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Deformable Image Registration with a Featurelet Algorithm -Implementation as a 3D-Slicer Extension and Validation

机译:具有Featurelet算法的可变形图像配准-作为3D-Slicer扩展和验证的实施

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A radiotherapy (RT) treatment can last for several weeks. In that time organ motion and shape changes introduce uncertainty in dose application. Monitoring and quantifying the change can yield a more precise irradiation margin definition and thereby reduce dose delivery to healthy tissue and adjust tumor targeting. Deformable image registration (DIR) has the potential to fulfill this task by calculating a deformation field (DF) between a planning CT and a repeated CT of the altered anatomy. Application of the DF on the original contours yields new contours that can be used for an adapted treatment plan. DIR is a challenging method and therefore needs careful user interaction. Without a proper graphical user interface (GUI) a misregistration cannot be easily detected by visual inspection and the results cannot be fine-tuned by changing registration parameters. To provide a DIR algorithm with such a GUI available for everyone, we created the extension Featurelet-Registration for the open source software platform 3D Slicer. The registration logic is an upgrade of an in-house-developed DIR method, which is a featurelet-based piecewise rigid registration. The so called ,,featurelets" are equally sized rectangular subvolumes of the moving image which are rigidly registered to rectangular search regions on the fixed image. The output is a deformed image and a deformation field. Both can be visualized directly in 3D Slicer facilitating the interpretation and quantification of the results. For validation of the registration accuracy two deformable phantoms were used. The performance was benchmarked against a demons algorithm with comparable results.
机译:放射疗法(RT)可以持续数周。在那个时候,器官的运动和形状的改变在剂量应用中引入了不确定性。监视和量化变化可以产生更精确的辐照裕度定义,从而减少向健康组织的剂量输送并调整肿瘤靶向。可变形图像配准(DIR)有潜力通过计算计划CT和已更改解剖结构的CT之间的变形场(DF)来完成此任务。 DF在原始轮廓上的应用会产生新的轮廓,可用于调整后的治疗计划。 DIR是一种具有挑战性的方法,因此需要仔细的用户交互。如果没有适当的图形用户界面(GUI),则无法通过视觉检查轻松地检测到配准错误,并且无法通过更改配准参数来对结果进行微调。为了向所有人提供这种具有GUI的DIR算法,我们为开源软件平台3D Slicer创建了Featurelet-Registration扩展。配准逻辑是内部开发的DIR方法的升级,该方法是基于功能集的分段刚性配准。所谓的“特征集”是相等大小的运动图像矩形子体积,它们固定地记录在固定图像的矩形搜索区域中。输出是变形图像和变形场。两者都可以直接在3D Slicer中可视化,以方便结果的解释和量化为了验证配准的准确性,使用了两个可变形体模,并以具有可比结果的恶魔算法为基准对性能进行了基准测试。

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