for patient setup correction. This algorithm was evaluated for 18 locally advanced lung cancer patients, each with 4-7 weekly on-treatment computed tomography scans having physician-delineated gross tumor volumes. Volume overlap (VO) and border displacement errors (BDE) were calculated relative to the nominal physician-identified targets to establish residual error after registration. Results: Implementation of multiresolution registration improved block matching accuracy by 39% compared to registration using only the full resolution images. By also considering multiple potential displacements per block, initial errors were reduced by 65%. Using the final implementation of the BMR algorithm, VO was significantly improved from 77% ± 21% (range: 0%-100%) in the initial bony alignment to 91% ± 8% (range: 56%-100%; p < 0.001). Left-right, anterior-posterior, and superior-inferior systematic BDE were 3.2, 2.4, and 4.4 mm, respectively, with random BDE of 2.4, 2.1, and 2.7 mm. Margins required to include both localization and delineation uncertainties ranged from 5.0 to 11.7 mm, an average of 40% less than required for bony alignment. Conclusions: BMR is a promising approach for automatic lung tumor localization. Further evaluation is warranted to assess the accuracy and robustness of BMR against other potential localization strategies.
机译:目的:实施和评估基于块匹配的配准(BMR)算法,用于在图像引导的放射治疗期间局部晚期肺肿瘤定位。方法:使用局部强度梯度的测量方法,在计划图像上自动识别小的(1 cm3)非重叠图像子体积(“块”)以覆盖肿瘤表面。使用刚性变换将块独立并自动配准到治疗中图像。为了提高速度和鲁棒性,从粗到细的图像分辨率反复进行配准。在每种分辨率下,所有具有接近最大相似度得分的块位移均被存储。从该列表中,迭代地选择每个块的单个位移矢量,该位移矢量最大化了在紧邻的块之间的位移矢量的一致性。使用中值滤波器对这些选定的位移进行正则化,然后再以更高的图像分辨率进行配准。在评估了所有图像分辨率之后,使用Procrustes分析计算了治疗中图像的整体刚性变换,从而为患者设置校正提供了卧榻移位。对18位局部晚期肺癌患者进行了该算法的评估,每位患者每周进行4-7次治疗时计算机断层扫描,检查结果均由医生确定。相对于名义医师确定的标靶计算体积重叠(VO)和边界位移误差(BDE),以在注册后确定残留误差。结果:与仅使用全分辨率图像进行配准相比,多分辨率配准的实现将块匹配精度提高了39%。通过考虑每个块的多个潜在位移,初始误差减少了65%。使用BMR算法的最终实现,VO值从初始骨对齐中的77%±21%(范围:0%-100%)显着提高到91%±8%(范围:56%-100%; p < 0.001)。左右,系统前后BDE分别为3.2、2.4和4.4 mm,随机BDE为2.4、2.1和2.7 mm。包含定位和轮廓不确定性的边距范围为5.0到11.7 mm,比骨对齐所需的平均距离低40%。结论:BMR是一种自动定位肺肿瘤的有前途的方法。有必要进行进一步评估,以评估BMR与其他潜在定位策略的准确性和鲁棒性。

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