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The Role of Regularization in Deformable Image Registration for Head and Neck Adaptive Radiotherapy

机译:正则化在头颈自适应放疗的可变形图像配准中的作用

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Deformable image registration provides a robust mathematical framework to quantify morphological changes that occur along the course of external beam radiotherapy treatments. As clinical reliability of deformable image registration is not always guaranteed, algorithm regularization is commonly introduced to prevent sharp discontinuities in the quantified deformation and achieve anatomically consistent results. In this work we analyzed the influence of regularization on two different registration methods, i.e. B-Splines and Log Domain Diffeomorphic Demons, implemented in an open-source platform. We retrospectively analyzed the simulation computed tomography (CTsim) and the corresponding re-planning computed tomography (CTrepl) scans in 30 head and neck cancer patients. First, we investigated the influence of regularization levels on hounsfield units (HU) information in 10 test patients for each considered method. Then, we compared the registration results of the open-source implementation at selected best performing regularization levels with a clinical commercial software on the remaining 20 patients in terms of mean volume overlap, surface and center of mass distances between manual outlines and propagated structures. The regularized B-Splines method was not statistically different from the commercial software. The tuning of the regularization parameters allowed open-source algorithms to achieve better results in deformable image registration for head and neck patients, with the additional benefit of a framework where regularization can be tuned on a patient specific basis.
机译:可变形的图像配准提供了一个强大的数学框架,可以量化在外部束放射治疗过程中发生的形态变化。由于不能始终保证可变形图像配准的临床可靠性,因此通常引入算法正则化以防止量化变形中出现明显的不连续性并获得解剖学上一致的结果。在这项工作中,我们分析了正则化对在开源平台上实现的两种不同注册方法(即B样条和对数域二形恶魔)的影响。我们回顾性分析了30例头颈癌患者的模拟计算机断层扫描(CTsim)和相应的重新计划计算机断层扫描(CTrepl)扫描。首先,对于每种考虑的方法,我们调查了正则化水平对10位测试患者的hounsfield单位(HU)信息的影响。然后,我们在其余20名患者的平均轮廓线重叠,表面轮廓和质构中心之间的质量距离和传播结构之间,比较了在选定的最佳执行正则化水平下的开放源代码实现注册结果与其余20位患者上的临床商业软件。正则化B样条曲线方法与商业软件在统计学上没有差异。正则化参数的调整允许开放源代码算法在针对头颈部患者的可变形图像配准中获得更好的结果,同时还具有可根据患者具体情况调整正则化的框架的其他好处。

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